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A Project Report
on
“EXPERIMENTAL STUDY ON EFFECT OF PROCESS
PARAMETERS ON PERFORMANCE MEASURE OF EDM”
submitted to
Gujarat Technological University
for Partial Fulfillment Towards the
Subject : PROJECT-II (181901), Semester VIIIth
in the Field of
“MECHANICAL ENGINEERING”
Submitted by
PATEL PAVANKUMAR I. (080170119037)
PARMAR KAUSHIK C. (080170119027)
PATEL DARSHIL D. (090173119005)
MODI TARUN D. (090173119002)
Under the Guidance of
Prof. S.R. Pandya
Asst. Professor,
Department of Mechanical Engineering
Vishwakarma Government Engineering College , Chandkheda
Department of Mechanical Engineering
Vishwakarma Government Engineering College,
Chandkheda – 382424
APRIL/MAY 2012
Certificate
This is to certify that the project report entitled “EXPERIMENTAL STUDY ON
EFFECT OF PROCESS PARAMETERS ON PERFORMANCE MEASURE OF
EDM”
submitted by
PATEL PAVANKUMAR I. (080170119037)
PARMAR KAUSHIK C. (080170119027)
PATEL DARSHIL D. (090173119005)
MODI TARUN D. (090173119002)
towards the partial fulfillment of the requirement for the subject PROJECT-I (Subject
Code: 181901) (Semester VIIIth
) in the field of “MECHANICAL ENGINEERING”
of Gujarat Technological University is a record of the bona-fide work carried out by
him/her under my guidance and supervision. The work submitted, in my opinion, has
reached to a level required for being accepted for the examination.
.
Guide:
Prof. S.R.Pandya
Asst. Professor,
Department of Mechanical Engg.
Vishwakarma Government Engg.College ,
Chandkheda
Prof. Rupal. P Vyasa
Head of Department
Department of Mechanical Engg.
Vishwakarma Government Engg. College ,
Chandkheda
Certificate of Examiner
The Project Report entitled
“EXPERIMENTAL STUDY ON EFFECT OF PROCESS
PARAMETERS ON PERFORMANCE MEASURE OF EDM”
Submitted By
PATEL PAVANKUMAR I. (080170119037)
PARMAR KAUSHIK C. (080170119027)
PATEL DARSHIL D. (090173119005)
MODI TARUN D. (090173119002)
As a partial fulfillment of the requirement
for the
Subject : PROJECT-I (181901)
Semester-VIIIth
of Gujarat Technological University in the field of
“MECHANICAL ENGINEERING”
is hereby approved.
Internal Examiner External Examiner
Date :
Place :
ACKNOWLEDGEMENT
I express my cavernous sense of obligation and gratitude to my guide Prof. S R
PANDYA for her genuine guidance and constant encouragement throughout this project
work. I am highly obliged as my honourable guide have devoted her valuable time and
shared his expertise knowledge.
I extend my sincere thanks to HOD, Department of Mechanical Engineering and
Principal, Vishwakarma Government Engineering College, Chandkheda for providing me
such an opportunity to do my project work in my college.
I also wish to express my heartfelt appreciation to my friends, colleagues and
many who have rendered their support for the successful completion of the project, both
explicitly and implicitly.
PATEL PAVANKUMAR I. (080170119037)
PARMAR KAUSHIK C. (080170119027)
PATEL DARSHIL D. (090173119005)
MODI TARUN D. (090173119002)
8th
/Mechanical
Date:
Place:
ABSTRACT
Electron discharge machining is one of the earliest non-traditional machining
processes. EDM process is based on thermoelectric energy between the work piece and
an electrode. Material removal rate (MRR) is an important performance measure in EDM
process Low MRR is the disadvantage in EDM therefore no. Of ways are explored to
improve and optimize MRR.
This project works on mainly concentrated on improving the MRR by controlling
the various process parameters. For that a experiment is to be carried out on EDM
machine and result to be analyzed. The effect of various input parameters on output
responses have been analyzed using Analysis of Variance (ANOVA). Main effect plot
and S/N ratio have been used to determine the optimal design for each output response.
NOMENCLATURE
Vo Open Circuit Voltage
Vw The Working Voltage
Io The Maximum Current
W
t
Ton
Weight
Operation Time
The Pulse Time On
Toff
ρ
The Pulse Time Off
Density
LIST OF FIGURES
1.1 Relaxation Circuit 4
1.2 Variation Of Capacitor Voltage With Time 4
1.3
1.4
1.5
Pulse Wave Form Of Controlled Pulse Generator
Mechanism Of Material Removal
Schematic Diagram
5
6
7
1.6 Normal Polarity & Reverse Polarity 8
3.1
5.1
5.2
5.3
5.4
5.5
5.6
5.7
5.8
P- Diagram For Static Problem
Sparkonix S25 Series
EDM Work Table
Tool (EN31) After Machining
Tool (D2) After Machining
Tool (MS) After Machining
Tool (EN31) After Machining
Tool (D2) After Machining
Tool (MS) After Machining
21
34
35
39
40
40
41
41
42
LIST OF TABLES
4.1 L27 Result Table For Pilot Experiment
4.2 Response Table For SN Ratio
5.1 Factors & Their Levels
5.2 L27 Orthogonal Array
5.3 Constant Input Parameters
5.4 Response Characteristics
5.5 Work-piece Material Composition
5.6 Electrode Material Composition
6.1 Result Table For Finale Experiment
6.2 Response Table For SN Ratio
6.3 Analysis Of Variance
6.4 Confirmation Test Reading
7.1 Optimum Condition
26
28
31
32
34
36
38
39
43
45
46
48
49
LIST OF GRAPHS
4.1
6.1
6.2
Main Effect Plot For SN Ratio
Main Effect Plot For Means
Main Effect Plot For SN ratio
28
46
47
INDEX
Acknowledgment i
Abstract ii
Nomenclature iii
List of Tables iv
List of Figures v
List of Graphs vi
1. INTRODUCTION 1-13
1.1 Introduction to Non-Traditional Processes 1
1.2 Electric Discharge Machine 2
1.3 History Of EDM 2
1.4 Working Principle Of EDM 3
1.5 Mechanism Of Material Removal 5
1.6 Sinker EDM 7
1.7 EDM process Parameters 8
1.7.1 Polarity 8
1.7.2 Pulse On Time 9
1.7.3 Pulse Off Time 9
1.7.4 Peak Current 10
1.7.5 Discharge Current 10
1.7.6 Pulse Wave Form 10
1.7.7 Type Of Die-Electric Medium 11
1.7.8 Type Of Flushing 11
1.7.9 Electrode Gap 13
1.7.10 Electrode Material 13
2. LITRATURE REVIEW 14-16
2.1 Introduction 14
3. EXPERIMENTAL METHODOLOGY 17-25
3.1 Taguchi Method 17
3.2Taguchi Philosophy 18
3.3 Experimental Design Strategy 19
3.4 Taguchi Method Categories 20
3.4.1 Static Problems 20
3.4.1.1 Signal to Noise Ratio 21
3.5 Taguchi Design Steps 23
3.6 Data Analysis 24
3.7 Advantages & Disadvantages Of Taguchi 24
4. PILOT EXPERIMENT 26-28
4.1 Pilot Experimentation 26
4.2 L27 Orthogonal Array Along With Results For EDM
Process During Pilot Experimentation 26
5. EXPERIMENTAL DESIGN 29-42
5.1Introduction 29
5.2 Procedure Of Experimental Design 29
5.3Establishment Of Objective Function 30
5.4 Degree Of Freedom 30
5.5 Selection Of Factors 30
5.6 Orthogonal Array 31
5.7 Experimental Set-up 33
5.8 Analysis Of Result 35
5.9 Material Composition For Tool & Tool 38
6. RESULT & ANALYSIS OF MRR 43-48
6.1 Introduction 43
6.2 Results For MRR 43
6.3 Results Of SN Ratio For MRR 44
6.4 Result Of ANOVA For MRR 47
7. RESULT, CONCLUSION & RECOMMENDATION 49-50
7.1Optimal Design For MRR 49
7.2 Recommendation For Future Work 49
 APPENDIX- A 51
 APPENDIX- B 52
 APPENDIX- C 53
 REFEERENCESS 54-55
CHAPTER 1
INTRODUCTION
1.1 Introduction To Non-Traditional Processes
Technologically advanced industries like aeronautics, automobiles, nuclear
reactors, missiles, turbines etc. requires materials like high strength temperature resistant
alloys which have higher strength, corrosion resistance, toughness, and other diverse
properties.
With rapid development in the field of materials it has become essential to develop
cutting tool materials and processes which can safely and conveniently machine such new
materials for sustained productivity, high accuracy and versatility at automation.
Consequently, non-traditional techniques of machining are providing effective solutions
to the problem imposed by the increasing demand for high strength temperature resistant
alloys, the requirement of parts with intricate and compacted shapes and materials so hard
as to defy machining by conventional methods. The processes are non-conventional in
the sense that these don‟t employ a conventional tool for the material removal. Instead
these utilize energy in direct form to remove the materials from work-piece. The range of
applications of newly developed machining process is determined by work-piece
properties like electrical and thermal conductivity, melting temperature, electrochemical
equivalent etc. These techniques can be classified into three categories, i.e. mechanical,
electro-thermal, and electrochemical machining processes. The mechanical
nonconventional techniques (abrasive jet machining, ultrasonic machining, and water jet
machining) utilizes kinetic energy of either abrasive particles or a water jet to remove the
material. In electro-thermal method (plasma arc machining, laser beam machining, and
electron beam machining) the energy is supplied in form of heat, light, and electron
bombardment which results melting, or vaporization and melting both of work material.
In the chemical machining, etching process is being done. On the other hand, in
electrochemical machining an anodic dissolution process is going on in which high
material removal rate can be achieved. The selection of a process is depend upon various
factors like- process capabilities, physical parameters, shape to be machined, properties
of work-piece material to be cut, and economics of process.
1.2 Electric Discharge Machine
Electrical discharge machining (EDM) is one of the most extensively used
nonconventional material removal processes. In this process the material is removed by a
succession of electrical discharges, which occur between the electrode and the work-
piece. There is no direct contact between the electrode tool and the work-piece. These are
submersed in a dielectric liquid such as kerosene or deionized water. Its unique feature of
using thermal energy to machine electrically conductive parts regardless of hardness has
been its distinctive advantage. The electrical discharge machining process is widely used
in the aerospace, automobile, die manufacturing and moulds industries to machine hard
metals and its alloy.
1.3 History Of Electric Discharge Machining
In dates back to 1770, English chemist Joseph Priestly discovered the erosive
effect of electrical discharges on metal. After a long time, in 1943 at the Moscow
University where B.R. and N.I. Lazarenko decided to exploit the destructive effect of
electrical discharges for constructive use. They developed a controlled process of
machining to machine metals by vaporizing material from the surface of work-piece.
Since then, EDM technology has developed rapidly and become indispensable in
manufacturing applications such as die and mould making, micro-machining,
prototyping, etc. In 1950s
The RC (resistance–capacitance) relaxation circuit was introduced, in which provided the
first consistent dependable control of pulse times and also a simple servo control circuit
to automatically find and hold a given gap between the electrode (tool) and the work-
piece. In the 1980s, CNC EDM was introduced which improved the efficiency of the
machining operation.
1.4 Working Principle Of EDM
The basic principle in EDM is the conversion of electrical energy into thermal
energy through a series of discrete electrical discharges occurring between the electrode
and work piece immersed in the dielectric fluid. The insulating effect of the dielectric is
important in avoiding electrolysis of the electrodes during the EDM process. A spark is
produced is at the point of smallest inter-electrode gap by a high voltage, overcoming the
strength dielectric breakdown strength of the small gap between the cathode and anode at
a temperature in the range of 8000 to 12,000 °C. Erosion of metal from both electrodes
takes place there. Duration of each spark is very short. The entire cycle time is usually
few micro-seconds (μs).The frequency of pulsating direct current supply is about 20,000–
30,000 Hz is turned off. There is a sudden reduction in the temperature which allows the
circulating dielectric fluid to flush the molten material from the work-piece in the form of
microscopic debris. After each discharge, the capacitor is recharged from DC source
through a resistor, and the spark that follows is transferred to the next narrowest gap.
The cumulative effect of a succession of sparks spread over the entire Work-piece surface
leads to erosion, or machining to a shape, which is approximately complementary to that
of the tool.
A servo system, which compares the gap voltage with a reference value, is employed to
ensure that the electrode moves at a proper rate to maintain the right spark gap, and to
retract the electrode if short-circuiting occurs. The Lazarenko RC circuit does not give
good material removal rate (MRR), and higher MRR is possible only by sacrificing
surface finish. As indicated in Figure 1.1, the increase in voltage of capacitor should be
larger than the breakdown voltage and hence great enough to create a spark between
electrode and Work-piece, at region of least electrical resistance, which usually occurs at
the smallest inter electrode gap.
Figure 1.1: Relaxation circuit
A servo system, which compares the gap voltage with a reference value, is
employed to ensure that the electrode moves at a proper rate to maintain the right spark
gap, and to retract the electrode if short-circuiting occurs. The Lazarenko RC circuit does
not give good material removal rate (MRR), and higher MRR is possible only by
sacrificing surface finish. As indicated in Figure 1.2, the increase in voltage of capacitor
should be larger than the breakdown voltage and hence great enough to create a spark
between electrode and work-piece, at region of least electrical resistance, which usually
occurs at the smallest inter electrode gap.
Figure 1.2: Variation of capacitor voltage with time
This has been achieved with advent controlled pulse generator. It is typical wave
forms are shown in Figure 1.3. In this, as comparison to RC circuit there is increase in
pulse duration and less peak current value, shortened idle period.
Figure 1.3: Pulse waveform of controlled pulse generator
1.5 Mechanism Of Material Removal
The electro sparking method of metal working involves an electric erosion effect
in which the breakdown of electrode material is done by electric discharge. The discharge
is created by the ionization of dielectric which is spilled up of its molecules into ions and
electrons. This discharge is created between two electrodes through a gaseous or liquid
medium with the application of suitable voltage across the electrodes. The potential
intensity of electric field between them is built up at some predetermined value individual
electrons will break loose from the surface of the anode under the influence of the field
force. While moving in the inter-electrode space, the electrons collide with the neutral
molecules of the dielectric, detaching electrons from them and causing ionization.
At some time or other the ionization becomes such that a narrow channel of continuous
conductivity is formed. When this happens there is a continuous flow of electrons along
the channel to the electrode, resulting in the momentary current impulse or discharge.
The liberation of energy accompanying the discharge leads to generation of high
temperature.
This high temperature plasma causes fusion or particle vaporization of metal and the
dielectric fluid at the point of discharge. This leads to the formation of tiny crater at the
point of discharge in the work-piece. Comparatively less metal is eroded from the tool as
compared to the work-piece due to following reasons:
a) The momentum with which positive ions strike the cathode surface is much less
than the momentum with which the electron stream impinges on the anode
surface.
b) A compressive force is generated on the cathode surface by spark which helps
reduce tool wear.
The particles removed from the electrodes due to discharge fall in liquid, cool down and
contaminate the area around the electrodes by forming colloidal suspension of metal.
These suspensions, along with the products of decomposition of liquid dielectric are
drawn into the space between the electrodes during the initial part of discharge process
and are distributed along the electric lines of force, thus forming current carrying
„bridges‟. The discharge then occurs along one of these brides as result of ionization.
Figure 1.4: Mechanism of material removal
1.6 Sinker EDM
Sinker EDM sometimes is also referred to as cavity type EDM or volume EDM. It
consists of an electrode and work-piece that are submerged in an insulating liquid such as
oil or dielectric fluid. In it, hydrocarbon dielectrics are normally used because surface
roughness is better and tool electrode wear is lower compared to de-ionized water.
The electrode and work-piece are connected to a suitable power supply. The power
supply generates an electrical potential between the two parts. As the electrode
approaches the work-piece, dielectric breakdown occurs in the fluid forming an
ionization channel, and a small spark is generated. The resulting heat and cavitations
vaporize the work material, and to some extent, the electrode. These sparks strike one at a
time in huge numbers at seemingly random locations between the electrode and the work-
piece. As the base metal is eroded, the spark gap increases. Thus electrode is lowered
automatically by the machine so that the process can continue uninterrupted. Several
hundred thousand sparks occur per second in this process, with the actual duty cycle
being carefully controlled by the setup parameters. These controlling cycles are
sometimes known as "on time" and "off time"
Figure 1.5: Schematic diagram of the Sinker EDM
The on time setting determines the length or duration of the spark. Hence, a longer on
time produces a deeper cavity for that spark and all subsequent sparks for that cycle
creating a rougher finish on the work-piece. The reverse is true for a shorter on time. Off
time is the period of time that one spark is replaced by another. A longer off time, allows
the flushing of dielectric fluid through a nozzle to clean out the eroded debris, thereby
avoiding a short circuit. These settings are maintained in micro seconds.
The work-piece can be formed, either by replication of a shaped tool electrode. The
numerical control monitors the gap conditions (voltage and current) and synchronously
controls the different axes and the pulse generator. The dielectric liquid is filtrated to
remove debris particles and decomposition products.
1.7 EDM Process Parameters
1.7.1 Polarity
The Polarity normally used is normal polarity in which the tool is negative and
work-piece is positive. Sometimes positive polarity can be used depending upon the
requirement, where tool is positive and work-piece is negative. The negative polarity of
the work-piece has an inferior surface roughness than that under positive polarity in
EDM.
Figure1.6: Normal Polarity and Reverse Polarity
As the electron processes has smaller mass than anions show quicker reaction, the
anode material is worn out predominantly. This effect causes minimum wear to the tool
electrodes and becomes of importance under finishing operations with shorter on-times.
However, while running longer discharges, the early electron process predominance
changes to positron process (proportion of ion flow increases with pulse duration),
resulting in high tool wear.
In general, polarity is determined by experiments and is a matter of tool material, work
material, current density and pulse length combinations
.
1.7.2 Pulse on time
Pulse on-time is the time period during which machining takes place. MRR is
directly proportional to amount of energy applied during pulse on-time. The energy of
spark is controlled by the peak amperage and the length of the on-time. The longer the
on-time pulse is sustained, the more work-piece material will be eroded. The resulting
crater will be broader and deeper than a crater produced by a shorter on-time. These large
craters will create a rougher surface finish. Extended on times gives more heat to work-
piece, which means the recast layer will be larger and the heat affected zone will be
deeper. Hence, excessive on-times can be counter-productive. When the optimum on-
time for each electrode-work material combination is exceeded, material removal rate
starts to decrease.
.
1.7.3 Pulse off time
Pulse off-time is the time during which re-ionization of dielectric takes place. The
discharge between the electrodes leads to ionization of the spark gap. Before another
spark can take place, the medium must de-ionize and regain its dielectric strength. This
takes some finite time and power must be switched off during this time. Too low values
of pulse off time may lead to short-circuits and arcing. A large value on other hand
increases the overall machining time since no machining can take place during the off-
time. Each cycle has an on-time and off-time that is expressed in units of microseconds.
1.7.4 Peak current
This is the amount of power used in discharge machining, measured in units of
amperage, and is the most important machining parameter in EDM. In each on-time
pulse, the current increases until it reaches a preset level, which is expressed as the peak
current. Higher value of peak current leads to rough surface finish operations and wider
craters on work materials. Its higher value improves MRR, but at the cost of surface
finish and tool wear.
Hence it is more important in EDM because the machined cavity is a replica of tool
electrode and excessive wear will hamper the accuracy of machining [8].
1.7.5 Discharge current
The discharge current (Id) is a measure of the power supplied to the discharge
gap. A higher current leads to a higher pulse energy and formation of deeper discharge
craters. This increases the material removal rate (MRR) and the surface roughness (Ra)
value. Similar effect on MRR and Ra is produced when the gap voltage (Vg) is increased.
Once the current starts to flow, voltage drops and stabilizes at the working gap level. The
preset voltage determines the width of the spark gap between the leading edge of the
electrode and work-piece. Higher voltage settings increase the gap, which improves the
flushing conditions and helps to stabilize the cut.
1.7.6 Pulse wave form
For higher surface finish, higher peak current values and short spark duration is
required, a controlled pulse generator is used in EDM to generate proper pulse wave
form. The pulses of high energy and low frequency are used in rough machining. The
pulse shape is normally rectangular, but generators with other pulse shapes have also
been developed.
Using a generator which can produce trapezoidal pulses succeeded in reducing
relative tool wear to very low values.
1.7 .7 Type of Dielectric medium
The fluids used as dielectric are generally hydrocarbon oils. The kerosene oil,
paraffin oil, lubricating oil can be used. The deionized water gives high MRR and TWR .
However, the use of deionized water may result in higher levels of material removal rate
in some special situations such as when a brass electrode at negative polarity is used ;
pulse durations smaller than 500 μs are employed and machining of Ti–6A1–4V with a
copper electrode . It has seen that machining a steel work-piece with a negative brass
electrode in deionized water and with pulse time ranging from 400 to 1500 μs resulted in
improved performance (higher material removal rate and lower electrode wear) when
compared to performing the same operation in a hydrocarbon oil. For a pulse time of 800
μs, material removal rate was approximately 60% higher and electrode wear 25% lower.
A good dielectric fluid should have following properties:
a) It should have dielectric strength (i.e. behave as insulator until the required
Breakdown voltage between the electrodes is attained).
b) It should take minimum possible time to breakdown, once the break down
voltage is attained.
c) It should able to deionized the gap immediately after the spark has occurred.
d) It should serve as an effective cooling medium.
e) It should have high degree of fluidity.
1.7.8 Type of flushing
It is basic requirement of dielectric that it should maintain its dielectric strength
(insulating properties) during its whole operation. There is no problem at the start of
EDM, but after discharge the debris are produced in the gap reduce the dielectric
strength, which cause unwanted discharges which can damage to both tool and work-
piece. Hence effective flushing is required to remove unwanted debris from the gap [3].
TWR and MRR are affected by the type of dielectric and the method of its flushing. In
EDM, flushing can be achieved by following methods:
1.7.8.1 Suction flushing
In this, dielectric may be sucked through either the work-piece or the electrode.
This technique is employed to avoid any tapering effect due to sparking between
machining debris and the side walls of the electrodes. Suction flushing through the tool
rather than through the work-piece is more effective.
1.7.8.2 Injection flushing
In this technique, dielectric is fed through either the work-piece or the tool which
are predrilled to accommodate the flow. With the injection method, tapering of
components arises due to the lateral discharge action occurring as a result of particles
being flushed up the sides of electrodes.
1.7.8.3 Side flushing
When the flushing holes cannot be drilled either in the work-piece or the tool, side
flushing is employed. If there is need of flushing of entire working area, special
precautions have to taken for the pumping of dielectric.
1.7.8.4 Flushing by dielectric pumping
This method has been found particularly suitable in deep hole drilling. Flushing is
obtained by using the electrode pulsation movement. When the electrode is raised, clean
dielectric is sucked into mix with contaminated fluid, and as the electrode is lowered the
particles are flushed out.
1.7.9 Electrode gap
The servo feed system is used to control the working gap at a proper width.
Mostly electro-mechanical (DC or stepper motors) and electro-hydraulic systems are
used, and are normally designed to respond to average gap voltage [8]. Larger gap widths
cause longer ignition delays, resulting in a higher average gap voltage. If the measured
average gap voltage is higher than the servo reference voltage preset by the operator, the
feed speed increases. On the contrary, the feed speed decreases or the electrode is
retracted when the average gap voltage is lower than the servo reference voltage, which is
the case for smaller gap widths resulting in a smaller ignition delay. Therefore short-
circuits caused by debris particles and humps of discharge craters can be avoided. Also
quick changes in the working surface area, when tool electrode shapes are complicated,
does not result in hazardous machining. In some cases, the average ignition delay time is
used in place of the average gap voltage to monitor the gap width.
1.7.10 Electrode material
The shape of electrode will be basically same as that of the product is desired. The
electrode materials are classified as metallic material (copper, brass, tungsten,
aluminium), non-metallic material (graphite), combined metallic and non-metallic
(copper-graphite), and metallic coating as insulators (copper on moulded plastic, copper
on ceramic) etc. Materials having high melting-point, good electrically conductivity, low
wear rate and easily machinability are usually chosen as tool materials for EDM. They
should be cheap and readily shaped by conventional methods. High density graphite is
used in pulsed EDM equipment, although the material does not perform satisfactorily in
RC EDM work. It gives low wear due to its high melting temperature. Copper has the
qualities for high stock metal removal. It is a stable material under sparking conditions.
Brass as a tool material has high wear. Copper-boron and silver tungsten both exhibit
extremely low wear. Sometimes copper tungsten is employed as the cathode metal. Its
use yields high machining rates and very low wear. Due to its high cost and not so readily
shaped, its applications are limited.
CHAPTER 2
LITRATURE REVIEW.
2.1 INTRODUCTION
A large work has been done on different aspects of EDM. This chapter
covers theVLiterature on EDM machine settings and other process parameters.
 A study by Bernd M. Schumacher[3], The ignition of electrical discharges in a
dirty, liquide filkled gap, when applying EDM, is mostly interpted as iron action
identical as found by physical research of dischrges in air (Lichtenberg figures) or
in vaccum (radio tubes) as well as with investigations on the breakthrough
strength of insulating hydrocarbon liquides. The state of the servo-controlled gap
in real EDM, however, diffuser very much from such condition. The author
stipulates ignition of electrical discharges by the evaporation of particle, removal
from the electrodes, as well as gas bubbles from earlier discharges. The material
removal reaction is grouped in an evaporation phase at start of ignition and later
in the ejection of fused material by instantaneous boiling at the discharge spots.
The gap width derives from the gap contamination avg., depending from process
setting.
 A study By Kuldip Oza, R.K. Garg [5], Electrical discharge machining (EDM) is
one of the earliest non-traditional machining processes. EDM process is based on
thermoelectric energy between the workpiece and an electrode. Material removal
rate (MRR) is an important performance measure in EDM process. Since long,
EDM researchers have explored a number of ways to improve and optimize the
MRR including some unique experimental concepts that depart from the
traditional EDM sparking phenomenon. Despite a range of different approaches,
all the research work in this area shares the same objectives of achieving more
efficient material removal coupled with a reduction in tool wear and improved
surface quality.
 A study on dry EDM by M.kunieda, B. lauwers,k.p. rajurker[6], with copper as
tool electrode & steel as workshop reveal that in case of EDM in Air, the tool
electrode wear ratio was much lower & MRR much higher when tool electrode
was negative. In the case of EDM in a liquid there was more tool of electrode
wear & lower MRR when the polarity of tool is negative. Hence negative polarity
was found to be desirable for material transfer from the tool electrode.
 A study by A Thilaivanan , P aspkan , K.N. Srinivasan, R. saravasan[7] , A
suitable selection of machining parameters for the electrical discharge machining
process relies heavily on the operators‟ technologies and experience because of
their numerous and diverse range. Machining parameters tables provided by the
machine tool builder cannot meet the operators‟ requirements, since for an
arbitrary desired machining time for a particular job, they do not provide the
optimal machining conditions. An approach to determine parameters setting is
proposed. Based on the Taguchi parameter design method and the analysis of
variance, the significant factors affecting the machining performance such as total
machining time, oversize and taper for a hole machined by EDM process, are
determined.
 A study By Mohd Amri Lajs, H.C.D. Mohd Radzi[9] , With the increasing
demand for new, hard, high strength, hardness, toughness, and temperature
resistant material in engineering, the development and application of EDM has
become increasingly important . EDM has been used effectively in machining
hard, high strength, and temperature resistance materials. Material is removed by
means of rapid and repetitive spark discharges across the gap between electrode
and workpiece. Therefore, the merits of the EDM technique become mos apparent
when machining metal alloy Tungsten Carbide which has the highest hardness in
Reinforcement. In addition, mechanical and physical properties of tungsten
carbide such as hardness toughness, high wear resistance has made it an important
material for engineering components particularly in making moulds and dies.
Since the EDM process does not involve mechanical energy, the removal rate is
not affected by either hardness, strength or toughness of the workpiece material.
Therefore, a comprehensive study of the effects of EDM parameters (peak
current, machining voltage, pulse duration and interval time) on the machining
characteristics such as electrode wear rate, material removal rate, surface
roughness and etc., is of great significance and could be of necessity Although
study of these parameters has been performed by many researchers, most of the
studies do not much consider both engineering philosophy (DOE) and
mathematical formulation (ANOVA), particularly in machining very hard
materials such as Tungsten Carbide. Therefore, the Taguchi method, which is a
powerful tool for parametric design of performance characteristics, is used to
determine the optimal machining parameters for minimum electrode wear ratio,
maximum material removal rate and minimum surface roughness in the EDM
operations. The experimental details when using the Taguchi method are
described.
 A study by J. L. Lin, K. S. Wang, B. H. Yan, Y. S. Tarng[10], In this paper the
application of the Taguchi Method with fuzzy logic for optimizing for EDM
process with multiple process with multiple performance characteristics. The
machining parameters are optimized with consideration of the multiple
performance characteristics.
CHAPTER 3
EXPERIMENTAL METHODOLOGY
3.1 Taguchi Method
A scientific approach to plan the experiments is a necessity for efficient conduct of
experiments. By the statistical design of experiments the process of planning the
experiment is carried out, so that appropriate data will be collected and analyzed by
statistical methods resulting in valid and objective conclusions. When the problem
involves data that are subjected to experimental error, statistical methodology is the only
objective approach to analysis. Thus, there are two aspects of an experimental problem:
the design of the experiments and the statistical analysis of the data. These two points are
closely related since the method of analysis depends directly on the design of
experiments employed. The advantages of design of experiments are as follows:
 Numbers of trials is significantly reduced.
 Important decision variables which control and improve the performance of the
product or the process can be identified.
 Optimal setting of the parameters can be found out.
 Qualitative estimation of parameters can be made.
 Experimental error can be estimated.
 Inference regarding the effect of parameters on the characteristics of the process can
be made.
In the present work, the Taguchi‟s method, have been used to plan the experiments
and subsequent analysis of the data collected.
3.2 Taguchi’s Philosophy
Design of experiment (doe) is a powerful statistical technique for improving
product/process designs and solving production problems. A standardized version of the
doe, as forwarded by Dr. Genichi Taguchi, allows one to easily learn and apply the
technique product design optimization and production problem investigation. There are a
number of statistical techniques available for engineering and scientific
Design of experiment (doe) is a powerful statistical technique for improving
product/process designs and solving production problems. A standardized version of the
doe, as forwarded by Dr. Genichi Taguchi, allows one to easily learn and apply the
technique product design optimization and production problem investigation. There are a
number of statistical techniques available for engineering and scientific studies. Taguchi
has prescribed a standardized way to utilize the Design of Experiments (DOE) technique to
enhance the quality of products and processes.
Taguchi‟s comprehensive system of quality engineering is one of the greatest
engineering achievements of the 20th century. His methods focus on the effective
application of engineering strategies rather than advanced statistical techniques. The
Taguchi method was developed by Dr. Genichi Taguchi of Japan. It includes both upstream
and shop-floor quality engineering. Upstream methods efficiently use small-scale
experiments to reduce variability and remain cost-effective, and robust designs for large-
scale production and market place. Shop-floor techniques provide cost-based, real time
methods for monitoring and maintaining quality in production. The farther upstream a
quality method is applied, the greater leverages it produces on the improvement, and the
more it reduces the cost and time. Taguchi‟s philosophy is founded on the following three
very simple and fundamental concepts:
 Quality should be designed into the product and not inspected into it.
 Quality is best achieved by minimizing the deviations from the target. The product
or process should be so designed that it is immune to uncontrollable environmental
variables.
 The cost of quality should be measured as a function of deviation from the standard
and the losses should be measured system-wide.
 Taguchi proposes an “off-line” strategy for quality improvement as an alternative to
an attempt to inspect quality into a product on the production line. He observes that
poor quality cannot be improved by the process of inspection, screening and
salvaging. No amount of inspection can put quality back into the product. Taguchi
recommends a three-stage process: system design, parameter design and tolerance
design In the present work Taguchi‟s parameter design approach is used to study
the effect of process parameters on the various responses of the turning process.
3.3 Experimental Design Strategy
Taguchi recommends orthogonal array (OA) for lying out of experiments. These OA‟s
are generalized Graeco-Latin squares. To design an experiment is to select the most
suitable OA and to assign the parameters and interactions of interest to the appropriate
columns. The use of linear graphs and triangular tables suggested by Taguchi makes the
assignment of parameters simple. The array forces all experimenters to design almost
identical experiments.
In the Taguchi method the results of the experiments are analysed to achieve one or
more of the following objectives:
 To establish the best or the optimum condition for a product or process
 To estimate the contribution of individual parameters and interactions
 To estimate the response under the optimum condition
The optimum condition is identified by studying the main effects of each of the
parameters. The main effects indicate the general trends of influence of each parameter.
The knowledge of contribution of individual parameters is a key in deciding the nature of
control to be established on a production process. The analysis of variance (ANOVA) is the
statistical treatment most commonly applied to the results of the experiments in
determining the percent contribution of each parameter against a stated level of confidence.
Study of ANOVA table for a given analysis helps to determine which of the parameters
need control.
Taguchi suggests two different routes to carry out the complete analysis. First, the
standard approach, where the results of a single run or the average of repetitive runs are
processed through main effect and ANOVA analysis. The second approach which Taguchi
strongly recommends for multiple runs is to use signal- to- noise ratio (S/N) for the same
steps in the analysis. The S/N ratio is a concurrent quality metric linked to the loss function.
By maximizing the S/N ratio, the loss associated can be minimized. The S/N ratio
determines the most robust set of operating conditions from variation within the results.
The S/N ratio is treated as a response of the experiment. Taguchi recommends the use of
outer OA to force the noise variation into the experiment i.e. the noise is intentionally
introduced into experiment. However, processes are often times subject to many noise
factors that in combination, strongly influence the variation of the response. For extremely
„noisy‟ systems, it is not generally necessary to identify specific noise factors and to
deliberately control them during experimentation. It is sufficient to generate repetitions at
each experimental condition of the controllable parameters and analyse them using an
appropriate S/N ratio.
In the present investigation, S/N data analysis has been performed. The effects of
the selected turning process parameters on the selected quality characteristics have been
investigated through the plots of the main effects. The optimum condition for each of the
quality characteristics has been established through S/N data analysis.
3.4 Taguchi method categories
3.4.1 Static Problems
Generally, a process to be optimized has several control factors which directly
decide the target or desired value of the output. The optimization then involves determining
the best control factor levels so that the output is at the target value. Such a problem is
called as a "STATIC PROBLEM".
This is best explained using a P-Diagram which is shown in figure 4.5 below ("P" stands
for Process or Product). Noise is shown to be present in the process but should have no
effect on the output! This is the primary aim of the Taguchi experiments - to minimize
variations in output even though noise is present in the process. The process is then said to
have become ROBUST.
3.4.1.1. Signal to noise Ratio
Once the experimental design has been determined and the trials have been carried
out, the measured performance characteristic from each trial can be used to analyse the
relative effect of the different parameters. The product/process/system design phase
involves deciding the best values/levels for the control factors. The signal to noise (S/N)
ratio is an ideal metric for that purpose.
Figure 3.1 : P-diagram for static problem
The loss-function discussed above is an effective figure of merit for making engineering
design decisions. However, to establish an appropriate loss-function with its k value to use
as a figure of merit is not always cost-effective and easy. Recognizing the Dilemma,
Taguchi created a transform function for the loss-function which is named as signal -to-
noise (S/N) ratio.
The S/N ratio, as stated earlier, is a concurrent statistic. A concurrent statistic is able to look
at two characteristics of a distribution and roll these characteristics into a single number or
figure of merit. The S/N ratio combines both the parameters (the mean level of the quality
characteristic and variance around this mean) into a single metric.
A high value of S/N implies that signal is much higher than the random effects of noise
factors. Process operation consistent with highest S/N always yields optimum quality with
minimum variation.
The S/N ratio consolidates several repetitions into one value. The equation for calculating
S/N ratios for “smaller is better” (LB),”larger is better” (HB) and “nominal is best” (NB)
types of characteristics are as follows:
1. Larger is better:
(S/N)HB= -10 log (MSDHB)
Where,
MSDHB=
n
1
(
yyyy n
22
3
2
2
2
1
1
....
111
 ),
n = no. of repetitions,
y= observed value.
This is usually chosen S/N Ratio for most desirable characteristics like “MRR” etc.
2. Smaller is better:
(S/N) LB= -10 log (MSDLB)
Where,
MSDLB= )...(
1 22
3
2
2
2
1
yyyy nn

This is usually chosen S/N ratio for all undesirable characteristics like “TWR”, ROC” etc.
3. Nominal is best
(S/N)NB=10log [
Variance
anSquareofme
]
This case arises when a specified value is MOST desired, meaning that neither a
smaller nor a larger value is desirable. Examples are:
(I) Most parts in mechanical fittings have dimensions which are nominal-the-best type.
(ii) Ratios of chemicals or mixtures are nominally the best type.
(iii) Thickness should be uniform in deposition /growth /plating /etching.
The expressions for MSD are different for different quality characteristics. For the
„nominal is best‟ characteristic, the standard definition of MSD is used. For the other two
characteristics the definition is slightly modified. For „smaller is better‟, the unstarted target
value is zero. For „larger is better‟, the inverse of each large value becomes a small value
and again, the unstarted target value is zero. Thus for all three expressions, the smallest
magnitude of MSD is being sought.
3.5 Taguchi Design Step
STEP-1: Selection of process parameters and identification of responses,
STEP-2: Assignment of levels to the process parameters,
STEP-3: Selection of proper O.A and assignment of process parameters to the O.A,
STEP-4: Experiment is to be conducted based on orthogonal array,
STEP-5: Calculation of loss function and the S/N ratio
STEP-6: Calculation of mean S/N ratio and analyze the results,
STEP-7: Analysis of variance (ANOVA),
STEP-8: Selection of optimal combination of process parameters,
STEP-9: Verification test of optimal process parameter
3.6 Data Analysis
A number of methods have been suggested by Taguchi for analyzing the data:
observation method, ranking method, column effect method, ANOVA, S/N ANOVA, plot
of average response curves, interaction graphs etc. However, in the present investigation
the following methods have been used:
 ANOVA for S/N data
 S/N response graphs
 Interaction graphs
 Residual graphs
The plot of average responses at each level of a parameter indicates the trend. It is a
pictorial representation of the effect of parameter on the response. The change in the
response characteristic with the change in levels of a parameter can easily be visualized
from these curves. Typically, ANOVA for OA‟s are conducted in the same manner as other
structured experiments
The S/N ratio is treated as a response of the experiment, which is a measure of the
variation within a trial when noise factors are present. A standard ANOVA can be
conducted on S/N ratio which will identify the significant parameters (mean and variation).
Interaction graphs are used to select the best combination of interactive parameters.
Residual plots are used to check the accuracy.
3.7 Advantages and disadvantages of Taguchi
An advantage of the Taguchi method is that it emphasizes a mean performance
characteristic value close to the target value rather than a value within certain specification
limits, thus improving the product quality. Additionally, Taguchi's method for experimental
design is straightforward and easy to apply to many engineering situations, making it a
powerful yet simple tool. It can be used to quickly narrow down the scope of a research
project or to identify problems in a manufacturing process from data already in existence.
Also, the Taguchi method allows for the analysis of many different parameters without a
prohibitively high amount of experimentation. In this way, it allows for the identification of
key parameters that have the most effect on the performance characteristic value so that
further experimentation on these parameters can be performed and the parameters that have
little effect can be ignored.
The main disadvantage of the Taguchi method is that the results obtained are only
relative and do not exactly indicate what parameter has the highest effect on the
performance characteristic value. The Taguchi method has been criticized in the literature
for difficulty in accounting for interactions between parameters.
CHAPTER 4
PILOT EXPERIMENT
4.1 PILOT EXPERIMENTATION
The effect of various input parameters i.e. pulse on, pulse off, current, electrode,
and work-piece were investigated through the pilot experimentation. One response was
selected for pilot experimentation namely material removal rate (MRR). The assignment
of factors was carried out using statistical software MINITAB. All the factors were varied
at three levels. The degrees of freedom required for the experiment was calculated, thus
the orthogonal array that can be used should have degrees of freedom (dof) greater than
11. L27 which can accommodate 3-level factors was used for conduct of experiments to
measures one response values namely, MRR. After the conduct of the 27 trials the mean
values for MRR is tabulated in Table. For the analysis of the result, Analysis by S/N ratio
performed and main effect plot for S/N ratio was obtained.
4.2 L27 Orthogonal Array along with results for EDM process during
pilot experimentation
Table 4.1 : L27 Result table for pilot experiment
Trial
No.
Current
(Amp)
Ton
(µs)
Toff
(µs)
Tool WP MRR
(mm3
/min)
1 3 2 8 Brass MS 0.0765
2 3 2 8 Brass D2 0.3636
3 3 2 8 Brass E31 0.0750
4 3 5 5 Copper MS 0.4591
5 3 5 5 Copper D2 0.4675
6 3 5 5 Copper E31 0.3250
7 3 8 2 W MS 0.5102
8 3 8 2 W D2 0.0779
9 3 8 2 W E31 0.0250
10 12 2 5 W MS 0.3316
11 12 2 5 W D2 0.7272
12 12 2 5 W E31 0.4750
13 12 5 2 Brass MS 0.5103
14 12 5 2 Brass D2 2.9090
15 12 5 2 Brass E31 0.3000
16 12 8 8 Copper MS 3.2398
17 12 8 8 Copper D2 2.4415
18 12 8 8 Copper E31 0.2500
19 20 2 2 Copper MS 0.6887
20 20 2 2 Copper D2 0.5714
21 20 2 2 Copper E31 2.3750
22 20 5 8 W MS 2.5765
23 20 5 8 W D2 2.5714
24 20 5 8 W E31 0.5500
25 20 8 5 Brass MS 1.6326
26 20 8 5 Brass D2 8.0519
27 20 8 5 Brass E31 4.5000
The relationship of MRR with current, pulse on time and pulse off time during the
machining using copper ,brass and graphite electrode in dielectric is shown in the Figure
4.1. It was observed that at low current, MRR is low but increases sharply with increased
current. The current was observed to be most significant factor affecting MRR. The
MRR increased with increase in the pulse on time and initially increased & then after
decreased with increase in pulse off time. The work-piece material had significant effect
on MRR. and the electrode material had insignificant effect on MRR.
Graph 4.1: Main effect plot for SN ratio
Table 4.2: Response Table For SN ratio
20123
5
0
-5
-10
-15
852 852
WCuBrass
5
0
-5
-10
-15
En31D2MS
current
MeanofSNratios
Ton Toff
Tool WP
Main Effects Plot for SN ratios
Data Means
Signal-to-noise: Larger is better
Level Current Ton Toff Tool WP
1 -15.1997 -8.1135 -7.5188 -2.7999 -3.4351
2 -2.2139 -2.1026 -0.7233 -1.9771 -0.2024
3 5.1204 -2.0771 -4.0511 -7.5161 -8.6536
Rank 1 4 3 5 2
CHAPTER 5
EXPERIMENTAL DESIGN
5.1 Introduction
The full factorial design is referred as the technique of defining and investigating
all possible conditions in an experiment involving multiple factors while the fractional
factorial design investigates only a fraction of all the combinations. Although these
approaches are widely used, they have certain limitations: they are inefficient in time and
cost when the number of the variables is large; they require strict mathematical treatment
in the design of the experiment and in the analysis of results; the same experiment may
have different designs thus produce different results; further, determination of
contribution of each factors is normally not permitted in this kind of design. The Taguchi
method has been proposed to overcome these limitations by simplifying and
standardizing the fractional factorial design. The methodology involves identification of
controllable and uncontrollable parameters and the establishment of a series of
experiments to find out the optimum combination of the parameters which has greatest
influence on the performance and the least variation from the target of the design. The
effect of various parameters (work-piece material, electrode, dielectric, pulse on time,
pulse off time current and powder) and some of the effects of interactions between the
main factors were also be studied using parameterization approach developed by
Taguchi.
5.2 Procedure of experimental design
The whole procedure of Taguchi method is as under.
1. Establishment of objective functions.
2. Selection of factors and/or interactions to be evaluated.
3. Identifications of uncontrollable factors and test conditions.
4. Selection of number of levels for the controllable and uncontrollable factors.
5. Calculation total degree of freedom needed
6. Select the appropriate Orthogonal Array (OA).
7. Assignment of factors and/or interactions to columns.
8. Execution of experiments according to trial conditions in the array.
9. Analyze results.
10. Confirmation experiments
5.3 Establishment of objective function
The objective of the study is to evaluate the main effects of work-piece material,
electrode, pulse off, pulse on time, current and on the MRR. o studied.
5.4 Degree of freedom (dof)
The number of factors and their interactions and level for factors determine the
total degree of freedom required for the entire experiment. The degree of freedom for
each factor is given by the number of levels minus one.
dof for each factor : k-1=3-1=2
where k is the number of level for each factor
Total Dof of experiment = No of trials – 1 = 27 – 1 = 26
5.5 Selection of Factors
The determination of which factors to investigate depends on the responses of
interest. The factors affects the responses were identified using cause and effect analysis,
brainstorming and pilot experimentation. The lists of factors studied with their levels are
shown in the Table 5.1.
Table 5.1 : Factors and their Levels
FACTORS
LEVELS
LEVEL 1 LEVEL 2 LEVEL 3
Current (amp) 3 12 20
Pulse On Time 3 5 8
Pulse Off Time 9 5 3
Tool Material Copper Brass Graphite
WP Material M.S. EN31 D2
5.6 Orthogonal array
OA plays a critical part in achieving the high efficiency of the Taguchi method.
OA is derived from factorial design of experiment by a series of very sophisticated
mathematical algorithms including combinatorics, finite fields, geometry and error
correcting codes. The algorithms ensure that the OA to be constructed in a statistically
independent manner that each level has an equal number of occurrences within each
column; and for each level within one column, each level within any other column will
occur an equal number of times as well. Then, the columns are called orthogonal to each
other. OA‟s are available with a variety of factors and levels in the Taguchi method.
Since each column is orthogonal to the others, if the results associated with one level of a
specific factor are much different at another level, it is because changing that factor from
one level to the next has strong impact on the quality characteristic being measured.
Since the levels of the other factors are occurring an equal number of times for each
level of the strong factor, any effect by these other factors will be ruled out. The Taguchi
method apparently has the following strengths:
1. Consistency in experimental design and analysis.
2. Reduction of time and cost of experiments.
3. Robustness of performance without removing the noise factors.
The selection of orthogonal array depends on:
1. The number of factors and interactions of interest
2. The number of levels for the factors of interest
Taguchi‟s orthogonal arrays are experimental designs that usually require only a fraction
of the full factorial combinations. The arrays are designed to handle as many factors as
possible in a certain number of runs compared to those dictated by full factorial design.
The columns of the arrays are balanced and orthogonal. This means that in each pair of
columns, all factor combinations occur same number of times. Orthogonal designs allow
estimating the effect of each factor on the response independently of all other factors.
Once the degrees of freedom are known, the next step, selecting the orthogonal array
(OA) is easy. The number of treatment conditions is equal to the number of rows in the
orthogonal array and it must be equal to or greater than the degrees of freedom. The
interactions to be evaluated will require an even larger orthogonal array. Once the
appropriate orthogonal array has been selected, the factors and interactions can be
assigned to the various columns.
Table 5.2 : L27 Orthogonal Array
Trial
No.
Current
(amp)
Ton
(µs)
Toff
(µs)
Tool
Mtr.
WP
Mtr.
1 3 3 9 Copper MS
2 3 3 9 Copper D2
3 3 3 9 Copper EN31
4 3 5 5 Brass MS
5 3 5 5 Brass D2
6 3 5 5 Brass EN31
7 3 8 3 Gr. MS
8 3 8 3 Gr. D2
9 3 8 3 Gr. EN31
10 12 3 5 Gr. MS
11 12 3 5 Gr. D2
12 12 3 5 Gr. EN31
13 12 5 3 Copper MS
14 12 5 3 Copper D2
15 12 5 3 Copper EN31
16 12 8 9 Brass MS
17 12 8 9 Brass D2
18 12 8 9 Brass EN31
19 20 3 3 Brass MS
20 20 3 3 Brass D2
21 20 3 3 Brass EN31
22 20 5 9 Gr. MS
23 20 5 9 Gr. D2
24 20 5 9 Gr. EN31
25 20 8 5 Copper MS
26 20 8 5 Copper D2
27 20 8 5 Copper EN31
5.7 Experimental set up
The experiments have been conducted on the Electrical Discharge Machine S25
Of Sparkonix Ltd. available at Vishwakarma Government engineering college., in
Machine Tool lab. A large number of input parameters which can be varied in the EDM
process, i.e. pulse on, pulse off, polarity, peak current, electrode gap and type of flushing,
each having its own effect on the output parameters such as tool wear rate, material
removal rate, surface finish and hardness of machined surface. Current, pulse on and
pulse off are the parameters which were varied on the machine for experimentation. The
ranges of these parameters for the experimental work have been selected on the basis of
results of pilot experiments. The input parameters have been fixed for during the whole
experimentation, as given in the Table 5.3.
Table 5.3 : Constant Input Parameter
Sr No. Parameter Value
1 Machining Time 20 min.
2 Die-electric Fluid HC
3 Polarity Straight
Figure 5.1 SPARKONIX S25 SERIES Courtesy “EDM Lab”
Figure 5.2 EDM Work table Courtesy “EDM Lab”
5.8 Analyses of results
Signal-to-noise ratio
The parameters that influence the output can be categorized into two classes,
namely controllable (or design) factors and uncontrollable (or noise) factors. Controllable
factors are those factors whose values can be set and easily adjusted by the designer.
Uncontrollable factors are the sources of variation often associated with
operational environment. The best settings of control factors as they influence the output
parameters are determined through experiments. From the analysis point of view, there
are three possible categories of the response characteristics explained below.
𝑦2
𝑟
𝑖=1
𝑖 = 𝑠𝑢𝑚𝑎𝑡𝑖𝑜𝑛 𝑜𝑓𝑎𝑙𝑙 𝑟𝑒𝑠𝑝𝑜𝑛𝑐𝑒 𝑣𝑎𝑙𝑢𝑒 𝑜𝑓𝑒𝑎𝑐𝑕 𝑡𝑟𝑖𝑎𝑙
MSD = Mean square deviation
yi= Observed value of the response characteristic
y0= nominal or target value of the results
Signal to noise ratio for response characteristics
The parameters that influence the output can be categorized in two categories,
controllable factors and uncontrollable factors. The control factors that may contribute to
reduced variation can be quickly identified by looking at the amount of variation present
in response. The uncontrollable factors are the sources of variation often associated with
operational environment. For this experimental work, response characteristics have given
in the Table 5.4.
Table 5.4 : Response Characteristics
Response Name Response Type Unit
Material Removal Rare Higher is Better mm3
/ min
Tool Wear Rate Lower is Better mm3
/ min
Micro Hardness Higher is Better HVN
Surface Roughness Lower is Better Microns
Measurement of F-value of Fisher’s F ratio
The principle of the F test is that the larger the F value for a particular parameter,
the greater the effect on the performance characteristic due to the change in that process
parameter. F value is defined as:
F =
𝑀𝑆 𝑓𝑜𝑟 𝑎 𝑡𝑒𝑟𝑚
𝑀𝑆 𝑓𝑜𝑟 𝑡𝑕𝑒 𝑒𝑟𝑟𝑜𝑟 𝑡𝑒𝑟𝑚
Computation of average performance:
Average performance of a factor at certain level is the influence of the factor at
this level on the mean response of the experiments.
Analysis of variance
The knowledge of the contribution of individual factors is critically important for
the control of the final response. The analysis of variance (ANOVA) is a common
statistical technique to determine the percent contribution of each factor for results of the
experiment. It calculates parameters known as sum of squares (SS), pure SS, degree of
freedom (DOF), variance, F-ratio and percentage of each factor. Since the procedure of
ANOVA is a very complicated and employs a considerable of statistical formulae, only a
brief description of is given as following.
The Sum of Squares (SS) is a measure of the deviation of the experimental data
from the mean value of the data.
Let „A‟ be a factor under investigation
𝑆𝑆 𝑇 = (𝑦𝑖 − 𝑇)2
𝑁
𝑖=1
Where N = Number of response observations, T is the mean of all observations i y is
the i response
Factor Sum of Squares ( A SS ) - Squared deviations of factor (A) averages
𝑆𝑆 𝑇 = (𝑦𝑖 − 𝑇)2
𝑁
𝑖=1
−
𝑇2
𝑁
Where
Average of all observations under Ai level = Ai / nAi
T = sum of all observations
T =Average of all observations = T / N
Number of observations nAi = under Ai level
Error Sum of Squares ( e SS ) - Squared deviations of observations from factor (A)
Averages
𝑆𝑆𝑒 = (𝑦𝑖− 𝐴𝑗)
2
𝑛 𝐴𝑖
𝑖=1
𝐾 𝑎
𝑗=1
5.9 Material Composition for work-piece & electrode material
Three work-piece materials Mild Steel, D2 and EN31 and three electrode
materials Graphite, Copper and Brass were used. Before the start of experimentation, The
percentage composition of the work-piece and electrode material is provided in Table 5.5.
Table 5.5 Work-Piece Material Composition
Work
piece
% Composition
Fe C Si Mn P S Cr Mo Ni Co Cu V T W
MS 96.00 2.0 0.6 1.65 - - - - - - 0.6 - - -
D2 83.5 1.70 0.30 0.30 0.03 0.03 12.3 0.60 - - 0.05 0.10 - 0.50
EN31 92.3 0.3 1.0 0.4 0.04 - 5.0 - - - - - 1.0 -
Table 5.6 Electrode Material Composition
Figure 5.3 Work Piece (EN31) After machining
Electrode
% Composition
W Cu Ni Z Ti Lead
Copper - 99.78 0.121 0.047 0.014 0.026
Brass - 67.00 - 33.00 - -
Graphite High Carbon Content (95-99%)
Figure 5.4 Work Piece (D2) After machining
Figure 5.5 Work Piece (MS) After machining
Figure 5.6 Tool (Copper)
Figure 5.7 Tool (Graphite)
Figure 5.8 Tool (Brass)
CHAPTER 6
RESULT AND ANALYSIS OF MRR
6.1 Introduction
The effects of parameters i.e. work-piece, dielectric, electrode, pulse on time,
pulse off time, current, were evaluated using ANOVA & S/N ratio, General linear Model
and S/N ratio. A confidence interval of 95% has been used for the analysis. Two runs for
each of 27 trails were completed to measure the Signal to Noise ratio(S/N Ratio).
6.2 Results For MRR
The results for MRR for each of the 27 treatment conditions with repetition are
given in Table. MRR of each sample is calculated from weight difference of work-piece
before and after the performance trial, which is given by:
𝑀𝑅𝑅 =
𝑤𝑒𝑖𝑔𝑕𝑡 𝑑𝑖𝑓𝑓𝑒𝑟𝑒𝑛𝑐𝑒
𝜌 × 𝑡𝑖𝑚𝑒
× 1000 𝑚𝑚3
/𝑚𝑖𝑛
Table 6.1 Result Table For Final Experiment
SR
No
Current Ton Toff Tool Mtr. WP Mtr. MRR Mean
MRR
S/N
RatioI II
1 3 3 9 Copper MS 0.0682 0.0695 0.068878 -23.238446
2 3 3 9 Copper D2 0.0649 0.0675 0.066234 -23.578411
3 3 3 9 Copper EN31 0.0164 0.0079 0.012171 -38.293437
4 3 5 5 Brass MS 0.3444 0.3176 0.330995 -9.603574
5 3 5 5 Brass D2 0.2006 0.1273 0.163961 -15.705187
6 3 5 5 Brass EN31 0.1862 0.1816 0.183882 -14.709236
7 3 8 3 Gr. MS 0.4994 0.8584 0.67889 -3.3640079
8 3 8 3 Gr. D2 0.4643 0.4571 0.460714 -6.7313664
9 3 8 3 Gr. EN31 0.3737 0.2493 0.311513 -10.130472
10 12 3 5 Gr. MS 1.0925 0.9152 1.003827 0.03317339
11 12 3 5 Gr. D2 1.9422 2.0539 1.998052 6.01213551
12 12 3 5 Gr. EN31 2.2658 1.8072 2.036513 6.17774441
13 12 5 3 Copper MS 6.8265 6.6282 6.72736 16.556893
14 12 5 3 Copper D2 4.8097 4.2760 4.542857 13.1465816
15 12 5 3 Copper EN31 6.9243 8.5908 7.757566 17.7945093
16 12 8 9 Brass MS 1.7978 2.7596 2.278699 7.15373916
17 12 8 9 Brass D2 2.5558 2.1864 2.371104 7.49901168
18 12 8 9 Brass EN31 2.3461 3.0414 2.69375 8.60714575
19 20 3 3 Brass MS 0.8846 0.2526 0.568559 -4.9044942
20 20 3 3 Brass D2 0.5110 0.8169 0.663961 -3.5571481
21 20 3 3 Brass EN31 0.5559 0.7993 0.677632 -3.3801273
22 20 5 9 Gr. MS 2.5593 1.9707 2.264987 7.10131521
23 20 5 9 Gr. D2 5.7961 5.1506 5.473377 14.7651067
24 20 5 9 Gr. EN31 3.7441 2.2882 3.016118 9.58896778
25 20 8 5 Copper MS 20.4069 21.7806 21.09375 26.4830759
26 20 8 5 Copper D2 15.9851 14.4773 15.23117 23.6546646
27 20 8 5 Copper EN31 12.3783 11.2211 11.79967 21.437398
6.3 Result OF S/N ratio Of MRR
The S/N ratio consolidates several repetitions into one value and is an indication
of the amount of variation present. The S/N ratios have been calculated to identify the
major contributing factors that cause variation in the MRR. S/N ratio has been calculated
for each reading using MINITAB. MRR is “Higher is better” type response which is
given by:
(S/N)HB = -10 log (MSDHB)
Where MSDHB =
1
𝑟
1
𝑦 𝑗
2
𝑟
𝑗 =1
MSDHB = Mean Square Deviation for higher-the-better response.
Table 6.2 : Response Table for SN ratio
Level Current Ton Toff Tool WP
1 -16.1505 -9.4143 1.7145 3.7736 1.8020
2 9.2201 -4.3262 4.8645 3.1778 1.7228
3 10.1321 8.2899 -3.3772 2.6058 -0.3231
Rank 1 2 3 4 5
Graph 6.1 : Main Effects Plot for Means
Table 6.3 : Analysis of variance
Source DF Seq SS Adj SS Adj MS F P
Current 2 4005.81 4005.81 2002.90 129.23 0.000
Ton 2 1556.86 1553.86 776.93 50.13 0.000
Toff 2 311.32 311.32 155.66 10.04 0.001
Tool Material 2 249.41 249.41 124.70 8.05 0.004
WP 2 26.12 26.12 13.06 0.84 0.449
Error 16 247.97 247.97 15.50
Total 26 6394.49
20123
8
6
4
2
0
853 953
GraphiteBrassCopper
8
6
4
2
0
EN31D2MS
Current
MeanofMeans
Ton Toff
Tool Material WP
Main Effects Plot for Means
Data Means
Graph 6.2 Main Effects Plot for SN ratios
Table 6.2 shows Response table for S/N ratio of MRR at 95% confidence interval.
Current was observed to be the most significant factor affecting the MRR, followed by
pulse on time, pulse off time, tool material and work piece material. Graph 6.1 shows
Main Effects for Means for MRR and Graph 6.2 shows Main Effects Plot for SN ratios
for MRR. Both the graphs gives same results for optimum conditions.
6.4 Confirmation Test
Once the optimum level of process parameter has been selected final step is to predict
and verify the improvement of the performance characteristics using the optimal level of
process parameters. As a general rule optimum performance can be calculated by using
following expression.
20123
0
-6
-12
-18
-24
853 953
GraphiteBrassCopper
0
-6
-12
-18
-24
EN31D2MS
Current
MeanofSNratios
Ton Toff
Tool Material WP
Main Effects Plot for SN ratios
Data Means
Signal-to-noise: Larger is better
T = Grand total of all results
N = Total No of results
Yopt = Performance at optimum conditions.
Table 6.4 Confirmation Test Reading
Current Pulse On time Pulse off Time Machining Time MRR
20 8 5 20min 20.4196
𝑌 𝑜𝑝𝑡 =
𝑇
𝑁
+ 𝐴3 −
𝑇
𝑁
+ 𝐵3 −
𝑇
𝑁
+ 𝐶 2 −
𝑇
𝑁
+ 𝐷1 −
𝑇
𝑁
+ 𝐸1 −
𝑇
𝑁
= 3.49912 + (6.75432-3.49912) + (6.324362-3.49912) + (5.982424-3.49912)
+ (7.47773-3.49912) + (3.89066 – 3.49912)
Yopt = 16.4334
% error =
𝑌 𝑎𝑐𝑡 .− 𝑌 𝑡 𝑕.
𝑌 𝑡 𝑕
=
20.4186−16.4334
16.4334
x 100
= 24.25 %
CHAPTER 7
RESULT CONCLUSION AND RECOMMNDATION
7.1 Optimal Design For MRR
In this experimental analysis, the main effect plot in Figure used to estimate the
mean MRR. In S/N ratio highest MRR was observed when work-piece material MS was
machined with copper tool at pulse on time 8μs, pulse off time 5 μs & current 20Amp. It
is observed that current at 20Amp has optimal value for higher MRR because it decreases
variation .The results of ANOVA for S/N ratios of MRR ( table no 7.1) indicates that for
α = 0.5 value current, Ton ,Toff & are most significant machining parameters while
work piece material is insignificant parameter affecting MRR .
Table : 7.1 Optimum Condition
Factors Value
Current 20 Amp.
Pulse On Time 8 µs
Pulse Off Time 5 µs
Tool Mtr. Copper
Work-Piece Mtr. M.S.
7.2 Recommendations for future work
In this experiment effect of process parameters on performance of MRR was
analyzed. Further the effect of process parameters on performance measure of other
performance parameter for example TWR and surface roughness can be carried out .
Only three work-piece materials, namely D2, MS and EN31 had been used. Other
materials such as titanium, H11, OHNS die steel and tungsten hot work die steel can be
machined.
flexible modeling tools like Artificial Neural Network, Genetic Algorithms, and Fuzzy
logic which are highly efficient in mapping between input variables and output variables.
By using this models and the data obtained from the experiment a process model to
obtain optimum condition .
APPENDIX-A
TECHNICAL SPECIFICATION OF EDM MACHINE
The experiment been conducted on Electric discharge machine model S-25 ,
Sparkonix machines Ltd. pune. Technical Data for machines as under :
1. Electrical Data
Supply Voltage 415V 3Phase 50Hz.
Max Machine Current 25Amp.
Current Range 3 range of 6amp each
Single range of 3 amp
2 range of 2amp each
2. Machine specification
Work Tank 600 x 400 x 275 mm
Work Table 400x 300 mm
X- Travel 200 mm
Y- Travel 150 mm
Z- Travel 200 mm
APPENDIX- B
SPECIFICATION OF MEASURING INSTRUMENT
1. Weighing Machine
Company : SHIMADZU CORPORATION (Japan)
Type : AX 200
M/C No. : D432612833
Capacity : 200 gm.
Readability : 0.1 mg.
APPENDIX- C
TECHNICAL SPECIFICATION OF DIE-ELECTRISC MEDIUM
 Die-electric Fluid – Hydro-Carbon Oil
Specific Gravity (at 15 C) 0.797
Kinematic Viscosity (at 40 C) 1.8
Flash Point ( C) 75
Boiling Point ( C) 200-250
REFERENCES
1. Panday P.C., Shan H.S. (2007), “Modern Machining Processes”, Tata McGraw-
Hill, New Delhi, India, ISBN -07-096553-6.
2. McGeough J.A. (1988), “Advanced Methods of Machining”, Chapman and Hall,
USA, ISBN 0-412-31970-5.
3. Bernd M. Schumacher, “After 60 years of EDM the discharge process remains
still disputed”, “ Journal of material processing technology 149 (2004) 376-381
4. Kunieda M., Lauwers B., Rajurkar K. P., Schumacher B. M. (2005), “Advancing
EDM through Fundamental Insight into the Process”, Journal of Materials
Processing Technology, Annals of CIRP, Vol. 54(2), pp. 599-622.
5. R.K. Garg , K.K. Singh , Anish saxhdeva, review of research work in sinking
EDM and WEDM on metal matrix composite materials.
6. M. Kunieda, B. Lauwers, K. P. Rajurker, B. M. Schumacher, Advancing EDM
through fundamental insight into the process “journal of annals of the CIRP, 46/1,
143-146”.
7. A thillaivanav, P Asokan, K.N.Srinivasan, R. saraavasan, “Optimization of
operating parameters of EDM process based on the taguchi method,
“International journal of engineering science and technology Vol. 2(12),
2010,6880-6888”
8. Ross Phillip J., (1990), “Taguchi Techniques for Quality Engineering”, McGraw-
Hill,
ISBN 0-07-053866-2
9. Mohd Amari Lajs, H.C.D. Mohd Radzi, “ The implementation of Taguchi method
on EDM process”, “European journal of scientific research ISBN-216X Vol-26,
no4 c20091, pp 609-617
10. J. L. Lin, K. S. Wang, B. H. Yan, Y. S. Tarng (2000), “Optimization of the
electrical machining process based on the Taguchi Method with fuzzy logics”,
“Journals of materials technology 102(2000) 48-55.
11. Lin J.L., Lin C.L. (2002), “The use of the orthogonal array with grey relational
analysisto optimize the electrical discharge machining process with multiple
performance characteristics”, International Journal of Machine Tools &
Manufacture, Vol. 42, pp. 237–244.
12. Kuldeep oza, R.K. Garg “MRR improvement in sinking EDM : A review “, “
Journal of minerals and materials characterization engineering Vol. 9 ,PP-709-
339, 2010

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EDM-MRR Improvement Part-2 (Sem-8)

  • 1. A Project Report on “EXPERIMENTAL STUDY ON EFFECT OF PROCESS PARAMETERS ON PERFORMANCE MEASURE OF EDM” submitted to Gujarat Technological University for Partial Fulfillment Towards the Subject : PROJECT-II (181901), Semester VIIIth in the Field of “MECHANICAL ENGINEERING” Submitted by PATEL PAVANKUMAR I. (080170119037) PARMAR KAUSHIK C. (080170119027) PATEL DARSHIL D. (090173119005) MODI TARUN D. (090173119002) Under the Guidance of Prof. S.R. Pandya Asst. Professor, Department of Mechanical Engineering Vishwakarma Government Engineering College , Chandkheda Department of Mechanical Engineering Vishwakarma Government Engineering College, Chandkheda – 382424 APRIL/MAY 2012
  • 2. Certificate This is to certify that the project report entitled “EXPERIMENTAL STUDY ON EFFECT OF PROCESS PARAMETERS ON PERFORMANCE MEASURE OF EDM” submitted by PATEL PAVANKUMAR I. (080170119037) PARMAR KAUSHIK C. (080170119027) PATEL DARSHIL D. (090173119005) MODI TARUN D. (090173119002) towards the partial fulfillment of the requirement for the subject PROJECT-I (Subject Code: 181901) (Semester VIIIth ) in the field of “MECHANICAL ENGINEERING” of Gujarat Technological University is a record of the bona-fide work carried out by him/her under my guidance and supervision. The work submitted, in my opinion, has reached to a level required for being accepted for the examination. . Guide: Prof. S.R.Pandya Asst. Professor, Department of Mechanical Engg. Vishwakarma Government Engg.College , Chandkheda Prof. Rupal. P Vyasa Head of Department Department of Mechanical Engg. Vishwakarma Government Engg. College , Chandkheda
  • 3. Certificate of Examiner The Project Report entitled “EXPERIMENTAL STUDY ON EFFECT OF PROCESS PARAMETERS ON PERFORMANCE MEASURE OF EDM” Submitted By PATEL PAVANKUMAR I. (080170119037) PARMAR KAUSHIK C. (080170119027) PATEL DARSHIL D. (090173119005) MODI TARUN D. (090173119002) As a partial fulfillment of the requirement for the Subject : PROJECT-I (181901) Semester-VIIIth of Gujarat Technological University in the field of “MECHANICAL ENGINEERING” is hereby approved. Internal Examiner External Examiner Date : Place :
  • 4. ACKNOWLEDGEMENT I express my cavernous sense of obligation and gratitude to my guide Prof. S R PANDYA for her genuine guidance and constant encouragement throughout this project work. I am highly obliged as my honourable guide have devoted her valuable time and shared his expertise knowledge. I extend my sincere thanks to HOD, Department of Mechanical Engineering and Principal, Vishwakarma Government Engineering College, Chandkheda for providing me such an opportunity to do my project work in my college. I also wish to express my heartfelt appreciation to my friends, colleagues and many who have rendered their support for the successful completion of the project, both explicitly and implicitly. PATEL PAVANKUMAR I. (080170119037) PARMAR KAUSHIK C. (080170119027) PATEL DARSHIL D. (090173119005) MODI TARUN D. (090173119002) 8th /Mechanical Date: Place:
  • 5. ABSTRACT Electron discharge machining is one of the earliest non-traditional machining processes. EDM process is based on thermoelectric energy between the work piece and an electrode. Material removal rate (MRR) is an important performance measure in EDM process Low MRR is the disadvantage in EDM therefore no. Of ways are explored to improve and optimize MRR. This project works on mainly concentrated on improving the MRR by controlling the various process parameters. For that a experiment is to be carried out on EDM machine and result to be analyzed. The effect of various input parameters on output responses have been analyzed using Analysis of Variance (ANOVA). Main effect plot and S/N ratio have been used to determine the optimal design for each output response.
  • 6. NOMENCLATURE Vo Open Circuit Voltage Vw The Working Voltage Io The Maximum Current W t Ton Weight Operation Time The Pulse Time On Toff ρ The Pulse Time Off Density
  • 7. LIST OF FIGURES 1.1 Relaxation Circuit 4 1.2 Variation Of Capacitor Voltage With Time 4 1.3 1.4 1.5 Pulse Wave Form Of Controlled Pulse Generator Mechanism Of Material Removal Schematic Diagram 5 6 7 1.6 Normal Polarity & Reverse Polarity 8 3.1 5.1 5.2 5.3 5.4 5.5 5.6 5.7 5.8 P- Diagram For Static Problem Sparkonix S25 Series EDM Work Table Tool (EN31) After Machining Tool (D2) After Machining Tool (MS) After Machining Tool (EN31) After Machining Tool (D2) After Machining Tool (MS) After Machining 21 34 35 39 40 40 41 41 42
  • 8. LIST OF TABLES 4.1 L27 Result Table For Pilot Experiment 4.2 Response Table For SN Ratio 5.1 Factors & Their Levels 5.2 L27 Orthogonal Array 5.3 Constant Input Parameters 5.4 Response Characteristics 5.5 Work-piece Material Composition 5.6 Electrode Material Composition 6.1 Result Table For Finale Experiment 6.2 Response Table For SN Ratio 6.3 Analysis Of Variance 6.4 Confirmation Test Reading 7.1 Optimum Condition 26 28 31 32 34 36 38 39 43 45 46 48 49
  • 9. LIST OF GRAPHS 4.1 6.1 6.2 Main Effect Plot For SN Ratio Main Effect Plot For Means Main Effect Plot For SN ratio 28 46 47
  • 10. INDEX Acknowledgment i Abstract ii Nomenclature iii List of Tables iv List of Figures v List of Graphs vi 1. INTRODUCTION 1-13 1.1 Introduction to Non-Traditional Processes 1 1.2 Electric Discharge Machine 2 1.3 History Of EDM 2 1.4 Working Principle Of EDM 3 1.5 Mechanism Of Material Removal 5 1.6 Sinker EDM 7 1.7 EDM process Parameters 8 1.7.1 Polarity 8 1.7.2 Pulse On Time 9 1.7.3 Pulse Off Time 9 1.7.4 Peak Current 10 1.7.5 Discharge Current 10 1.7.6 Pulse Wave Form 10 1.7.7 Type Of Die-Electric Medium 11 1.7.8 Type Of Flushing 11 1.7.9 Electrode Gap 13 1.7.10 Electrode Material 13
  • 11. 2. LITRATURE REVIEW 14-16 2.1 Introduction 14 3. EXPERIMENTAL METHODOLOGY 17-25 3.1 Taguchi Method 17 3.2Taguchi Philosophy 18 3.3 Experimental Design Strategy 19 3.4 Taguchi Method Categories 20 3.4.1 Static Problems 20 3.4.1.1 Signal to Noise Ratio 21 3.5 Taguchi Design Steps 23 3.6 Data Analysis 24 3.7 Advantages & Disadvantages Of Taguchi 24 4. PILOT EXPERIMENT 26-28 4.1 Pilot Experimentation 26 4.2 L27 Orthogonal Array Along With Results For EDM Process During Pilot Experimentation 26 5. EXPERIMENTAL DESIGN 29-42 5.1Introduction 29 5.2 Procedure Of Experimental Design 29 5.3Establishment Of Objective Function 30 5.4 Degree Of Freedom 30 5.5 Selection Of Factors 30 5.6 Orthogonal Array 31 5.7 Experimental Set-up 33 5.8 Analysis Of Result 35
  • 12. 5.9 Material Composition For Tool & Tool 38 6. RESULT & ANALYSIS OF MRR 43-48 6.1 Introduction 43 6.2 Results For MRR 43 6.3 Results Of SN Ratio For MRR 44 6.4 Result Of ANOVA For MRR 47 7. RESULT, CONCLUSION & RECOMMENDATION 49-50 7.1Optimal Design For MRR 49 7.2 Recommendation For Future Work 49  APPENDIX- A 51  APPENDIX- B 52  APPENDIX- C 53  REFEERENCESS 54-55
  • 13. CHAPTER 1 INTRODUCTION 1.1 Introduction To Non-Traditional Processes Technologically advanced industries like aeronautics, automobiles, nuclear reactors, missiles, turbines etc. requires materials like high strength temperature resistant alloys which have higher strength, corrosion resistance, toughness, and other diverse properties. With rapid development in the field of materials it has become essential to develop cutting tool materials and processes which can safely and conveniently machine such new materials for sustained productivity, high accuracy and versatility at automation. Consequently, non-traditional techniques of machining are providing effective solutions to the problem imposed by the increasing demand for high strength temperature resistant alloys, the requirement of parts with intricate and compacted shapes and materials so hard as to defy machining by conventional methods. The processes are non-conventional in the sense that these don‟t employ a conventional tool for the material removal. Instead these utilize energy in direct form to remove the materials from work-piece. The range of applications of newly developed machining process is determined by work-piece properties like electrical and thermal conductivity, melting temperature, electrochemical equivalent etc. These techniques can be classified into three categories, i.e. mechanical, electro-thermal, and electrochemical machining processes. The mechanical nonconventional techniques (abrasive jet machining, ultrasonic machining, and water jet machining) utilizes kinetic energy of either abrasive particles or a water jet to remove the material. In electro-thermal method (plasma arc machining, laser beam machining, and electron beam machining) the energy is supplied in form of heat, light, and electron bombardment which results melting, or vaporization and melting both of work material.
  • 14. In the chemical machining, etching process is being done. On the other hand, in electrochemical machining an anodic dissolution process is going on in which high material removal rate can be achieved. The selection of a process is depend upon various factors like- process capabilities, physical parameters, shape to be machined, properties of work-piece material to be cut, and economics of process. 1.2 Electric Discharge Machine Electrical discharge machining (EDM) is one of the most extensively used nonconventional material removal processes. In this process the material is removed by a succession of electrical discharges, which occur between the electrode and the work- piece. There is no direct contact between the electrode tool and the work-piece. These are submersed in a dielectric liquid such as kerosene or deionized water. Its unique feature of using thermal energy to machine electrically conductive parts regardless of hardness has been its distinctive advantage. The electrical discharge machining process is widely used in the aerospace, automobile, die manufacturing and moulds industries to machine hard metals and its alloy. 1.3 History Of Electric Discharge Machining In dates back to 1770, English chemist Joseph Priestly discovered the erosive effect of electrical discharges on metal. After a long time, in 1943 at the Moscow University where B.R. and N.I. Lazarenko decided to exploit the destructive effect of electrical discharges for constructive use. They developed a controlled process of machining to machine metals by vaporizing material from the surface of work-piece. Since then, EDM technology has developed rapidly and become indispensable in manufacturing applications such as die and mould making, micro-machining, prototyping, etc. In 1950s The RC (resistance–capacitance) relaxation circuit was introduced, in which provided the first consistent dependable control of pulse times and also a simple servo control circuit
  • 15. to automatically find and hold a given gap between the electrode (tool) and the work- piece. In the 1980s, CNC EDM was introduced which improved the efficiency of the machining operation. 1.4 Working Principle Of EDM The basic principle in EDM is the conversion of electrical energy into thermal energy through a series of discrete electrical discharges occurring between the electrode and work piece immersed in the dielectric fluid. The insulating effect of the dielectric is important in avoiding electrolysis of the electrodes during the EDM process. A spark is produced is at the point of smallest inter-electrode gap by a high voltage, overcoming the strength dielectric breakdown strength of the small gap between the cathode and anode at a temperature in the range of 8000 to 12,000 °C. Erosion of metal from both electrodes takes place there. Duration of each spark is very short. The entire cycle time is usually few micro-seconds (μs).The frequency of pulsating direct current supply is about 20,000– 30,000 Hz is turned off. There is a sudden reduction in the temperature which allows the circulating dielectric fluid to flush the molten material from the work-piece in the form of microscopic debris. After each discharge, the capacitor is recharged from DC source through a resistor, and the spark that follows is transferred to the next narrowest gap. The cumulative effect of a succession of sparks spread over the entire Work-piece surface leads to erosion, or machining to a shape, which is approximately complementary to that of the tool. A servo system, which compares the gap voltage with a reference value, is employed to ensure that the electrode moves at a proper rate to maintain the right spark gap, and to retract the electrode if short-circuiting occurs. The Lazarenko RC circuit does not give good material removal rate (MRR), and higher MRR is possible only by sacrificing surface finish. As indicated in Figure 1.1, the increase in voltage of capacitor should be larger than the breakdown voltage and hence great enough to create a spark between electrode and Work-piece, at region of least electrical resistance, which usually occurs at the smallest inter electrode gap.
  • 16. Figure 1.1: Relaxation circuit A servo system, which compares the gap voltage with a reference value, is employed to ensure that the electrode moves at a proper rate to maintain the right spark gap, and to retract the electrode if short-circuiting occurs. The Lazarenko RC circuit does not give good material removal rate (MRR), and higher MRR is possible only by sacrificing surface finish. As indicated in Figure 1.2, the increase in voltage of capacitor should be larger than the breakdown voltage and hence great enough to create a spark between electrode and work-piece, at region of least electrical resistance, which usually occurs at the smallest inter electrode gap. Figure 1.2: Variation of capacitor voltage with time
  • 17. This has been achieved with advent controlled pulse generator. It is typical wave forms are shown in Figure 1.3. In this, as comparison to RC circuit there is increase in pulse duration and less peak current value, shortened idle period. Figure 1.3: Pulse waveform of controlled pulse generator 1.5 Mechanism Of Material Removal The electro sparking method of metal working involves an electric erosion effect in which the breakdown of electrode material is done by electric discharge. The discharge is created by the ionization of dielectric which is spilled up of its molecules into ions and electrons. This discharge is created between two electrodes through a gaseous or liquid medium with the application of suitable voltage across the electrodes. The potential intensity of electric field between them is built up at some predetermined value individual electrons will break loose from the surface of the anode under the influence of the field force. While moving in the inter-electrode space, the electrons collide with the neutral molecules of the dielectric, detaching electrons from them and causing ionization.
  • 18. At some time or other the ionization becomes such that a narrow channel of continuous conductivity is formed. When this happens there is a continuous flow of electrons along the channel to the electrode, resulting in the momentary current impulse or discharge. The liberation of energy accompanying the discharge leads to generation of high temperature. This high temperature plasma causes fusion or particle vaporization of metal and the dielectric fluid at the point of discharge. This leads to the formation of tiny crater at the point of discharge in the work-piece. Comparatively less metal is eroded from the tool as compared to the work-piece due to following reasons: a) The momentum with which positive ions strike the cathode surface is much less than the momentum with which the electron stream impinges on the anode surface. b) A compressive force is generated on the cathode surface by spark which helps reduce tool wear. The particles removed from the electrodes due to discharge fall in liquid, cool down and contaminate the area around the electrodes by forming colloidal suspension of metal. These suspensions, along with the products of decomposition of liquid dielectric are drawn into the space between the electrodes during the initial part of discharge process and are distributed along the electric lines of force, thus forming current carrying „bridges‟. The discharge then occurs along one of these brides as result of ionization. Figure 1.4: Mechanism of material removal
  • 19. 1.6 Sinker EDM Sinker EDM sometimes is also referred to as cavity type EDM or volume EDM. It consists of an electrode and work-piece that are submerged in an insulating liquid such as oil or dielectric fluid. In it, hydrocarbon dielectrics are normally used because surface roughness is better and tool electrode wear is lower compared to de-ionized water. The electrode and work-piece are connected to a suitable power supply. The power supply generates an electrical potential between the two parts. As the electrode approaches the work-piece, dielectric breakdown occurs in the fluid forming an ionization channel, and a small spark is generated. The resulting heat and cavitations vaporize the work material, and to some extent, the electrode. These sparks strike one at a time in huge numbers at seemingly random locations between the electrode and the work- piece. As the base metal is eroded, the spark gap increases. Thus electrode is lowered automatically by the machine so that the process can continue uninterrupted. Several hundred thousand sparks occur per second in this process, with the actual duty cycle being carefully controlled by the setup parameters. These controlling cycles are sometimes known as "on time" and "off time" Figure 1.5: Schematic diagram of the Sinker EDM
  • 20. The on time setting determines the length or duration of the spark. Hence, a longer on time produces a deeper cavity for that spark and all subsequent sparks for that cycle creating a rougher finish on the work-piece. The reverse is true for a shorter on time. Off time is the period of time that one spark is replaced by another. A longer off time, allows the flushing of dielectric fluid through a nozzle to clean out the eroded debris, thereby avoiding a short circuit. These settings are maintained in micro seconds. The work-piece can be formed, either by replication of a shaped tool electrode. The numerical control monitors the gap conditions (voltage and current) and synchronously controls the different axes and the pulse generator. The dielectric liquid is filtrated to remove debris particles and decomposition products. 1.7 EDM Process Parameters 1.7.1 Polarity The Polarity normally used is normal polarity in which the tool is negative and work-piece is positive. Sometimes positive polarity can be used depending upon the requirement, where tool is positive and work-piece is negative. The negative polarity of the work-piece has an inferior surface roughness than that under positive polarity in EDM. Figure1.6: Normal Polarity and Reverse Polarity
  • 21. As the electron processes has smaller mass than anions show quicker reaction, the anode material is worn out predominantly. This effect causes minimum wear to the tool electrodes and becomes of importance under finishing operations with shorter on-times. However, while running longer discharges, the early electron process predominance changes to positron process (proportion of ion flow increases with pulse duration), resulting in high tool wear. In general, polarity is determined by experiments and is a matter of tool material, work material, current density and pulse length combinations . 1.7.2 Pulse on time Pulse on-time is the time period during which machining takes place. MRR is directly proportional to amount of energy applied during pulse on-time. The energy of spark is controlled by the peak amperage and the length of the on-time. The longer the on-time pulse is sustained, the more work-piece material will be eroded. The resulting crater will be broader and deeper than a crater produced by a shorter on-time. These large craters will create a rougher surface finish. Extended on times gives more heat to work- piece, which means the recast layer will be larger and the heat affected zone will be deeper. Hence, excessive on-times can be counter-productive. When the optimum on- time for each electrode-work material combination is exceeded, material removal rate starts to decrease. . 1.7.3 Pulse off time Pulse off-time is the time during which re-ionization of dielectric takes place. The discharge between the electrodes leads to ionization of the spark gap. Before another spark can take place, the medium must de-ionize and regain its dielectric strength. This takes some finite time and power must be switched off during this time. Too low values of pulse off time may lead to short-circuits and arcing. A large value on other hand increases the overall machining time since no machining can take place during the off- time. Each cycle has an on-time and off-time that is expressed in units of microseconds.
  • 22. 1.7.4 Peak current This is the amount of power used in discharge machining, measured in units of amperage, and is the most important machining parameter in EDM. In each on-time pulse, the current increases until it reaches a preset level, which is expressed as the peak current. Higher value of peak current leads to rough surface finish operations and wider craters on work materials. Its higher value improves MRR, but at the cost of surface finish and tool wear. Hence it is more important in EDM because the machined cavity is a replica of tool electrode and excessive wear will hamper the accuracy of machining [8]. 1.7.5 Discharge current The discharge current (Id) is a measure of the power supplied to the discharge gap. A higher current leads to a higher pulse energy and formation of deeper discharge craters. This increases the material removal rate (MRR) and the surface roughness (Ra) value. Similar effect on MRR and Ra is produced when the gap voltage (Vg) is increased. Once the current starts to flow, voltage drops and stabilizes at the working gap level. The preset voltage determines the width of the spark gap between the leading edge of the electrode and work-piece. Higher voltage settings increase the gap, which improves the flushing conditions and helps to stabilize the cut. 1.7.6 Pulse wave form For higher surface finish, higher peak current values and short spark duration is required, a controlled pulse generator is used in EDM to generate proper pulse wave form. The pulses of high energy and low frequency are used in rough machining. The pulse shape is normally rectangular, but generators with other pulse shapes have also been developed. Using a generator which can produce trapezoidal pulses succeeded in reducing relative tool wear to very low values.
  • 23. 1.7 .7 Type of Dielectric medium The fluids used as dielectric are generally hydrocarbon oils. The kerosene oil, paraffin oil, lubricating oil can be used. The deionized water gives high MRR and TWR . However, the use of deionized water may result in higher levels of material removal rate in some special situations such as when a brass electrode at negative polarity is used ; pulse durations smaller than 500 μs are employed and machining of Ti–6A1–4V with a copper electrode . It has seen that machining a steel work-piece with a negative brass electrode in deionized water and with pulse time ranging from 400 to 1500 μs resulted in improved performance (higher material removal rate and lower electrode wear) when compared to performing the same operation in a hydrocarbon oil. For a pulse time of 800 μs, material removal rate was approximately 60% higher and electrode wear 25% lower. A good dielectric fluid should have following properties: a) It should have dielectric strength (i.e. behave as insulator until the required Breakdown voltage between the electrodes is attained). b) It should take minimum possible time to breakdown, once the break down voltage is attained. c) It should able to deionized the gap immediately after the spark has occurred. d) It should serve as an effective cooling medium. e) It should have high degree of fluidity. 1.7.8 Type of flushing It is basic requirement of dielectric that it should maintain its dielectric strength (insulating properties) during its whole operation. There is no problem at the start of EDM, but after discharge the debris are produced in the gap reduce the dielectric strength, which cause unwanted discharges which can damage to both tool and work- piece. Hence effective flushing is required to remove unwanted debris from the gap [3].
  • 24. TWR and MRR are affected by the type of dielectric and the method of its flushing. In EDM, flushing can be achieved by following methods: 1.7.8.1 Suction flushing In this, dielectric may be sucked through either the work-piece or the electrode. This technique is employed to avoid any tapering effect due to sparking between machining debris and the side walls of the electrodes. Suction flushing through the tool rather than through the work-piece is more effective. 1.7.8.2 Injection flushing In this technique, dielectric is fed through either the work-piece or the tool which are predrilled to accommodate the flow. With the injection method, tapering of components arises due to the lateral discharge action occurring as a result of particles being flushed up the sides of electrodes. 1.7.8.3 Side flushing When the flushing holes cannot be drilled either in the work-piece or the tool, side flushing is employed. If there is need of flushing of entire working area, special precautions have to taken for the pumping of dielectric. 1.7.8.4 Flushing by dielectric pumping This method has been found particularly suitable in deep hole drilling. Flushing is obtained by using the electrode pulsation movement. When the electrode is raised, clean dielectric is sucked into mix with contaminated fluid, and as the electrode is lowered the particles are flushed out.
  • 25. 1.7.9 Electrode gap The servo feed system is used to control the working gap at a proper width. Mostly electro-mechanical (DC or stepper motors) and electro-hydraulic systems are used, and are normally designed to respond to average gap voltage [8]. Larger gap widths cause longer ignition delays, resulting in a higher average gap voltage. If the measured average gap voltage is higher than the servo reference voltage preset by the operator, the feed speed increases. On the contrary, the feed speed decreases or the electrode is retracted when the average gap voltage is lower than the servo reference voltage, which is the case for smaller gap widths resulting in a smaller ignition delay. Therefore short- circuits caused by debris particles and humps of discharge craters can be avoided. Also quick changes in the working surface area, when tool electrode shapes are complicated, does not result in hazardous machining. In some cases, the average ignition delay time is used in place of the average gap voltage to monitor the gap width. 1.7.10 Electrode material The shape of electrode will be basically same as that of the product is desired. The electrode materials are classified as metallic material (copper, brass, tungsten, aluminium), non-metallic material (graphite), combined metallic and non-metallic (copper-graphite), and metallic coating as insulators (copper on moulded plastic, copper on ceramic) etc. Materials having high melting-point, good electrically conductivity, low wear rate and easily machinability are usually chosen as tool materials for EDM. They should be cheap and readily shaped by conventional methods. High density graphite is used in pulsed EDM equipment, although the material does not perform satisfactorily in RC EDM work. It gives low wear due to its high melting temperature. Copper has the qualities for high stock metal removal. It is a stable material under sparking conditions. Brass as a tool material has high wear. Copper-boron and silver tungsten both exhibit extremely low wear. Sometimes copper tungsten is employed as the cathode metal. Its use yields high machining rates and very low wear. Due to its high cost and not so readily shaped, its applications are limited.
  • 26. CHAPTER 2 LITRATURE REVIEW. 2.1 INTRODUCTION A large work has been done on different aspects of EDM. This chapter covers theVLiterature on EDM machine settings and other process parameters.  A study by Bernd M. Schumacher[3], The ignition of electrical discharges in a dirty, liquide filkled gap, when applying EDM, is mostly interpted as iron action identical as found by physical research of dischrges in air (Lichtenberg figures) or in vaccum (radio tubes) as well as with investigations on the breakthrough strength of insulating hydrocarbon liquides. The state of the servo-controlled gap in real EDM, however, diffuser very much from such condition. The author stipulates ignition of electrical discharges by the evaporation of particle, removal from the electrodes, as well as gas bubbles from earlier discharges. The material removal reaction is grouped in an evaporation phase at start of ignition and later in the ejection of fused material by instantaneous boiling at the discharge spots. The gap width derives from the gap contamination avg., depending from process setting.  A study By Kuldip Oza, R.K. Garg [5], Electrical discharge machining (EDM) is one of the earliest non-traditional machining processes. EDM process is based on thermoelectric energy between the workpiece and an electrode. Material removal rate (MRR) is an important performance measure in EDM process. Since long, EDM researchers have explored a number of ways to improve and optimize the MRR including some unique experimental concepts that depart from the traditional EDM sparking phenomenon. Despite a range of different approaches, all the research work in this area shares the same objectives of achieving more efficient material removal coupled with a reduction in tool wear and improved surface quality.  A study on dry EDM by M.kunieda, B. lauwers,k.p. rajurker[6], with copper as tool electrode & steel as workshop reveal that in case of EDM in Air, the tool electrode wear ratio was much lower & MRR much higher when tool electrode
  • 27. was negative. In the case of EDM in a liquid there was more tool of electrode wear & lower MRR when the polarity of tool is negative. Hence negative polarity was found to be desirable for material transfer from the tool electrode.  A study by A Thilaivanan , P aspkan , K.N. Srinivasan, R. saravasan[7] , A suitable selection of machining parameters for the electrical discharge machining process relies heavily on the operators‟ technologies and experience because of their numerous and diverse range. Machining parameters tables provided by the machine tool builder cannot meet the operators‟ requirements, since for an arbitrary desired machining time for a particular job, they do not provide the optimal machining conditions. An approach to determine parameters setting is proposed. Based on the Taguchi parameter design method and the analysis of variance, the significant factors affecting the machining performance such as total machining time, oversize and taper for a hole machined by EDM process, are determined.  A study By Mohd Amri Lajs, H.C.D. Mohd Radzi[9] , With the increasing demand for new, hard, high strength, hardness, toughness, and temperature resistant material in engineering, the development and application of EDM has become increasingly important . EDM has been used effectively in machining hard, high strength, and temperature resistance materials. Material is removed by means of rapid and repetitive spark discharges across the gap between electrode and workpiece. Therefore, the merits of the EDM technique become mos apparent when machining metal alloy Tungsten Carbide which has the highest hardness in Reinforcement. In addition, mechanical and physical properties of tungsten carbide such as hardness toughness, high wear resistance has made it an important material for engineering components particularly in making moulds and dies. Since the EDM process does not involve mechanical energy, the removal rate is not affected by either hardness, strength or toughness of the workpiece material. Therefore, a comprehensive study of the effects of EDM parameters (peak current, machining voltage, pulse duration and interval time) on the machining characteristics such as electrode wear rate, material removal rate, surface roughness and etc., is of great significance and could be of necessity Although study of these parameters has been performed by many researchers, most of the
  • 28. studies do not much consider both engineering philosophy (DOE) and mathematical formulation (ANOVA), particularly in machining very hard materials such as Tungsten Carbide. Therefore, the Taguchi method, which is a powerful tool for parametric design of performance characteristics, is used to determine the optimal machining parameters for minimum electrode wear ratio, maximum material removal rate and minimum surface roughness in the EDM operations. The experimental details when using the Taguchi method are described.  A study by J. L. Lin, K. S. Wang, B. H. Yan, Y. S. Tarng[10], In this paper the application of the Taguchi Method with fuzzy logic for optimizing for EDM process with multiple process with multiple performance characteristics. The machining parameters are optimized with consideration of the multiple performance characteristics.
  • 29. CHAPTER 3 EXPERIMENTAL METHODOLOGY 3.1 Taguchi Method A scientific approach to plan the experiments is a necessity for efficient conduct of experiments. By the statistical design of experiments the process of planning the experiment is carried out, so that appropriate data will be collected and analyzed by statistical methods resulting in valid and objective conclusions. When the problem involves data that are subjected to experimental error, statistical methodology is the only objective approach to analysis. Thus, there are two aspects of an experimental problem: the design of the experiments and the statistical analysis of the data. These two points are closely related since the method of analysis depends directly on the design of experiments employed. The advantages of design of experiments are as follows:  Numbers of trials is significantly reduced.  Important decision variables which control and improve the performance of the product or the process can be identified.  Optimal setting of the parameters can be found out.  Qualitative estimation of parameters can be made.  Experimental error can be estimated.  Inference regarding the effect of parameters on the characteristics of the process can be made. In the present work, the Taguchi‟s method, have been used to plan the experiments and subsequent analysis of the data collected.
  • 30. 3.2 Taguchi’s Philosophy Design of experiment (doe) is a powerful statistical technique for improving product/process designs and solving production problems. A standardized version of the doe, as forwarded by Dr. Genichi Taguchi, allows one to easily learn and apply the technique product design optimization and production problem investigation. There are a number of statistical techniques available for engineering and scientific Design of experiment (doe) is a powerful statistical technique for improving product/process designs and solving production problems. A standardized version of the doe, as forwarded by Dr. Genichi Taguchi, allows one to easily learn and apply the technique product design optimization and production problem investigation. There are a number of statistical techniques available for engineering and scientific studies. Taguchi has prescribed a standardized way to utilize the Design of Experiments (DOE) technique to enhance the quality of products and processes. Taguchi‟s comprehensive system of quality engineering is one of the greatest engineering achievements of the 20th century. His methods focus on the effective application of engineering strategies rather than advanced statistical techniques. The Taguchi method was developed by Dr. Genichi Taguchi of Japan. It includes both upstream and shop-floor quality engineering. Upstream methods efficiently use small-scale experiments to reduce variability and remain cost-effective, and robust designs for large- scale production and market place. Shop-floor techniques provide cost-based, real time methods for monitoring and maintaining quality in production. The farther upstream a quality method is applied, the greater leverages it produces on the improvement, and the more it reduces the cost and time. Taguchi‟s philosophy is founded on the following three very simple and fundamental concepts:  Quality should be designed into the product and not inspected into it.  Quality is best achieved by minimizing the deviations from the target. The product or process should be so designed that it is immune to uncontrollable environmental variables.  The cost of quality should be measured as a function of deviation from the standard and the losses should be measured system-wide.
  • 31.  Taguchi proposes an “off-line” strategy for quality improvement as an alternative to an attempt to inspect quality into a product on the production line. He observes that poor quality cannot be improved by the process of inspection, screening and salvaging. No amount of inspection can put quality back into the product. Taguchi recommends a three-stage process: system design, parameter design and tolerance design In the present work Taguchi‟s parameter design approach is used to study the effect of process parameters on the various responses of the turning process. 3.3 Experimental Design Strategy Taguchi recommends orthogonal array (OA) for lying out of experiments. These OA‟s are generalized Graeco-Latin squares. To design an experiment is to select the most suitable OA and to assign the parameters and interactions of interest to the appropriate columns. The use of linear graphs and triangular tables suggested by Taguchi makes the assignment of parameters simple. The array forces all experimenters to design almost identical experiments. In the Taguchi method the results of the experiments are analysed to achieve one or more of the following objectives:  To establish the best or the optimum condition for a product or process  To estimate the contribution of individual parameters and interactions  To estimate the response under the optimum condition The optimum condition is identified by studying the main effects of each of the parameters. The main effects indicate the general trends of influence of each parameter. The knowledge of contribution of individual parameters is a key in deciding the nature of control to be established on a production process. The analysis of variance (ANOVA) is the statistical treatment most commonly applied to the results of the experiments in determining the percent contribution of each parameter against a stated level of confidence. Study of ANOVA table for a given analysis helps to determine which of the parameters need control.
  • 32. Taguchi suggests two different routes to carry out the complete analysis. First, the standard approach, where the results of a single run or the average of repetitive runs are processed through main effect and ANOVA analysis. The second approach which Taguchi strongly recommends for multiple runs is to use signal- to- noise ratio (S/N) for the same steps in the analysis. The S/N ratio is a concurrent quality metric linked to the loss function. By maximizing the S/N ratio, the loss associated can be minimized. The S/N ratio determines the most robust set of operating conditions from variation within the results. The S/N ratio is treated as a response of the experiment. Taguchi recommends the use of outer OA to force the noise variation into the experiment i.e. the noise is intentionally introduced into experiment. However, processes are often times subject to many noise factors that in combination, strongly influence the variation of the response. For extremely „noisy‟ systems, it is not generally necessary to identify specific noise factors and to deliberately control them during experimentation. It is sufficient to generate repetitions at each experimental condition of the controllable parameters and analyse them using an appropriate S/N ratio. In the present investigation, S/N data analysis has been performed. The effects of the selected turning process parameters on the selected quality characteristics have been investigated through the plots of the main effects. The optimum condition for each of the quality characteristics has been established through S/N data analysis. 3.4 Taguchi method categories 3.4.1 Static Problems Generally, a process to be optimized has several control factors which directly decide the target or desired value of the output. The optimization then involves determining the best control factor levels so that the output is at the target value. Such a problem is called as a "STATIC PROBLEM". This is best explained using a P-Diagram which is shown in figure 4.5 below ("P" stands for Process or Product). Noise is shown to be present in the process but should have no
  • 33. effect on the output! This is the primary aim of the Taguchi experiments - to minimize variations in output even though noise is present in the process. The process is then said to have become ROBUST. 3.4.1.1. Signal to noise Ratio Once the experimental design has been determined and the trials have been carried out, the measured performance characteristic from each trial can be used to analyse the relative effect of the different parameters. The product/process/system design phase involves deciding the best values/levels for the control factors. The signal to noise (S/N) ratio is an ideal metric for that purpose. Figure 3.1 : P-diagram for static problem The loss-function discussed above is an effective figure of merit for making engineering design decisions. However, to establish an appropriate loss-function with its k value to use as a figure of merit is not always cost-effective and easy. Recognizing the Dilemma, Taguchi created a transform function for the loss-function which is named as signal -to- noise (S/N) ratio. The S/N ratio, as stated earlier, is a concurrent statistic. A concurrent statistic is able to look at two characteristics of a distribution and roll these characteristics into a single number or figure of merit. The S/N ratio combines both the parameters (the mean level of the quality characteristic and variance around this mean) into a single metric.
  • 34. A high value of S/N implies that signal is much higher than the random effects of noise factors. Process operation consistent with highest S/N always yields optimum quality with minimum variation. The S/N ratio consolidates several repetitions into one value. The equation for calculating S/N ratios for “smaller is better” (LB),”larger is better” (HB) and “nominal is best” (NB) types of characteristics are as follows: 1. Larger is better: (S/N)HB= -10 log (MSDHB) Where, MSDHB= n 1 ( yyyy n 22 3 2 2 2 1 1 .... 111  ), n = no. of repetitions, y= observed value. This is usually chosen S/N Ratio for most desirable characteristics like “MRR” etc. 2. Smaller is better: (S/N) LB= -10 log (MSDLB) Where, MSDLB= )...( 1 22 3 2 2 2 1 yyyy nn  This is usually chosen S/N ratio for all undesirable characteristics like “TWR”, ROC” etc. 3. Nominal is best (S/N)NB=10log [ Variance anSquareofme ]
  • 35. This case arises when a specified value is MOST desired, meaning that neither a smaller nor a larger value is desirable. Examples are: (I) Most parts in mechanical fittings have dimensions which are nominal-the-best type. (ii) Ratios of chemicals or mixtures are nominally the best type. (iii) Thickness should be uniform in deposition /growth /plating /etching. The expressions for MSD are different for different quality characteristics. For the „nominal is best‟ characteristic, the standard definition of MSD is used. For the other two characteristics the definition is slightly modified. For „smaller is better‟, the unstarted target value is zero. For „larger is better‟, the inverse of each large value becomes a small value and again, the unstarted target value is zero. Thus for all three expressions, the smallest magnitude of MSD is being sought. 3.5 Taguchi Design Step STEP-1: Selection of process parameters and identification of responses, STEP-2: Assignment of levels to the process parameters, STEP-3: Selection of proper O.A and assignment of process parameters to the O.A, STEP-4: Experiment is to be conducted based on orthogonal array, STEP-5: Calculation of loss function and the S/N ratio STEP-6: Calculation of mean S/N ratio and analyze the results, STEP-7: Analysis of variance (ANOVA), STEP-8: Selection of optimal combination of process parameters, STEP-9: Verification test of optimal process parameter
  • 36. 3.6 Data Analysis A number of methods have been suggested by Taguchi for analyzing the data: observation method, ranking method, column effect method, ANOVA, S/N ANOVA, plot of average response curves, interaction graphs etc. However, in the present investigation the following methods have been used:  ANOVA for S/N data  S/N response graphs  Interaction graphs  Residual graphs The plot of average responses at each level of a parameter indicates the trend. It is a pictorial representation of the effect of parameter on the response. The change in the response characteristic with the change in levels of a parameter can easily be visualized from these curves. Typically, ANOVA for OA‟s are conducted in the same manner as other structured experiments The S/N ratio is treated as a response of the experiment, which is a measure of the variation within a trial when noise factors are present. A standard ANOVA can be conducted on S/N ratio which will identify the significant parameters (mean and variation). Interaction graphs are used to select the best combination of interactive parameters. Residual plots are used to check the accuracy. 3.7 Advantages and disadvantages of Taguchi An advantage of the Taguchi method is that it emphasizes a mean performance characteristic value close to the target value rather than a value within certain specification limits, thus improving the product quality. Additionally, Taguchi's method for experimental design is straightforward and easy to apply to many engineering situations, making it a
  • 37. powerful yet simple tool. It can be used to quickly narrow down the scope of a research project or to identify problems in a manufacturing process from data already in existence. Also, the Taguchi method allows for the analysis of many different parameters without a prohibitively high amount of experimentation. In this way, it allows for the identification of key parameters that have the most effect on the performance characteristic value so that further experimentation on these parameters can be performed and the parameters that have little effect can be ignored. The main disadvantage of the Taguchi method is that the results obtained are only relative and do not exactly indicate what parameter has the highest effect on the performance characteristic value. The Taguchi method has been criticized in the literature for difficulty in accounting for interactions between parameters.
  • 38. CHAPTER 4 PILOT EXPERIMENT 4.1 PILOT EXPERIMENTATION The effect of various input parameters i.e. pulse on, pulse off, current, electrode, and work-piece were investigated through the pilot experimentation. One response was selected for pilot experimentation namely material removal rate (MRR). The assignment of factors was carried out using statistical software MINITAB. All the factors were varied at three levels. The degrees of freedom required for the experiment was calculated, thus the orthogonal array that can be used should have degrees of freedom (dof) greater than 11. L27 which can accommodate 3-level factors was used for conduct of experiments to measures one response values namely, MRR. After the conduct of the 27 trials the mean values for MRR is tabulated in Table. For the analysis of the result, Analysis by S/N ratio performed and main effect plot for S/N ratio was obtained. 4.2 L27 Orthogonal Array along with results for EDM process during pilot experimentation Table 4.1 : L27 Result table for pilot experiment Trial No. Current (Amp) Ton (µs) Toff (µs) Tool WP MRR (mm3 /min) 1 3 2 8 Brass MS 0.0765 2 3 2 8 Brass D2 0.3636 3 3 2 8 Brass E31 0.0750 4 3 5 5 Copper MS 0.4591 5 3 5 5 Copper D2 0.4675 6 3 5 5 Copper E31 0.3250 7 3 8 2 W MS 0.5102
  • 39. 8 3 8 2 W D2 0.0779 9 3 8 2 W E31 0.0250 10 12 2 5 W MS 0.3316 11 12 2 5 W D2 0.7272 12 12 2 5 W E31 0.4750 13 12 5 2 Brass MS 0.5103 14 12 5 2 Brass D2 2.9090 15 12 5 2 Brass E31 0.3000 16 12 8 8 Copper MS 3.2398 17 12 8 8 Copper D2 2.4415 18 12 8 8 Copper E31 0.2500 19 20 2 2 Copper MS 0.6887 20 20 2 2 Copper D2 0.5714 21 20 2 2 Copper E31 2.3750 22 20 5 8 W MS 2.5765 23 20 5 8 W D2 2.5714 24 20 5 8 W E31 0.5500 25 20 8 5 Brass MS 1.6326 26 20 8 5 Brass D2 8.0519 27 20 8 5 Brass E31 4.5000 The relationship of MRR with current, pulse on time and pulse off time during the machining using copper ,brass and graphite electrode in dielectric is shown in the Figure 4.1. It was observed that at low current, MRR is low but increases sharply with increased current. The current was observed to be most significant factor affecting MRR. The MRR increased with increase in the pulse on time and initially increased & then after decreased with increase in pulse off time. The work-piece material had significant effect on MRR. and the electrode material had insignificant effect on MRR.
  • 40. Graph 4.1: Main effect plot for SN ratio Table 4.2: Response Table For SN ratio 20123 5 0 -5 -10 -15 852 852 WCuBrass 5 0 -5 -10 -15 En31D2MS current MeanofSNratios Ton Toff Tool WP Main Effects Plot for SN ratios Data Means Signal-to-noise: Larger is better Level Current Ton Toff Tool WP 1 -15.1997 -8.1135 -7.5188 -2.7999 -3.4351 2 -2.2139 -2.1026 -0.7233 -1.9771 -0.2024 3 5.1204 -2.0771 -4.0511 -7.5161 -8.6536 Rank 1 4 3 5 2
  • 41. CHAPTER 5 EXPERIMENTAL DESIGN 5.1 Introduction The full factorial design is referred as the technique of defining and investigating all possible conditions in an experiment involving multiple factors while the fractional factorial design investigates only a fraction of all the combinations. Although these approaches are widely used, they have certain limitations: they are inefficient in time and cost when the number of the variables is large; they require strict mathematical treatment in the design of the experiment and in the analysis of results; the same experiment may have different designs thus produce different results; further, determination of contribution of each factors is normally not permitted in this kind of design. The Taguchi method has been proposed to overcome these limitations by simplifying and standardizing the fractional factorial design. The methodology involves identification of controllable and uncontrollable parameters and the establishment of a series of experiments to find out the optimum combination of the parameters which has greatest influence on the performance and the least variation from the target of the design. The effect of various parameters (work-piece material, electrode, dielectric, pulse on time, pulse off time current and powder) and some of the effects of interactions between the main factors were also be studied using parameterization approach developed by Taguchi. 5.2 Procedure of experimental design The whole procedure of Taguchi method is as under. 1. Establishment of objective functions. 2. Selection of factors and/or interactions to be evaluated. 3. Identifications of uncontrollable factors and test conditions. 4. Selection of number of levels for the controllable and uncontrollable factors.
  • 42. 5. Calculation total degree of freedom needed 6. Select the appropriate Orthogonal Array (OA). 7. Assignment of factors and/or interactions to columns. 8. Execution of experiments according to trial conditions in the array. 9. Analyze results. 10. Confirmation experiments 5.3 Establishment of objective function The objective of the study is to evaluate the main effects of work-piece material, electrode, pulse off, pulse on time, current and on the MRR. o studied. 5.4 Degree of freedom (dof) The number of factors and their interactions and level for factors determine the total degree of freedom required for the entire experiment. The degree of freedom for each factor is given by the number of levels minus one. dof for each factor : k-1=3-1=2 where k is the number of level for each factor Total Dof of experiment = No of trials – 1 = 27 – 1 = 26 5.5 Selection of Factors The determination of which factors to investigate depends on the responses of interest. The factors affects the responses were identified using cause and effect analysis, brainstorming and pilot experimentation. The lists of factors studied with their levels are shown in the Table 5.1.
  • 43. Table 5.1 : Factors and their Levels FACTORS LEVELS LEVEL 1 LEVEL 2 LEVEL 3 Current (amp) 3 12 20 Pulse On Time 3 5 8 Pulse Off Time 9 5 3 Tool Material Copper Brass Graphite WP Material M.S. EN31 D2 5.6 Orthogonal array OA plays a critical part in achieving the high efficiency of the Taguchi method. OA is derived from factorial design of experiment by a series of very sophisticated mathematical algorithms including combinatorics, finite fields, geometry and error correcting codes. The algorithms ensure that the OA to be constructed in a statistically independent manner that each level has an equal number of occurrences within each column; and for each level within one column, each level within any other column will occur an equal number of times as well. Then, the columns are called orthogonal to each other. OA‟s are available with a variety of factors and levels in the Taguchi method. Since each column is orthogonal to the others, if the results associated with one level of a specific factor are much different at another level, it is because changing that factor from one level to the next has strong impact on the quality characteristic being measured. Since the levels of the other factors are occurring an equal number of times for each level of the strong factor, any effect by these other factors will be ruled out. The Taguchi method apparently has the following strengths: 1. Consistency in experimental design and analysis. 2. Reduction of time and cost of experiments. 3. Robustness of performance without removing the noise factors.
  • 44. The selection of orthogonal array depends on: 1. The number of factors and interactions of interest 2. The number of levels for the factors of interest Taguchi‟s orthogonal arrays are experimental designs that usually require only a fraction of the full factorial combinations. The arrays are designed to handle as many factors as possible in a certain number of runs compared to those dictated by full factorial design. The columns of the arrays are balanced and orthogonal. This means that in each pair of columns, all factor combinations occur same number of times. Orthogonal designs allow estimating the effect of each factor on the response independently of all other factors. Once the degrees of freedom are known, the next step, selecting the orthogonal array (OA) is easy. The number of treatment conditions is equal to the number of rows in the orthogonal array and it must be equal to or greater than the degrees of freedom. The interactions to be evaluated will require an even larger orthogonal array. Once the appropriate orthogonal array has been selected, the factors and interactions can be assigned to the various columns. Table 5.2 : L27 Orthogonal Array Trial No. Current (amp) Ton (µs) Toff (µs) Tool Mtr. WP Mtr. 1 3 3 9 Copper MS 2 3 3 9 Copper D2 3 3 3 9 Copper EN31 4 3 5 5 Brass MS 5 3 5 5 Brass D2 6 3 5 5 Brass EN31 7 3 8 3 Gr. MS 8 3 8 3 Gr. D2
  • 45. 9 3 8 3 Gr. EN31 10 12 3 5 Gr. MS 11 12 3 5 Gr. D2 12 12 3 5 Gr. EN31 13 12 5 3 Copper MS 14 12 5 3 Copper D2 15 12 5 3 Copper EN31 16 12 8 9 Brass MS 17 12 8 9 Brass D2 18 12 8 9 Brass EN31 19 20 3 3 Brass MS 20 20 3 3 Brass D2 21 20 3 3 Brass EN31 22 20 5 9 Gr. MS 23 20 5 9 Gr. D2 24 20 5 9 Gr. EN31 25 20 8 5 Copper MS 26 20 8 5 Copper D2 27 20 8 5 Copper EN31 5.7 Experimental set up The experiments have been conducted on the Electrical Discharge Machine S25 Of Sparkonix Ltd. available at Vishwakarma Government engineering college., in Machine Tool lab. A large number of input parameters which can be varied in the EDM process, i.e. pulse on, pulse off, polarity, peak current, electrode gap and type of flushing, each having its own effect on the output parameters such as tool wear rate, material removal rate, surface finish and hardness of machined surface. Current, pulse on and pulse off are the parameters which were varied on the machine for experimentation. The ranges of these parameters for the experimental work have been selected on the basis of
  • 46. results of pilot experiments. The input parameters have been fixed for during the whole experimentation, as given in the Table 5.3. Table 5.3 : Constant Input Parameter Sr No. Parameter Value 1 Machining Time 20 min. 2 Die-electric Fluid HC 3 Polarity Straight Figure 5.1 SPARKONIX S25 SERIES Courtesy “EDM Lab”
  • 47. Figure 5.2 EDM Work table Courtesy “EDM Lab” 5.8 Analyses of results Signal-to-noise ratio The parameters that influence the output can be categorized into two classes, namely controllable (or design) factors and uncontrollable (or noise) factors. Controllable factors are those factors whose values can be set and easily adjusted by the designer.
  • 48. Uncontrollable factors are the sources of variation often associated with operational environment. The best settings of control factors as they influence the output parameters are determined through experiments. From the analysis point of view, there are three possible categories of the response characteristics explained below. 𝑦2 𝑟 𝑖=1 𝑖 = 𝑠𝑢𝑚𝑎𝑡𝑖𝑜𝑛 𝑜𝑓𝑎𝑙𝑙 𝑟𝑒𝑠𝑝𝑜𝑛𝑐𝑒 𝑣𝑎𝑙𝑢𝑒 𝑜𝑓𝑒𝑎𝑐𝑕 𝑡𝑟𝑖𝑎𝑙 MSD = Mean square deviation yi= Observed value of the response characteristic y0= nominal or target value of the results Signal to noise ratio for response characteristics The parameters that influence the output can be categorized in two categories, controllable factors and uncontrollable factors. The control factors that may contribute to reduced variation can be quickly identified by looking at the amount of variation present in response. The uncontrollable factors are the sources of variation often associated with operational environment. For this experimental work, response characteristics have given in the Table 5.4. Table 5.4 : Response Characteristics Response Name Response Type Unit Material Removal Rare Higher is Better mm3 / min Tool Wear Rate Lower is Better mm3 / min Micro Hardness Higher is Better HVN Surface Roughness Lower is Better Microns
  • 49. Measurement of F-value of Fisher’s F ratio The principle of the F test is that the larger the F value for a particular parameter, the greater the effect on the performance characteristic due to the change in that process parameter. F value is defined as: F = 𝑀𝑆 𝑓𝑜𝑟 𝑎 𝑡𝑒𝑟𝑚 𝑀𝑆 𝑓𝑜𝑟 𝑡𝑕𝑒 𝑒𝑟𝑟𝑜𝑟 𝑡𝑒𝑟𝑚 Computation of average performance: Average performance of a factor at certain level is the influence of the factor at this level on the mean response of the experiments. Analysis of variance The knowledge of the contribution of individual factors is critically important for the control of the final response. The analysis of variance (ANOVA) is a common statistical technique to determine the percent contribution of each factor for results of the experiment. It calculates parameters known as sum of squares (SS), pure SS, degree of freedom (DOF), variance, F-ratio and percentage of each factor. Since the procedure of ANOVA is a very complicated and employs a considerable of statistical formulae, only a brief description of is given as following. The Sum of Squares (SS) is a measure of the deviation of the experimental data from the mean value of the data. Let „A‟ be a factor under investigation 𝑆𝑆 𝑇 = (𝑦𝑖 − 𝑇)2 𝑁 𝑖=1 Where N = Number of response observations, T is the mean of all observations i y is the i response Factor Sum of Squares ( A SS ) - Squared deviations of factor (A) averages
  • 50. 𝑆𝑆 𝑇 = (𝑦𝑖 − 𝑇)2 𝑁 𝑖=1 − 𝑇2 𝑁 Where Average of all observations under Ai level = Ai / nAi T = sum of all observations T =Average of all observations = T / N Number of observations nAi = under Ai level Error Sum of Squares ( e SS ) - Squared deviations of observations from factor (A) Averages 𝑆𝑆𝑒 = (𝑦𝑖− 𝐴𝑗) 2 𝑛 𝐴𝑖 𝑖=1 𝐾 𝑎 𝑗=1 5.9 Material Composition for work-piece & electrode material Three work-piece materials Mild Steel, D2 and EN31 and three electrode materials Graphite, Copper and Brass were used. Before the start of experimentation, The percentage composition of the work-piece and electrode material is provided in Table 5.5. Table 5.5 Work-Piece Material Composition Work piece % Composition Fe C Si Mn P S Cr Mo Ni Co Cu V T W MS 96.00 2.0 0.6 1.65 - - - - - - 0.6 - - - D2 83.5 1.70 0.30 0.30 0.03 0.03 12.3 0.60 - - 0.05 0.10 - 0.50 EN31 92.3 0.3 1.0 0.4 0.04 - 5.0 - - - - - 1.0 -
  • 51. Table 5.6 Electrode Material Composition Figure 5.3 Work Piece (EN31) After machining Electrode % Composition W Cu Ni Z Ti Lead Copper - 99.78 0.121 0.047 0.014 0.026 Brass - 67.00 - 33.00 - - Graphite High Carbon Content (95-99%)
  • 52. Figure 5.4 Work Piece (D2) After machining Figure 5.5 Work Piece (MS) After machining
  • 53. Figure 5.6 Tool (Copper) Figure 5.7 Tool (Graphite)
  • 54. Figure 5.8 Tool (Brass)
  • 55. CHAPTER 6 RESULT AND ANALYSIS OF MRR 6.1 Introduction The effects of parameters i.e. work-piece, dielectric, electrode, pulse on time, pulse off time, current, were evaluated using ANOVA & S/N ratio, General linear Model and S/N ratio. A confidence interval of 95% has been used for the analysis. Two runs for each of 27 trails were completed to measure the Signal to Noise ratio(S/N Ratio). 6.2 Results For MRR The results for MRR for each of the 27 treatment conditions with repetition are given in Table. MRR of each sample is calculated from weight difference of work-piece before and after the performance trial, which is given by: 𝑀𝑅𝑅 = 𝑤𝑒𝑖𝑔𝑕𝑡 𝑑𝑖𝑓𝑓𝑒𝑟𝑒𝑛𝑐𝑒 𝜌 × 𝑡𝑖𝑚𝑒 × 1000 𝑚𝑚3 /𝑚𝑖𝑛
  • 56. Table 6.1 Result Table For Final Experiment SR No Current Ton Toff Tool Mtr. WP Mtr. MRR Mean MRR S/N RatioI II 1 3 3 9 Copper MS 0.0682 0.0695 0.068878 -23.238446 2 3 3 9 Copper D2 0.0649 0.0675 0.066234 -23.578411 3 3 3 9 Copper EN31 0.0164 0.0079 0.012171 -38.293437 4 3 5 5 Brass MS 0.3444 0.3176 0.330995 -9.603574 5 3 5 5 Brass D2 0.2006 0.1273 0.163961 -15.705187 6 3 5 5 Brass EN31 0.1862 0.1816 0.183882 -14.709236 7 3 8 3 Gr. MS 0.4994 0.8584 0.67889 -3.3640079 8 3 8 3 Gr. D2 0.4643 0.4571 0.460714 -6.7313664 9 3 8 3 Gr. EN31 0.3737 0.2493 0.311513 -10.130472 10 12 3 5 Gr. MS 1.0925 0.9152 1.003827 0.03317339 11 12 3 5 Gr. D2 1.9422 2.0539 1.998052 6.01213551 12 12 3 5 Gr. EN31 2.2658 1.8072 2.036513 6.17774441 13 12 5 3 Copper MS 6.8265 6.6282 6.72736 16.556893 14 12 5 3 Copper D2 4.8097 4.2760 4.542857 13.1465816 15 12 5 3 Copper EN31 6.9243 8.5908 7.757566 17.7945093 16 12 8 9 Brass MS 1.7978 2.7596 2.278699 7.15373916 17 12 8 9 Brass D2 2.5558 2.1864 2.371104 7.49901168 18 12 8 9 Brass EN31 2.3461 3.0414 2.69375 8.60714575 19 20 3 3 Brass MS 0.8846 0.2526 0.568559 -4.9044942 20 20 3 3 Brass D2 0.5110 0.8169 0.663961 -3.5571481 21 20 3 3 Brass EN31 0.5559 0.7993 0.677632 -3.3801273 22 20 5 9 Gr. MS 2.5593 1.9707 2.264987 7.10131521 23 20 5 9 Gr. D2 5.7961 5.1506 5.473377 14.7651067 24 20 5 9 Gr. EN31 3.7441 2.2882 3.016118 9.58896778 25 20 8 5 Copper MS 20.4069 21.7806 21.09375 26.4830759 26 20 8 5 Copper D2 15.9851 14.4773 15.23117 23.6546646 27 20 8 5 Copper EN31 12.3783 11.2211 11.79967 21.437398
  • 57. 6.3 Result OF S/N ratio Of MRR The S/N ratio consolidates several repetitions into one value and is an indication of the amount of variation present. The S/N ratios have been calculated to identify the major contributing factors that cause variation in the MRR. S/N ratio has been calculated for each reading using MINITAB. MRR is “Higher is better” type response which is given by: (S/N)HB = -10 log (MSDHB) Where MSDHB = 1 𝑟 1 𝑦 𝑗 2 𝑟 𝑗 =1 MSDHB = Mean Square Deviation for higher-the-better response. Table 6.2 : Response Table for SN ratio Level Current Ton Toff Tool WP 1 -16.1505 -9.4143 1.7145 3.7736 1.8020 2 9.2201 -4.3262 4.8645 3.1778 1.7228 3 10.1321 8.2899 -3.3772 2.6058 -0.3231 Rank 1 2 3 4 5
  • 58. Graph 6.1 : Main Effects Plot for Means Table 6.3 : Analysis of variance Source DF Seq SS Adj SS Adj MS F P Current 2 4005.81 4005.81 2002.90 129.23 0.000 Ton 2 1556.86 1553.86 776.93 50.13 0.000 Toff 2 311.32 311.32 155.66 10.04 0.001 Tool Material 2 249.41 249.41 124.70 8.05 0.004 WP 2 26.12 26.12 13.06 0.84 0.449 Error 16 247.97 247.97 15.50 Total 26 6394.49 20123 8 6 4 2 0 853 953 GraphiteBrassCopper 8 6 4 2 0 EN31D2MS Current MeanofMeans Ton Toff Tool Material WP Main Effects Plot for Means Data Means
  • 59. Graph 6.2 Main Effects Plot for SN ratios Table 6.2 shows Response table for S/N ratio of MRR at 95% confidence interval. Current was observed to be the most significant factor affecting the MRR, followed by pulse on time, pulse off time, tool material and work piece material. Graph 6.1 shows Main Effects for Means for MRR and Graph 6.2 shows Main Effects Plot for SN ratios for MRR. Both the graphs gives same results for optimum conditions. 6.4 Confirmation Test Once the optimum level of process parameter has been selected final step is to predict and verify the improvement of the performance characteristics using the optimal level of process parameters. As a general rule optimum performance can be calculated by using following expression. 20123 0 -6 -12 -18 -24 853 953 GraphiteBrassCopper 0 -6 -12 -18 -24 EN31D2MS Current MeanofSNratios Ton Toff Tool Material WP Main Effects Plot for SN ratios Data Means Signal-to-noise: Larger is better
  • 60. T = Grand total of all results N = Total No of results Yopt = Performance at optimum conditions. Table 6.4 Confirmation Test Reading Current Pulse On time Pulse off Time Machining Time MRR 20 8 5 20min 20.4196 𝑌 𝑜𝑝𝑡 = 𝑇 𝑁 + 𝐴3 − 𝑇 𝑁 + 𝐵3 − 𝑇 𝑁 + 𝐶 2 − 𝑇 𝑁 + 𝐷1 − 𝑇 𝑁 + 𝐸1 − 𝑇 𝑁 = 3.49912 + (6.75432-3.49912) + (6.324362-3.49912) + (5.982424-3.49912) + (7.47773-3.49912) + (3.89066 – 3.49912) Yopt = 16.4334 % error = 𝑌 𝑎𝑐𝑡 .− 𝑌 𝑡 𝑕. 𝑌 𝑡 𝑕 = 20.4186−16.4334 16.4334 x 100 = 24.25 %
  • 61. CHAPTER 7 RESULT CONCLUSION AND RECOMMNDATION 7.1 Optimal Design For MRR In this experimental analysis, the main effect plot in Figure used to estimate the mean MRR. In S/N ratio highest MRR was observed when work-piece material MS was machined with copper tool at pulse on time 8μs, pulse off time 5 μs & current 20Amp. It is observed that current at 20Amp has optimal value for higher MRR because it decreases variation .The results of ANOVA for S/N ratios of MRR ( table no 7.1) indicates that for α = 0.5 value current, Ton ,Toff & are most significant machining parameters while work piece material is insignificant parameter affecting MRR . Table : 7.1 Optimum Condition Factors Value Current 20 Amp. Pulse On Time 8 µs Pulse Off Time 5 µs Tool Mtr. Copper Work-Piece Mtr. M.S. 7.2 Recommendations for future work In this experiment effect of process parameters on performance of MRR was analyzed. Further the effect of process parameters on performance measure of other performance parameter for example TWR and surface roughness can be carried out . Only three work-piece materials, namely D2, MS and EN31 had been used. Other materials such as titanium, H11, OHNS die steel and tungsten hot work die steel can be machined.
  • 62. flexible modeling tools like Artificial Neural Network, Genetic Algorithms, and Fuzzy logic which are highly efficient in mapping between input variables and output variables. By using this models and the data obtained from the experiment a process model to obtain optimum condition .
  • 63. APPENDIX-A TECHNICAL SPECIFICATION OF EDM MACHINE The experiment been conducted on Electric discharge machine model S-25 , Sparkonix machines Ltd. pune. Technical Data for machines as under : 1. Electrical Data Supply Voltage 415V 3Phase 50Hz. Max Machine Current 25Amp. Current Range 3 range of 6amp each Single range of 3 amp 2 range of 2amp each 2. Machine specification Work Tank 600 x 400 x 275 mm Work Table 400x 300 mm X- Travel 200 mm Y- Travel 150 mm Z- Travel 200 mm
  • 64. APPENDIX- B SPECIFICATION OF MEASURING INSTRUMENT 1. Weighing Machine Company : SHIMADZU CORPORATION (Japan) Type : AX 200 M/C No. : D432612833 Capacity : 200 gm. Readability : 0.1 mg.
  • 65. APPENDIX- C TECHNICAL SPECIFICATION OF DIE-ELECTRISC MEDIUM  Die-electric Fluid – Hydro-Carbon Oil Specific Gravity (at 15 C) 0.797 Kinematic Viscosity (at 40 C) 1.8 Flash Point ( C) 75 Boiling Point ( C) 200-250
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