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MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
INTRODUCTION 
Electromyogram (EMG) is the record of the electrical excitation of the skeletal muscles which is 
initiated and regulated by the central and peripheral nervous system. EMGs have non-stationary 
properties. Electromyography is the discipline that deals with the detection, analysis, and use of the 
electrical signal that emanates from contracting muscles. This signal is referred to as the 
electromyographic (EMG) signal, a term that was more appropriate in the past than in the present. In 
days past, the only way to capture the signal for subsequent study was to obtain a ‘‘graphic’’ 
representation. Today, of course, it is possible to store the signal on magnetic tape, disks, and 
electronics components. Even more means will become available in the near future. This evolution has 
made the graphics aspect of the nomenclature a limited descriptor. Although a growing number of 
practitioners choose to use the term ‘‘myoelectric (ME) signal’’, the term ‘‘EMG’’ still commands 
dominant usage, especially in clinical environments. Here the signal begins with a low amplitude, 
which when expanded reveals the individual action potentials associated with the contractile activity 
of individual (or a small group) of muscle fibers. As the force output of the muscle contraction 
increases, more muscle fivers are activated and the firing rate of the fibers increases. Correspondingly, 
the amplitude of the signal increases taking on the appearance and characteristics of a Gaussian 
distributed variable. 
The novice in this field may well ask, why study electromyography? Why bother understanding the 
EMG signal? There are many and varied reasons for doing so. Even a superficial acquaintance with 
the scientific literature will uncover various current applications in fields such as neurophysiology, 
kinesiology, motor control, psychology, rehabilitation medicine, and biomedical engineering. 
Although the state of the art provides a sound and rich complement of applications, it is the potential 
of future applications that generates genuine enthusiasm. 
EI DEPARTMENT, SRMGPC, LUCKNOW 1
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
LITERATURE REVIEW 
Movement and position of the limbs are controlled by the electrical signals travelling forward and 
backward between Muscle fibers, Peripheral and Central Nervous System [1], [2]. Conscientious 
Registration and interpretation of these muscle electrical potential is called as Electromyogram (EMG). 
Due to the emanation of Pathological condition in motor system, whether in spinal cord, the motor 
neuron, the muscle or the neuromuscular junction the characters of electrical potentials generated 
during the contraction and relaxation of muscles changes [4]. Careful registration and study of 
electrical signals in muscles thus can be valuable aid in discovering and diagnosis abnormalities not 
only in muscles but also in the motor system as a whole [3] [5]. EMG classification is one of the most 
difficult pattern recognition problems because there usually exists small but numerous variations in 
EMG features, which leads to difficulty in analyzing EMG signals. 
In general, the methods of feature selection can be divided into two types: the measure of classification 
accuracy and the valuation using statistical criterion. After that the selection of the best features based 
on the proposed statistical criterion method is investigated. For this purpose, we evaluate different 
kinds of features that have been widely used in EMG diseases recognition. The results of this 
evaluation and the proposed statistic method can be widely used in EMG applications such as control 
of EMG robots and prostheses or the EMG diagnosis of nerve and muscle diseases[6],[7],[8]. 
EMG signals have been targeted as control for flight systems. 
1. The Human Senses Group at the NASA Research Center at Moffett Field, CA seeks to advance man 
machine interfaces by directly connecting a person to a computer. 
2. An EMG signal is used to substitute for mechanical joysticks and keyboards. 
3. EMG has also been used in research towards a "wearable cockpit," which employs EMG-based 
gestures to manipulate switches and control sticks necessary for flight in conjunction with a goggle 
based display. 
(A) (B) 
FIG 1: (A) CONTROL OF AIR PLANE BY EMG (B) MONITORING OF AIRPLANE ON PC 
EI DEPARTMENT, SRMGPC, LUCKNOW 2
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
HISTORICAL PERSPECTIVE 
Electromyography had its earliest roots in the custom practiced by the Greeks of using electric eels to 
‘‘shock’’ ailments out of the body. The origin of the shock that accompanied this earliest detection and 
application of the EMG signal was not appreciated until 1666 when an Italian, Francesco Redi, realized 
that it originated from muscle tissue (1). This relationship was later proved by Luigi Galvani (2) in 
1791 who staunchly defended the notion. During the ensuing six decades, a few investigators dabbled 
with this newly discovered phenomenon, but it remained for DuBois Raymond (3) in 1849 to prove 
that the EMG signal could be detected from human muscle during a voluntary contraction. 
In the mid-1940s to the mid-1950s several investigations revealed a mono- tonic relationship between 
the amplitude of the EMG signal and the force and velocity of a muscle contraction. 
In the early 1960s, another dramatic evolution occurred in the field: myoelectric control of externally 
powered prostheses. During this period, engineers from several countries developed externally 
powered upper limb pros- theses that were made possible by the miniaturization of electronics 
components and the development of lighter, more compact batteries that could be carried by amputees. 
The late 1970s and early 1980s saw the use of sophisticated computer algorithms and communication 
theory to decompose the EMG signal into the individual electrical activities of the muscle fibers (10– 
12). Today, the decomposition approach promises to revolutionize clinical electromyography and to 
provide a powerful tool for investigating the detailed control schemes used by the nervous system to 
produce muscle contractions. 
The 1990s saw the effective application of modern signal processing techniques for the analysis and 
use of the EMG signal. Some examples are the use of time and frequency analysis of the surface EMG 
signal for measuring the relative contribution of low back muscles during the presence and absence of 
low back pain (16) 
The electromyogram (EMG) signal is an electrical voltage generated by the neural activity 
commanding muscle activity. Surface electrodes pick up this neural activity by making electrical 
contact through the skin. Muscle tension results in higher energy in the bio signal, in the millivolt range 
and having a frequency range from DC to 2 kHz. The EMG signal has been compared in its richness 
to audio, making audio signal processing and pattern recognition techniques potentially relevant in 
analyzing the bio signal. However EMG is ultimately not a continuous signal, but the sum of discrete 
neuron impulses. This results in an aperiodic, stochastic signal that poses challenges to audio-based 
signal and information processing. 
EI DEPARTMENT, SRMGPC, LUCKNOW 3
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
DESCRIPTION OF THE EMG SIGNAL 
FIG 2: RELATIONSHIP AMONG THE VARIOUS FACTORS THAT AFFECT THE EMG SIGNAL. 
FIG 3: BLOCK DIAGRAM OF EMG SYSTEM 
EI DEPARTMENT, SRMGPC, LUCKNOW 4
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
AN EXPERIMENT 
OBJECT—Microprocessor Based Control of Electromechanical Devices by Using 
Electromyogram: A “Cricket Car” Model 
EXPERIMENT OBJECTIVE—The Cricket Car is a remote control car that uses 
electromyography (EMG) signals to drive the car. Electrodes are inserted into the legs of the common 
field cricket and the myoelectric signal, also known as a motor action signal, is amplified. This 
amplified signal is then acquired by the PIC16F88 processor. Using threshold detection and conditional 
logic algorithms, the PIC processor sends command signals to the circuit of a remote control car. 
Features such as object/collision detection, cricket stimulus, and additional signal processing 
algorithms have been studied and developed. The project has been incorporated into a neuro 
engineering course. Continuation of this project by undergraduate and graduate students will serve as 
the impetus for further improvements. 
THEORY 
The applications of biological signal-processing range from neurological disorders to cognitive based 
prosthetic devices. Common to all applications is acquiring the signal itself. Often, the type of 
electrodes used, the design of the pre-amp, the filtering, and the algorithm used to process the digitized 
signal have a combined synergy that can either enhance or degrade the overall process. To address this 
problem, the biomedical engineering lab at the University of Rhode Island has developed a 
microprocessor based circuit which acquires and processes electromyography signals (EMG) from the 
hind legs of the common field cricket and uses those signals to drive a remote control car. 
METHODS 
A. The Interface Figure 1 shows a prototype of the cricket (A), a cricket and an IC socket for the 
interface (B), and a typical EMG recording from the hind leg (C). Crickets belong to the Phylum 
Arthropoda, Class Insecta, and Order Orthoptera. They have a single giant nerve which runs 
through the center of the femur (Figure 2). It is this nerve that is responsible for the EMG 
(A) (B) 
EI DEPARTMENT, SRMGPC, LUCKNOW 5
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
(C) 
FIG 4: (A) A PROTOTYPE CRICKET CAR AT LEFT, (B) A CRICKET INTERFACE WITH AN IC SOCKET 
AT TOP RIGHT, AND (C) AN EMG RECORDING FROM THE HIND LEG AT BOTTOM RIGHT. 
Signals used to drive the car. Using stainless steel insect pins as electrodes, the cricket is attached to 
the circuit in much the same way an IC would be - by using a socket. Two electrodes, one in each hind 
leg, are used to acquire the signals while one electrode placed in the abdomen is used as a reference. 
This allows for the use of a two channel preamp which is used to differentiate left and right movements. 
The proximity of the cricket to the circuit serves two purposes. First, the signal from the leg is 
susceptible to ambient noise unless the leads are either shielded or extremely close to the amplifier. 
Second, the cricket needs to be positioned on the car so that it will have a visual reference to its 
surrounding. This second benefit may sound somewhat superfluous but if the cricket is to have any 
behavioral input, it is necessary that the cricket have the same field of view that it would ordinarily 
have in its standard environment. 
The electrodes used for the signal pickup are standard stainless steel insect pins (Fig. 1B). One issue 
that has been observed as a result of using this pin is a discoloration of the pin entrance sites on the 
cricket’s legs and abdomen. In [1-4], a copper or silver wire was used and no discoloration was noted 
but our choice of pins helps also in the restraint of the cricket. While the pin remains intact, it is obvious 
that there is some interaction between the steel and the tissue. It is hoped that the switch to surgical 
grade steel pins will resolve any issues that may arise as a result of this interaction. This is a 
precautionary action as no significant adverse effects have been observed besides the discoloration. 
There may be issues related to the long term usability of any one cricket as the area most likely will 
suffer some signal degradation. 
EI DEPARTMENT, SRMGPC, LUCKNOW 6
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
FIG 5: SCHEMATIC DIAGRAM OF THE CRICKET CAR EMG ACQUISITION CIRCUIT. 
FIG 6: SCHEMATIC DIAGRAM OF THE CRICKET CAR EMG ACQUISITION CIRCUIT. 
EI DEPARTMENT, SRMGPC, LUCKNOW 7
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
B. THE CIRCUIT 
Measuring signals on the order of 0.1mA or less requires careful attention to details that ordinarily 
may be overlooked when measuring stronger signals. As with many signal acquisition situations, signal 
to noise ratio (SNR) is the main consideration. The difficulty here is that the signal is of such low 
power that even small amounts of noise keeps the ratio low. Long, small wires, such as those used as 
electrode leads, make excellent antennas and as such pick up 60Hz electrical noise. To address this 
issue, the circuit was designed in such a way as to keep the signal wires short, limiting the noise 
contamination. The circuit (Figure 3) is a standard two channel preamp using Analog Devices AMP02 
instrumentation amplifiers followed by National Semiconductor LM324 op-amps. High pass filters are 
used to eliminate DC components and low pass filters are used for noise reduction. Similar to [1, 2], a 
band- width of 300-3000Hz was chosen for the filters. The circuit is 
Powered by a single 9V battery. In order to generate the -9V for the negative rails of the op-amps, a 
charge pump is needed. This pump is built using National Semiconductor LMC7660 Switched 
Capacitor Voltage Inverter ICs. Two LM324 Quad op-amp ICs are used for this circuit, however only 
4 of the available 8 op-amps are utilized- two from each op-amp. This leaves four op-amps for future 
use as either increased gain or active filters. Each of the two channels operates independently of the 
other. This is a useful feature in that any difficulties that arise in the operation of the circuit can quickly 
be isolated and segmented, making debugging a much less tedious exercise. 
B. COLLISION DETECTION 
As an input to the PIC processor, the object/collision detection circuit has override abilities in case the 
car comes close to another object or obstacle. Using an ultrasonic transmitter and receiver, collisions 
are avoided by measuring the return wave from the obstacle, i.e. echo location. Beam angle for these 
devices is measured at 60and as such one transmitter is incapable of providing front-end collision 
detection. The decision was made to include two transmitters, one on each front corner of the car. This 
will provide effective overlap in the center of the front-end as well as providing sufficient protection 
to the corners. The frequency, 40 KHz, is controlled by a network of resistors and capacitors with 
National Semiconductors LM555 timer while the transmitter is driven by the Texas Instruments 
CD4049UB inverting hex buffers. Each buffer is capable of delivering 10mA of current. Two buffers 
are used in parallel to supply 20mA of uninterrupted current, more than enough to drive the transmitter. 
DISCUSSION 
A remote control car that is driven by a cricket has been proposed. Further research is being performed 
into the stimulation of the cricket to increase activity, behavioral examination to prolonged car use in 
an environment, and human EMG acquisition for electromechanical device control. In addition to 
further graduate research, the project should serve as a model to build undergraduate courses in 
biomedical engineering. Using a commercially available RC car, students will be required to 
EI DEPARTMENT, SRMGPC, LUCKNOW 8
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
demonstrate an ability to 1) understand basic electrophysiological processes as well as insect anatomy 
2) understand, construct and improve signal amplifiers and filters and 3) formulate an algorithm in the 
C++ programming language capable of detecting, differentiating and interpreting different myoelectric 
signals. Pass filters are used to eliminate DC components and low pass filters are used for noise 
reduction. Similar to [1, 2], a band- width of 300-3000Hz was chosen for the filters. The circuit is 
powered by a single 9V battery. In order to generate the -9V for the negative rails of the op-amps, a 
charge pump is needed. This pump is built using National Semiconductor LMC7660 Switched 
Capacitor Voltage Inverter ICs. Two LM324 Quad op-amp ICs 
Are used for this circuit, however only 4 of the available 8 op-amps are utilized- two from each op-amp. 
This leaves four op-amps for future use as either increased gain or active filters. Each of the two 
channels operates independently of the other. This is a useful feature in that any difficulties that arise 
in the operation of the circuit can quickly be isolated and segmented, making debugging a much less 
tedious exercise. 
FIG 7: EMG AND GYRO BASED POSITION CONTROLLER ARM BANDS, HEAD BANDS AND BASE 
ADVANTAGES 
ANALYSIS OF SURFACE ELECTROMYOGRAM SIGNALS DURING HUMAN FINGER 
MOVEMENTS 
In the anatomy of the human hand, the hand is distal to the forearm, and its includes the carpus or 
wrist. The wrist is used for the distal end of the forearm, a wrist-watch being worn over the lower ends 
of the radius and ulna. The fingers (or digits of the hand) are numbered from one to five, beginning 
with the thumb. The fingers should be identified by name rather than by number: thumb (pollex), and 
index, middle, ring, and little fingers. The thenar and hypothenar are adjectives referring to the thumb 
and little finger, respectively. The finger of the hand are movable in four direction Flexion (bending), 
EI DEPARTMENT, SRMGPC, LUCKNOW 9
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
Extension (straightening), abduction (moving sideways from the body), adduction (moving sideways 
towards the body). [3] 
The paper consists study of joints and muscles that are required for the movements of hand. Movement 
of the hand is carried out by several groups of muscles. The muscles that flex the fingers, primarily 
flexor digitorum superficialis and flexor digitorum profundus, are located in the palmar aspect of the 
forearm. The muscles that extend the finger, primarily the extensor digitorum, are located in the dorsal 
aspect of the forearm. The most technological advanced and common method employed for prosthesis 
control is based on Electromyogram signal processing; to my electrically controlled a Dexterous 
prosthesis. It is necessary to map Electromyogram signal corresponding to different muscle contraction 
of different finger movements. 
FIG 8: MUSCLES OF FOREARM 
MATERIAL AND METHOD 
A. SURFACE ELECTROMYOGRAM (SEMG) 
The movement of the hand, either the thumb faces the other fingers, or all the fingers move 
independently. The muscles that operate the fingers have complicated structure. The muscles operating 
the joints of different fingers are normally generated from the arm or hand. Three kinds of muscles 
that generated from the arm participate in flexure of fingers. They are flexure digitorum superficialis 
muscle, flexure digitorum profundus muscle and flexure pollicis longus muscle. 
B. METHOD 
In this paper the data was collected from five subjects and the Surface Electromyogram signal were 
acquired using an in-house built amplification and acquisition system cRIO (Compaq reconfigure 
input/output) .A custom-built Lab View application was used to store and record the data. Surface 
EI DEPARTMENT, SRMGPC, LUCKNOW 10
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
Electrode were used, the electrode were placed at different muscle sites so as to take the different 
finger movements [5]. 
RESUTS AND DISCUSSION 
The result consists of flexion and extension of the index and middle finger individually as well as 
thumb and a hand at rest. These movements would account for individual control of each digit of a 
multi fingered and helping for recording Surface Electromyogram signals. The results for different 
movements of finger and thumb are shown below: 
FIG 9: POSITION OF ELECTRODES PLACEMENT 
By comparing the outcome of different movement of hand and fingers it can be noted that there is a 
little to no change in the waveform. It is noticed that the finger movements are largely controlled by 
two muscles system. The first system, the Flexor Digitorium system, is located in the upper part of the 
forearm near the elbow. 
1) The below graph shows the hand position when it is completely in rest. 
FIG 10: HAND IS IN RESTING POSITION 
EI DEPARTMENT, SRMGPC, LUCKNOW 11
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
2) The below graph shows the hand position when it is closed. 
FIG 11: HAND IS IN CLOSING POSITION 
3) The below graph shows the movement of fingers and thumb when it is flexed. 
A) 
B) 
FIG 12: A) FINGER MOVEMENT B) THUMB MOVEMENT 
EI DEPARTMENT, SRMGPC, LUCKNOW 12
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
SOME SPECIFICS FOR USE OF SURFACE AND FINE WIRE 
ELECTRODES 
I. Surface EMG 
A. Skin Preparation 
1. Alcohol removal of dirt, oil, and dead skin. 
2. Shave excess hair if necessary. (Under ideal conditions this should always be done. However, it is 
not feasible in many cases.) 
3. If the skin is dry, some electrode gel rubbed into the skin can help. 
4. If the person is going to be sweating, spray an antiperspirant on the skin after cleaning with alcohol. 
B. Placement of Electrodes 
1. There are specific references for different ways to measure for placement. (Norris, Johnson, Perotto) 
2. General guidelines for large muscle groups: 
a) Best if over the largest mass of the muscle and align electrodes with muscle fibers 
b) Use motor point and motor point finder to locate (general location charts are available) 
C. Cross Talk 
1. Not a real problem with large muscle groups. 
2. Can sometimes be avoided my adjusting the electrode size, inter-electrode distance (if an option on 
your brand of electrode), or by use of fine wires. 
D. Application 
1. Skin placement. 
2. Avoid movement of electrodes by using straps or tape to firmly secure electrode in place. 
3. Avoid bending of leads, place leads pointing in the direction that you want the wire to continue in. 
(e.g., for electrodes placed on an extremity, have the lead pointing towards the proximal end of the 
extremity so that the wire will not have to be bent in order to go in the proximal direction.) 
4. Avoid any stress on the wires by making sure that the wires are loose underneath the tape or wrap 
that is holding them in place. Be sure to check when the wires cross the joint that once the joint is 
fully extended the wires are not drawn taunt. 
5. Avoid placing electrodes over scars. 
E. Testing 
1. Do manual muscle tests to assure that you are getting a signal and that you are over the intended 
muscle. 
2. Do trial session to check signal and to get subject used to the setup and how instrumented. 
II. Fine Wire EMG 
A. Indications 
EI DEPARTMENT, SRMGPC, LUCKNOW 13
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
EMG APPLICATIONS 
FIG 13: EMG USED IN MEDICAL SCIENCES 
a) EMG is used as a diagnostics tool for identifying: 
a. Neuromuscular diseases, assessing low-back pain 
b. Disorders of motor control. 
b) EMG signals are also used as: 
a. A control signal for prosthetic devices such as prosthetic hands, arms, and lower limbs. 
b. To sense isometric muscular activity where no movement is produced. And can be used: 
i. To control interfaces without being noticed and without disrupting the 
surrounding environment. 
ii. To control an electronic device such as a mobile phone or PDA. 
FUTURE WORK 
Our work will continue with the migration of the prototype to a mobile device. We intend to continue 
our development in the Accessibility area, focusing on quadriplegic individuals. Our goal is to give 
quadriplegic the basic control of a cell phone, including messaging, with and EMG device and a mobile 
device attached to a wheel chair. Further user studies will be executed in that context. We also intend 
to make efforts in the signal processing so we can recognize more movements with the same 
monitorized muscles. This will improve the interaction possibilities and number of emulated events. 
EI DEPARTMENT, SRMGPC, LUCKNOW 14
MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL 
DEVICES BY USING ELECTROMYOGRAM 
FIG 14: EMG ESTABLISHMENT IN A BODY MUSSELS 
CONCLUSIONS 
a) The bioelectric potential associated with muscle activity constitute the electromyogram (EMG). 
b) Muscle is organized functionally on the basis of the motor unit. 
c) A motor unit is defined as one motor neuron and all of the muscle fibers it innervates. 
d) When a motor unit fires, the impulse (action potential) is carried down the motor neuron to the 
muscle. The area where the nerve contacts the muscle is called the neuromuscular junction, or the 
motor end plate. 
e) The potentials are measured at the surface of the body, near a muscle of interest or directly from 
the muscle by penetrating the skin with needle electrodes. 
f) EMG potentials range between less than 50 ÎźV and up to 20 to 30 mV, depending on the muscle 
under observation. 
EI DEPARTMENT, SRMGPC, LUCKNOW 15

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EMG electromayogram

  • 1. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM INTRODUCTION Electromyogram (EMG) is the record of the electrical excitation of the skeletal muscles which is initiated and regulated by the central and peripheral nervous system. EMGs have non-stationary properties. Electromyography is the discipline that deals with the detection, analysis, and use of the electrical signal that emanates from contracting muscles. This signal is referred to as the electromyographic (EMG) signal, a term that was more appropriate in the past than in the present. In days past, the only way to capture the signal for subsequent study was to obtain a ‘‘graphic’’ representation. Today, of course, it is possible to store the signal on magnetic tape, disks, and electronics components. Even more means will become available in the near future. This evolution has made the graphics aspect of the nomenclature a limited descriptor. Although a growing number of practitioners choose to use the term ‘‘myoelectric (ME) signal’’, the term ‘‘EMG’’ still commands dominant usage, especially in clinical environments. Here the signal begins with a low amplitude, which when expanded reveals the individual action potentials associated with the contractile activity of individual (or a small group) of muscle fibers. As the force output of the muscle contraction increases, more muscle fivers are activated and the firing rate of the fibers increases. Correspondingly, the amplitude of the signal increases taking on the appearance and characteristics of a Gaussian distributed variable. The novice in this field may well ask, why study electromyography? Why bother understanding the EMG signal? There are many and varied reasons for doing so. Even a superficial acquaintance with the scientific literature will uncover various current applications in fields such as neurophysiology, kinesiology, motor control, psychology, rehabilitation medicine, and biomedical engineering. Although the state of the art provides a sound and rich complement of applications, it is the potential of future applications that generates genuine enthusiasm. EI DEPARTMENT, SRMGPC, LUCKNOW 1
  • 2. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM LITERATURE REVIEW Movement and position of the limbs are controlled by the electrical signals travelling forward and backward between Muscle fibers, Peripheral and Central Nervous System [1], [2]. Conscientious Registration and interpretation of these muscle electrical potential is called as Electromyogram (EMG). Due to the emanation of Pathological condition in motor system, whether in spinal cord, the motor neuron, the muscle or the neuromuscular junction the characters of electrical potentials generated during the contraction and relaxation of muscles changes [4]. Careful registration and study of electrical signals in muscles thus can be valuable aid in discovering and diagnosis abnormalities not only in muscles but also in the motor system as a whole [3] [5]. EMG classification is one of the most difficult pattern recognition problems because there usually exists small but numerous variations in EMG features, which leads to difficulty in analyzing EMG signals. In general, the methods of feature selection can be divided into two types: the measure of classification accuracy and the valuation using statistical criterion. After that the selection of the best features based on the proposed statistical criterion method is investigated. For this purpose, we evaluate different kinds of features that have been widely used in EMG diseases recognition. The results of this evaluation and the proposed statistic method can be widely used in EMG applications such as control of EMG robots and prostheses or the EMG diagnosis of nerve and muscle diseases[6],[7],[8]. EMG signals have been targeted as control for flight systems. 1. The Human Senses Group at the NASA Research Center at Moffett Field, CA seeks to advance man machine interfaces by directly connecting a person to a computer. 2. An EMG signal is used to substitute for mechanical joysticks and keyboards. 3. EMG has also been used in research towards a "wearable cockpit," which employs EMG-based gestures to manipulate switches and control sticks necessary for flight in conjunction with a goggle based display. (A) (B) FIG 1: (A) CONTROL OF AIR PLANE BY EMG (B) MONITORING OF AIRPLANE ON PC EI DEPARTMENT, SRMGPC, LUCKNOW 2
  • 3. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM HISTORICAL PERSPECTIVE Electromyography had its earliest roots in the custom practiced by the Greeks of using electric eels to ‘‘shock’’ ailments out of the body. The origin of the shock that accompanied this earliest detection and application of the EMG signal was not appreciated until 1666 when an Italian, Francesco Redi, realized that it originated from muscle tissue (1). This relationship was later proved by Luigi Galvani (2) in 1791 who staunchly defended the notion. During the ensuing six decades, a few investigators dabbled with this newly discovered phenomenon, but it remained for DuBois Raymond (3) in 1849 to prove that the EMG signal could be detected from human muscle during a voluntary contraction. In the mid-1940s to the mid-1950s several investigations revealed a mono- tonic relationship between the amplitude of the EMG signal and the force and velocity of a muscle contraction. In the early 1960s, another dramatic evolution occurred in the field: myoelectric control of externally powered prostheses. During this period, engineers from several countries developed externally powered upper limb pros- theses that were made possible by the miniaturization of electronics components and the development of lighter, more compact batteries that could be carried by amputees. The late 1970s and early 1980s saw the use of sophisticated computer algorithms and communication theory to decompose the EMG signal into the individual electrical activities of the muscle fibers (10– 12). Today, the decomposition approach promises to revolutionize clinical electromyography and to provide a powerful tool for investigating the detailed control schemes used by the nervous system to produce muscle contractions. The 1990s saw the effective application of modern signal processing techniques for the analysis and use of the EMG signal. Some examples are the use of time and frequency analysis of the surface EMG signal for measuring the relative contribution of low back muscles during the presence and absence of low back pain (16) The electromyogram (EMG) signal is an electrical voltage generated by the neural activity commanding muscle activity. Surface electrodes pick up this neural activity by making electrical contact through the skin. Muscle tension results in higher energy in the bio signal, in the millivolt range and having a frequency range from DC to 2 kHz. The EMG signal has been compared in its richness to audio, making audio signal processing and pattern recognition techniques potentially relevant in analyzing the bio signal. However EMG is ultimately not a continuous signal, but the sum of discrete neuron impulses. This results in an aperiodic, stochastic signal that poses challenges to audio-based signal and information processing. EI DEPARTMENT, SRMGPC, LUCKNOW 3
  • 4. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM DESCRIPTION OF THE EMG SIGNAL FIG 2: RELATIONSHIP AMONG THE VARIOUS FACTORS THAT AFFECT THE EMG SIGNAL. FIG 3: BLOCK DIAGRAM OF EMG SYSTEM EI DEPARTMENT, SRMGPC, LUCKNOW 4
  • 5. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM AN EXPERIMENT OBJECT—Microprocessor Based Control of Electromechanical Devices by Using Electromyogram: A “Cricket Car” Model EXPERIMENT OBJECTIVE—The Cricket Car is a remote control car that uses electromyography (EMG) signals to drive the car. Electrodes are inserted into the legs of the common field cricket and the myoelectric signal, also known as a motor action signal, is amplified. This amplified signal is then acquired by the PIC16F88 processor. Using threshold detection and conditional logic algorithms, the PIC processor sends command signals to the circuit of a remote control car. Features such as object/collision detection, cricket stimulus, and additional signal processing algorithms have been studied and developed. The project has been incorporated into a neuro engineering course. Continuation of this project by undergraduate and graduate students will serve as the impetus for further improvements. THEORY The applications of biological signal-processing range from neurological disorders to cognitive based prosthetic devices. Common to all applications is acquiring the signal itself. Often, the type of electrodes used, the design of the pre-amp, the filtering, and the algorithm used to process the digitized signal have a combined synergy that can either enhance or degrade the overall process. To address this problem, the biomedical engineering lab at the University of Rhode Island has developed a microprocessor based circuit which acquires and processes electromyography signals (EMG) from the hind legs of the common field cricket and uses those signals to drive a remote control car. METHODS A. The Interface Figure 1 shows a prototype of the cricket (A), a cricket and an IC socket for the interface (B), and a typical EMG recording from the hind leg (C). Crickets belong to the Phylum Arthropoda, Class Insecta, and Order Orthoptera. They have a single giant nerve which runs through the center of the femur (Figure 2). It is this nerve that is responsible for the EMG (A) (B) EI DEPARTMENT, SRMGPC, LUCKNOW 5
  • 6. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM (C) FIG 4: (A) A PROTOTYPE CRICKET CAR AT LEFT, (B) A CRICKET INTERFACE WITH AN IC SOCKET AT TOP RIGHT, AND (C) AN EMG RECORDING FROM THE HIND LEG AT BOTTOM RIGHT. Signals used to drive the car. Using stainless steel insect pins as electrodes, the cricket is attached to the circuit in much the same way an IC would be - by using a socket. Two electrodes, one in each hind leg, are used to acquire the signals while one electrode placed in the abdomen is used as a reference. This allows for the use of a two channel preamp which is used to differentiate left and right movements. The proximity of the cricket to the circuit serves two purposes. First, the signal from the leg is susceptible to ambient noise unless the leads are either shielded or extremely close to the amplifier. Second, the cricket needs to be positioned on the car so that it will have a visual reference to its surrounding. This second benefit may sound somewhat superfluous but if the cricket is to have any behavioral input, it is necessary that the cricket have the same field of view that it would ordinarily have in its standard environment. The electrodes used for the signal pickup are standard stainless steel insect pins (Fig. 1B). One issue that has been observed as a result of using this pin is a discoloration of the pin entrance sites on the cricket’s legs and abdomen. In [1-4], a copper or silver wire was used and no discoloration was noted but our choice of pins helps also in the restraint of the cricket. While the pin remains intact, it is obvious that there is some interaction between the steel and the tissue. It is hoped that the switch to surgical grade steel pins will resolve any issues that may arise as a result of this interaction. This is a precautionary action as no significant adverse effects have been observed besides the discoloration. There may be issues related to the long term usability of any one cricket as the area most likely will suffer some signal degradation. EI DEPARTMENT, SRMGPC, LUCKNOW 6
  • 7. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM FIG 5: SCHEMATIC DIAGRAM OF THE CRICKET CAR EMG ACQUISITION CIRCUIT. FIG 6: SCHEMATIC DIAGRAM OF THE CRICKET CAR EMG ACQUISITION CIRCUIT. EI DEPARTMENT, SRMGPC, LUCKNOW 7
  • 8. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM B. THE CIRCUIT Measuring signals on the order of 0.1mA or less requires careful attention to details that ordinarily may be overlooked when measuring stronger signals. As with many signal acquisition situations, signal to noise ratio (SNR) is the main consideration. The difficulty here is that the signal is of such low power that even small amounts of noise keeps the ratio low. Long, small wires, such as those used as electrode leads, make excellent antennas and as such pick up 60Hz electrical noise. To address this issue, the circuit was designed in such a way as to keep the signal wires short, limiting the noise contamination. The circuit (Figure 3) is a standard two channel preamp using Analog Devices AMP02 instrumentation amplifiers followed by National Semiconductor LM324 op-amps. High pass filters are used to eliminate DC components and low pass filters are used for noise reduction. Similar to [1, 2], a band- width of 300-3000Hz was chosen for the filters. The circuit is Powered by a single 9V battery. In order to generate the -9V for the negative rails of the op-amps, a charge pump is needed. This pump is built using National Semiconductor LMC7660 Switched Capacitor Voltage Inverter ICs. Two LM324 Quad op-amp ICs are used for this circuit, however only 4 of the available 8 op-amps are utilized- two from each op-amp. This leaves four op-amps for future use as either increased gain or active filters. Each of the two channels operates independently of the other. This is a useful feature in that any difficulties that arise in the operation of the circuit can quickly be isolated and segmented, making debugging a much less tedious exercise. B. COLLISION DETECTION As an input to the PIC processor, the object/collision detection circuit has override abilities in case the car comes close to another object or obstacle. Using an ultrasonic transmitter and receiver, collisions are avoided by measuring the return wave from the obstacle, i.e. echo location. Beam angle for these devices is measured at 60and as such one transmitter is incapable of providing front-end collision detection. The decision was made to include two transmitters, one on each front corner of the car. This will provide effective overlap in the center of the front-end as well as providing sufficient protection to the corners. The frequency, 40 KHz, is controlled by a network of resistors and capacitors with National Semiconductors LM555 timer while the transmitter is driven by the Texas Instruments CD4049UB inverting hex buffers. Each buffer is capable of delivering 10mA of current. Two buffers are used in parallel to supply 20mA of uninterrupted current, more than enough to drive the transmitter. DISCUSSION A remote control car that is driven by a cricket has been proposed. Further research is being performed into the stimulation of the cricket to increase activity, behavioral examination to prolonged car use in an environment, and human EMG acquisition for electromechanical device control. In addition to further graduate research, the project should serve as a model to build undergraduate courses in biomedical engineering. Using a commercially available RC car, students will be required to EI DEPARTMENT, SRMGPC, LUCKNOW 8
  • 9. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM demonstrate an ability to 1) understand basic electrophysiological processes as well as insect anatomy 2) understand, construct and improve signal amplifiers and filters and 3) formulate an algorithm in the C++ programming language capable of detecting, differentiating and interpreting different myoelectric signals. Pass filters are used to eliminate DC components and low pass filters are used for noise reduction. Similar to [1, 2], a band- width of 300-3000Hz was chosen for the filters. The circuit is powered by a single 9V battery. In order to generate the -9V for the negative rails of the op-amps, a charge pump is needed. This pump is built using National Semiconductor LMC7660 Switched Capacitor Voltage Inverter ICs. Two LM324 Quad op-amp ICs Are used for this circuit, however only 4 of the available 8 op-amps are utilized- two from each op-amp. This leaves four op-amps for future use as either increased gain or active filters. Each of the two channels operates independently of the other. This is a useful feature in that any difficulties that arise in the operation of the circuit can quickly be isolated and segmented, making debugging a much less tedious exercise. FIG 7: EMG AND GYRO BASED POSITION CONTROLLER ARM BANDS, HEAD BANDS AND BASE ADVANTAGES ANALYSIS OF SURFACE ELECTROMYOGRAM SIGNALS DURING HUMAN FINGER MOVEMENTS In the anatomy of the human hand, the hand is distal to the forearm, and its includes the carpus or wrist. The wrist is used for the distal end of the forearm, a wrist-watch being worn over the lower ends of the radius and ulna. The fingers (or digits of the hand) are numbered from one to five, beginning with the thumb. The fingers should be identified by name rather than by number: thumb (pollex), and index, middle, ring, and little fingers. The thenar and hypothenar are adjectives referring to the thumb and little finger, respectively. The finger of the hand are movable in four direction Flexion (bending), EI DEPARTMENT, SRMGPC, LUCKNOW 9
  • 10. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM Extension (straightening), abduction (moving sideways from the body), adduction (moving sideways towards the body). [3] The paper consists study of joints and muscles that are required for the movements of hand. Movement of the hand is carried out by several groups of muscles. The muscles that flex the fingers, primarily flexor digitorum superficialis and flexor digitorum profundus, are located in the palmar aspect of the forearm. The muscles that extend the finger, primarily the extensor digitorum, are located in the dorsal aspect of the forearm. The most technological advanced and common method employed for prosthesis control is based on Electromyogram signal processing; to my electrically controlled a Dexterous prosthesis. It is necessary to map Electromyogram signal corresponding to different muscle contraction of different finger movements. FIG 8: MUSCLES OF FOREARM MATERIAL AND METHOD A. SURFACE ELECTROMYOGRAM (SEMG) The movement of the hand, either the thumb faces the other fingers, or all the fingers move independently. The muscles that operate the fingers have complicated structure. The muscles operating the joints of different fingers are normally generated from the arm or hand. Three kinds of muscles that generated from the arm participate in flexure of fingers. They are flexure digitorum superficialis muscle, flexure digitorum profundus muscle and flexure pollicis longus muscle. B. METHOD In this paper the data was collected from five subjects and the Surface Electromyogram signal were acquired using an in-house built amplification and acquisition system cRIO (Compaq reconfigure input/output) .A custom-built Lab View application was used to store and record the data. Surface EI DEPARTMENT, SRMGPC, LUCKNOW 10
  • 11. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM Electrode were used, the electrode were placed at different muscle sites so as to take the different finger movements [5]. RESUTS AND DISCUSSION The result consists of flexion and extension of the index and middle finger individually as well as thumb and a hand at rest. These movements would account for individual control of each digit of a multi fingered and helping for recording Surface Electromyogram signals. The results for different movements of finger and thumb are shown below: FIG 9: POSITION OF ELECTRODES PLACEMENT By comparing the outcome of different movement of hand and fingers it can be noted that there is a little to no change in the waveform. It is noticed that the finger movements are largely controlled by two muscles system. The first system, the Flexor Digitorium system, is located in the upper part of the forearm near the elbow. 1) The below graph shows the hand position when it is completely in rest. FIG 10: HAND IS IN RESTING POSITION EI DEPARTMENT, SRMGPC, LUCKNOW 11
  • 12. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM 2) The below graph shows the hand position when it is closed. FIG 11: HAND IS IN CLOSING POSITION 3) The below graph shows the movement of fingers and thumb when it is flexed. A) B) FIG 12: A) FINGER MOVEMENT B) THUMB MOVEMENT EI DEPARTMENT, SRMGPC, LUCKNOW 12
  • 13. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM SOME SPECIFICS FOR USE OF SURFACE AND FINE WIRE ELECTRODES I. Surface EMG A. Skin Preparation 1. Alcohol removal of dirt, oil, and dead skin. 2. Shave excess hair if necessary. (Under ideal conditions this should always be done. However, it is not feasible in many cases.) 3. If the skin is dry, some electrode gel rubbed into the skin can help. 4. If the person is going to be sweating, spray an antiperspirant on the skin after cleaning with alcohol. B. Placement of Electrodes 1. There are specific references for different ways to measure for placement. (Norris, Johnson, Perotto) 2. General guidelines for large muscle groups: a) Best if over the largest mass of the muscle and align electrodes with muscle fibers b) Use motor point and motor point finder to locate (general location charts are available) C. Cross Talk 1. Not a real problem with large muscle groups. 2. Can sometimes be avoided my adjusting the electrode size, inter-electrode distance (if an option on your brand of electrode), or by use of fine wires. D. Application 1. Skin placement. 2. Avoid movement of electrodes by using straps or tape to firmly secure electrode in place. 3. Avoid bending of leads, place leads pointing in the direction that you want the wire to continue in. (e.g., for electrodes placed on an extremity, have the lead pointing towards the proximal end of the extremity so that the wire will not have to be bent in order to go in the proximal direction.) 4. Avoid any stress on the wires by making sure that the wires are loose underneath the tape or wrap that is holding them in place. Be sure to check when the wires cross the joint that once the joint is fully extended the wires are not drawn taunt. 5. Avoid placing electrodes over scars. E. Testing 1. Do manual muscle tests to assure that you are getting a signal and that you are over the intended muscle. 2. Do trial session to check signal and to get subject used to the setup and how instrumented. II. Fine Wire EMG A. Indications EI DEPARTMENT, SRMGPC, LUCKNOW 13
  • 14. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM EMG APPLICATIONS FIG 13: EMG USED IN MEDICAL SCIENCES a) EMG is used as a diagnostics tool for identifying: a. Neuromuscular diseases, assessing low-back pain b. Disorders of motor control. b) EMG signals are also used as: a. A control signal for prosthetic devices such as prosthetic hands, arms, and lower limbs. b. To sense isometric muscular activity where no movement is produced. And can be used: i. To control interfaces without being noticed and without disrupting the surrounding environment. ii. To control an electronic device such as a mobile phone or PDA. FUTURE WORK Our work will continue with the migration of the prototype to a mobile device. We intend to continue our development in the Accessibility area, focusing on quadriplegic individuals. Our goal is to give quadriplegic the basic control of a cell phone, including messaging, with and EMG device and a mobile device attached to a wheel chair. Further user studies will be executed in that context. We also intend to make efforts in the signal processing so we can recognize more movements with the same monitorized muscles. This will improve the interaction possibilities and number of emulated events. EI DEPARTMENT, SRMGPC, LUCKNOW 14
  • 15. MICROPROCESSOR BASED CONTROL OF ELECTROMECHANICAL DEVICES BY USING ELECTROMYOGRAM FIG 14: EMG ESTABLISHMENT IN A BODY MUSSELS CONCLUSIONS a) The bioelectric potential associated with muscle activity constitute the electromyogram (EMG). b) Muscle is organized functionally on the basis of the motor unit. c) A motor unit is defined as one motor neuron and all of the muscle fibers it innervates. d) When a motor unit fires, the impulse (action potential) is carried down the motor neuron to the muscle. The area where the nerve contacts the muscle is called the neuromuscular junction, or the motor end plate. e) The potentials are measured at the surface of the body, near a muscle of interest or directly from the muscle by penetrating the skin with needle electrodes. f) EMG potentials range between less than 50 ÎźV and up to 20 to 30 mV, depending on the muscle under observation. EI DEPARTMENT, SRMGPC, LUCKNOW 15