International Journal of Engineering Research and Applications (IJERA) is an open access online peer reviewed international journal that publishes research and review articles in the fields of Computer Science, Neural Networks, Electrical Engineering, Software Engineering, Information Technology, Mechanical Engineering, Chemical Engineering, Plastic Engineering, Food Technology, Textile Engineering, Nano Technology & science, Power Electronics, Electronics & Communication Engineering, Computational mathematics, Image processing, Civil Engineering, Structural Engineering, Environmental Engineering, VLSI Testing & Low Power VLSI Design etc.
Abstract The deployment of statistical process control (SPC) in manufacturing environments is a prominent global phenomenon. Statistical Process Control is largely used in industries for monitoring the process parameters. It is a standard method for visualizing and controlling processes on the basis of measurements of randomly selected samples. The decisions about what needs to be improved, the possible methods to improve it, and the steps to take after getting results from the charts are all made by humans and based on wisdom and experience. The statistical process control described in this paper gives the details about the SPC, its advantages and limitation, applications and information regarding the control charts. Keywords: Statistical Process Control, Control chart, 5M’s, Capability Indices.
IJERA (International journal of Engineering Research and Applications) is International online, ... peer reviewed journal. For more detail or submit your article, please visit www.ijera.com
Abstract The deployment of statistical process control (SPC) in manufacturing environments is a prominent global phenomenon. Statistical Process Control is largely used in industries for monitoring the process parameters. It is a standard method for visualizing and controlling processes on the basis of measurements of randomly selected samples. The decisions about what needs to be improved, the possible methods to improve it, and the steps to take after getting results from the charts are all made by humans and based on wisdom and experience. The statistical process control described in this paper gives the details about the SPC, its advantages and limitation, applications and information regarding the control charts. Keywords: Statistical Process Control, Control chart, 5M’s, Capability Indices.
IJERA (International journal of Engineering Research and Applications) is International online, ... peer reviewed journal. For more detail or submit your article, please visit www.ijera.com
IJRET : International Journal of Research in Engineering and Technology is an international peer reviewed, online journal published by eSAT Publishing House for the enhancement of research in various disciplines of Engineering and Technology. The aim and scope of the journal is to provide an academic medium and an important reference for the advancement and dissemination of research results that support high-level learning, teaching and research in the fields of Engineering and Technology. We bring together Scientists, Academician, Field Engineers, Scholars and Students of related fields of Engineering and Technology.
- Seven tools;
- Process variability;
- Important use of the control chart;
- Statistical basis of the control chart:
> Basic principles and type of control chart;
> Choice of control limits;
> Sampling size and sampling frequency;
> Average run length;
> Rational subgroups;
> Analysis of patterns on control charts;
> Sensitizing rules for control charts;
> Phase I and Phase II of control chart.
Adaptive-optimal control involves re-identification of the machining process and the model obtained is used to calculate the optimal process parameters.
Optimal control characterizes the addiction of the technical and economic indicators to process parameters. Characteristic for performance technical indicators is that their dependence to parameter values of process has a limitative, what leads to one of the following conclusions, appropriately or inappropriately, and therefore can serve as restrictions in optimization problem.
Economic indicators have a continuous dependence of process parameters and therefore they are used as objective functions.
Statistical Process Control Training Online - Tonex TrainingBryan Len
It’s all about key concepts behind SPC or statistical process control, a statistically-based family of tools used to monitor, control, and improve processes.
All the attendees of Tonex statistical process control training will learn about the details of SPC, control charting, other procedures and tools to apply them in their projects.
Learn about :
Statistical process control (SPC) terminology & key principals
Learn how SPC integrates into the total quality system
Variation in manufacturing processes such as patterns
Learn about data collection, control charts
Techniques and tools to implement statistical process control
Recognize the fundamentals of process sampling strategy
Differentiate methods and tools to implement and assess SPC
Select and use recommended SPC practices
Course designed for:
Production Engineers, quality managers,
Operators, project managers,
Product process control, analysts,
Quality process, improvement associates
Other people engaged with SPC process
Course Topics :
What is Statistical process control (SPC)?
Introduction to Process Variation
Control Charts
7-QC Tools & 7-SUPP Tools
The Relationship Between Statistical Quality Control and Statistical Process Control
Statistical process control (SPC) Workshop
Want to learn more ?
Visit tonex.com for statistical process control training detail.
Statistical Process Control Training Online - Tonex Training
https://www.tonex.com/training-courses/statistical-process-control-training-spc-training/
Statistical process control (SPC) is a method of quality control which uses statistical methods. SPC is applied in order to monitor and control a process. Monitoring and controlling the process ensures that it operates at its full potential. At its full potential, the process can make as much conforming product as possible with a minimum (if not an elimination) of waste (rework or scrap). SPC can be applied to any process where the "conforming product" (product meeting specifications) output can be measured. Key tools used in SPC include control charts; a focus on continuous improvement; and the design of experiments. An example of a process where SPC is applied is manufacturing lines.
International Journal of Engineering Research and Applications (IJERA) is an open access online peer reviewed international journal that publishes research and review articles in the fields of Computer Science, Neural Networks, Electrical Engineering, Software Engineering, Information Technology, Mechanical Engineering, Chemical Engineering, Plastic Engineering, Food Technology, Textile Engineering, Nano Technology & science, Power Electronics, Electronics & Communication Engineering, Computational mathematics, Image processing, Civil Engineering, Structural Engineering, Environmental Engineering, VLSI Testing & Low Power VLSI Design etc.
International Journal of Engineering Research and Applications (IJERA) is an open access online peer reviewed international journal that publishes research and review articles in the fields of Computer Science, Neural Networks, Electrical Engineering, Software Engineering, Information Technology, Mechanical Engineering, Chemical Engineering, Plastic Engineering, Food Technology, Textile Engineering, Nano Technology & science, Power Electronics, Electronics & Communication Engineering, Computational mathematics, Image processing, Civil Engineering, Structural Engineering, Environmental Engineering, VLSI Testing & Low Power VLSI Design etc.
International Journal of Engineering Research and Applications (IJERA) is an open access online peer reviewed international journal that publishes research and review articles in the fields of Computer Science, Neural Networks, Electrical Engineering, Software Engineering, Information Technology, Mechanical Engineering, Chemical Engineering, Plastic Engineering, Food Technology, Textile Engineering, Nano Technology & science, Power Electronics, Electronics & Communication Engineering, Computational mathematics, Image processing, Civil Engineering, Structural Engineering, Environmental Engineering, VLSI Testing & Low Power VLSI Design etc.
IJRET : International Journal of Research in Engineering and Technology is an international peer reviewed, online journal published by eSAT Publishing House for the enhancement of research in various disciplines of Engineering and Technology. The aim and scope of the journal is to provide an academic medium and an important reference for the advancement and dissemination of research results that support high-level learning, teaching and research in the fields of Engineering and Technology. We bring together Scientists, Academician, Field Engineers, Scholars and Students of related fields of Engineering and Technology.
- Seven tools;
- Process variability;
- Important use of the control chart;
- Statistical basis of the control chart:
> Basic principles and type of control chart;
> Choice of control limits;
> Sampling size and sampling frequency;
> Average run length;
> Rational subgroups;
> Analysis of patterns on control charts;
> Sensitizing rules for control charts;
> Phase I and Phase II of control chart.
Adaptive-optimal control involves re-identification of the machining process and the model obtained is used to calculate the optimal process parameters.
Optimal control characterizes the addiction of the technical and economic indicators to process parameters. Characteristic for performance technical indicators is that their dependence to parameter values of process has a limitative, what leads to one of the following conclusions, appropriately or inappropriately, and therefore can serve as restrictions in optimization problem.
Economic indicators have a continuous dependence of process parameters and therefore they are used as objective functions.
Statistical Process Control Training Online - Tonex TrainingBryan Len
It’s all about key concepts behind SPC or statistical process control, a statistically-based family of tools used to monitor, control, and improve processes.
All the attendees of Tonex statistical process control training will learn about the details of SPC, control charting, other procedures and tools to apply them in their projects.
Learn about :
Statistical process control (SPC) terminology & key principals
Learn how SPC integrates into the total quality system
Variation in manufacturing processes such as patterns
Learn about data collection, control charts
Techniques and tools to implement statistical process control
Recognize the fundamentals of process sampling strategy
Differentiate methods and tools to implement and assess SPC
Select and use recommended SPC practices
Course designed for:
Production Engineers, quality managers,
Operators, project managers,
Product process control, analysts,
Quality process, improvement associates
Other people engaged with SPC process
Course Topics :
What is Statistical process control (SPC)?
Introduction to Process Variation
Control Charts
7-QC Tools & 7-SUPP Tools
The Relationship Between Statistical Quality Control and Statistical Process Control
Statistical process control (SPC) Workshop
Want to learn more ?
Visit tonex.com for statistical process control training detail.
Statistical Process Control Training Online - Tonex Training
https://www.tonex.com/training-courses/statistical-process-control-training-spc-training/
Statistical process control (SPC) is a method of quality control which uses statistical methods. SPC is applied in order to monitor and control a process. Monitoring and controlling the process ensures that it operates at its full potential. At its full potential, the process can make as much conforming product as possible with a minimum (if not an elimination) of waste (rework or scrap). SPC can be applied to any process where the "conforming product" (product meeting specifications) output can be measured. Key tools used in SPC include control charts; a focus on continuous improvement; and the design of experiments. An example of a process where SPC is applied is manufacturing lines.
International Journal of Engineering Research and Applications (IJERA) is an open access online peer reviewed international journal that publishes research and review articles in the fields of Computer Science, Neural Networks, Electrical Engineering, Software Engineering, Information Technology, Mechanical Engineering, Chemical Engineering, Plastic Engineering, Food Technology, Textile Engineering, Nano Technology & science, Power Electronics, Electronics & Communication Engineering, Computational mathematics, Image processing, Civil Engineering, Structural Engineering, Environmental Engineering, VLSI Testing & Low Power VLSI Design etc.
International Journal of Engineering Research and Applications (IJERA) is an open access online peer reviewed international journal that publishes research and review articles in the fields of Computer Science, Neural Networks, Electrical Engineering, Software Engineering, Information Technology, Mechanical Engineering, Chemical Engineering, Plastic Engineering, Food Technology, Textile Engineering, Nano Technology & science, Power Electronics, Electronics & Communication Engineering, Computational mathematics, Image processing, Civil Engineering, Structural Engineering, Environmental Engineering, VLSI Testing & Low Power VLSI Design etc.
International Journal of Engineering Research and Applications (IJERA) is an open access online peer reviewed international journal that publishes research and review articles in the fields of Computer Science, Neural Networks, Electrical Engineering, Software Engineering, Information Technology, Mechanical Engineering, Chemical Engineering, Plastic Engineering, Food Technology, Textile Engineering, Nano Technology & science, Power Electronics, Electronics & Communication Engineering, Computational mathematics, Image processing, Civil Engineering, Structural Engineering, Environmental Engineering, VLSI Testing & Low Power VLSI Design etc.
Digital channel strategy for a digital marketer.
Digital marketing is the future of business. It is the marketing of products or services using digital technologies. It also helps organization to create competitive advantage. It is a new non-linear marketing approach. Data analytics also helps to strengthen the digital marketing strategy. It helps differentiate your company from other existing companies.
I hope this slide might throw some light on digital channel strategy.
Today’s competitive environment has, lower manufacturing cost, more productivity in less time, high-quality product, defect-free operation are required to follow to every foundryman. For the improvement of products quality, there are diff-diff quality tools used in various review papers. Here I am going to review these papers and identify the different way of uses of those tools in manufacturing industries to increase the quality of the product. There are so many defects in the manufacturing process and these defects directly affect productivity, profitability and quality level of organization. This study is aimed to review the research work made by several researchers and attempt to get a technical solution for the various defects and to improve the entire process of the manufacturing
International Journal of Computational Engineering Research(IJCER)ijceronline
International Journal of Computational Engineering Research (IJCER) is dedicated to protecting personal information and will make every reasonable effort to handle collected information appropriately. All information collected, as well as related requests, will be handled as carefully and efficiently as possible in accordance with IJCER standards for integrity and objectivity.
Statistical quality control applied industrial and manufacturing operations. Case study regarding the use of these tools. Description of statistical tools used in quality control and inspection.
Gage Repeatability and Reproducibility in Semiconductor Manufacturing.pptxyieldWerx Semiconductor
In the semiconductor manufacturing industry, precision, reliability, and consistency are of utmost importance. Every aspect of production and quality control relies on accurate and repeatable measurements.
Operations Management: Six sigma benchmarking of process capability analysis...FGV Brazil
Six sigma benchmarking of process capability analysis and mapping of process parameters.
Author: Jagadeesh Rajashekharaiah
Journal of Operations and Supply Chain Management
Vol 9, No 2 (2016)
FGV's Brazilian School of Public and Business Administration (EBAPE)
Abstract
Process capability analysis (PCA) is a vital step in ascertaining the quality of the output from a production process. Particularly in batch and mass production of components with specified quality characteristics, PCA helps to decide about accepting the process and later to continue with it. In this paper, the application of PCA using process capability indices is demonstrated using data from the field and benchmarked against Six Sigma as a motivation to improve to meet the global standards. Further, how the two important process parameters namely mean and the standard deviation can be monitored is illustrated with the help of what if analysis feature of Excel. Finally, the paper enables to determine the improvement efforts using simulation to act as a quick reference for decision makers. The global benchmarking in the form of Six Sigma capability of the process is expected to give valuable insight towards process improvement.
Innovating Quality Control in the Semiconductor Manufacturing Industry.pptxyieldWerx Semiconductor
The semiconductor manufacturing industry, a high-volume manufacturing environment characterized by its intricacy, stands as a testament to precision and performance. To ensure optimal outcomes, it is vital to maintain consistent quality control, with a special emphasis on the rectification of tool deterioration. Implementing innovative strategies related to process control monitoring can mitigate this problem and set a path towards a 'zero equipment failure' environment.
GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using Deplo...James Anderson
Effective Application Security in Software Delivery lifecycle using Deployment Firewall and DBOM
The modern software delivery process (or the CI/CD process) includes many tools, distributed teams, open-source code, and cloud platforms. Constant focus on speed to release software to market, along with the traditional slow and manual security checks has caused gaps in continuous security as an important piece in the software supply chain. Today organizations feel more susceptible to external and internal cyber threats due to the vast attack surface in their applications supply chain and the lack of end-to-end governance and risk management.
The software team must secure its software delivery process to avoid vulnerability and security breaches. This needs to be achieved with existing tool chains and without extensive rework of the delivery processes. This talk will present strategies and techniques for providing visibility into the true risk of the existing vulnerabilities, preventing the introduction of security issues in the software, resolving vulnerabilities in production environments quickly, and capturing the deployment bill of materials (DBOM).
Speakers:
Bob Boule
Robert Boule is a technology enthusiast with PASSION for technology and making things work along with a knack for helping others understand how things work. He comes with around 20 years of solution engineering experience in application security, software continuous delivery, and SaaS platforms. He is known for his dynamic presentations in CI/CD and application security integrated in software delivery lifecycle.
Gopinath Rebala
Gopinath Rebala is the CTO of OpsMx, where he has overall responsibility for the machine learning and data processing architectures for Secure Software Delivery. Gopi also has a strong connection with our customers, leading design and architecture for strategic implementations. Gopi is a frequent speaker and well-known leader in continuous delivery and integrating security into software delivery.
Elevating Tactical DDD Patterns Through Object CalisthenicsDorra BARTAGUIZ
After immersing yourself in the blue book and its red counterpart, attending DDD-focused conferences, and applying tactical patterns, you're left with a crucial question: How do I ensure my design is effective? Tactical patterns within Domain-Driven Design (DDD) serve as guiding principles for creating clear and manageable domain models. However, achieving success with these patterns requires additional guidance. Interestingly, we've observed that a set of constraints initially designed for training purposes remarkably aligns with effective pattern implementation, offering a more ‘mechanical’ approach. Let's explore together how Object Calisthenics can elevate the design of your tactical DDD patterns, offering concrete help for those venturing into DDD for the first time!
Epistemic Interaction - tuning interfaces to provide information for AI supportAlan Dix
Paper presented at SYNERGY workshop at AVI 2024, Genoa, Italy. 3rd June 2024
https://alandix.com/academic/papers/synergy2024-epistemic/
As machine learning integrates deeper into human-computer interactions, the concept of epistemic interaction emerges, aiming to refine these interactions to enhance system adaptability. This approach encourages minor, intentional adjustments in user behaviour to enrich the data available for system learning. This paper introduces epistemic interaction within the context of human-system communication, illustrating how deliberate interaction design can improve system understanding and adaptation. Through concrete examples, we demonstrate the potential of epistemic interaction to significantly advance human-computer interaction by leveraging intuitive human communication strategies to inform system design and functionality, offering a novel pathway for enriching user-system engagements.
SAP Sapphire 2024 - ASUG301 building better apps with SAP Fiori.pdfPeter Spielvogel
Building better applications for business users with SAP Fiori.
• What is SAP Fiori and why it matters to you
• How a better user experience drives measurable business benefits
• How to get started with SAP Fiori today
• How SAP Fiori elements accelerates application development
• How SAP Build Code includes SAP Fiori tools and other generative artificial intelligence capabilities
• How SAP Fiori paves the way for using AI in SAP apps
Securing your Kubernetes cluster_ a step-by-step guide to success !KatiaHIMEUR1
Today, after several years of existence, an extremely active community and an ultra-dynamic ecosystem, Kubernetes has established itself as the de facto standard in container orchestration. Thanks to a wide range of managed services, it has never been so easy to set up a ready-to-use Kubernetes cluster.
However, this ease of use means that the subject of security in Kubernetes is often left for later, or even neglected. This exposes companies to significant risks.
In this talk, I'll show you step-by-step how to secure your Kubernetes cluster for greater peace of mind and reliability.
LF Energy Webinar: Electrical Grid Modelling and Simulation Through PowSyBl -...DanBrown980551
Do you want to learn how to model and simulate an electrical network from scratch in under an hour?
Then welcome to this PowSyBl workshop, hosted by Rte, the French Transmission System Operator (TSO)!
During the webinar, you will discover the PowSyBl ecosystem as well as handle and study an electrical network through an interactive Python notebook.
PowSyBl is an open source project hosted by LF Energy, which offers a comprehensive set of features for electrical grid modelling and simulation. Among other advanced features, PowSyBl provides:
- A fully editable and extendable library for grid component modelling;
- Visualization tools to display your network;
- Grid simulation tools, such as power flows, security analyses (with or without remedial actions) and sensitivity analyses;
The framework is mostly written in Java, with a Python binding so that Python developers can access PowSyBl functionalities as well.
What you will learn during the webinar:
- For beginners: discover PowSyBl's functionalities through a quick general presentation and the notebook, without needing any expert coding skills;
- For advanced developers: master the skills to efficiently apply PowSyBl functionalities to your real-world scenarios.
Le nuove frontiere dell'AI nell'RPA con UiPath Autopilot™UiPathCommunity
In questo evento online gratuito, organizzato dalla Community Italiana di UiPath, potrai esplorare le nuove funzionalità di Autopilot, il tool che integra l'Intelligenza Artificiale nei processi di sviluppo e utilizzo delle Automazioni.
📕 Vedremo insieme alcuni esempi dell'utilizzo di Autopilot in diversi tool della Suite UiPath:
Autopilot per Studio Web
Autopilot per Studio
Autopilot per Apps
Clipboard AI
GenAI applicata alla Document Understanding
👨🏫👨💻 Speakers:
Stefano Negro, UiPath MVPx3, RPA Tech Lead @ BSP Consultant
Flavio Martinelli, UiPath MVP 2023, Technical Account Manager @UiPath
Andrei Tasca, RPA Solutions Team Lead @NTT Data
Smart TV Buyer Insights Survey 2024 by 91mobiles.pdf91mobiles
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State of ICS and IoT Cyber Threat Landscape Report 2024 previewPrayukth K V
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The latest edition of the OT/ICS and IoT security Threat Landscape Report 2024 also covers:
State of global ICS asset and network exposure
Sectoral targets and attacks as well as the cost of ransom
Global APT activity, AI usage, actor and tactic profiles, and implications
Rise in volumes of AI-powered cyberattacks
Major cyber events in 2024
Malware and malicious payload trends
Cyberattack types and targets
Vulnerability exploit attempts on CVEs
Attacks on counties – USA
Expansion of bot farms – how, where, and why
In-depth analysis of the cyber threat landscape across North America, South America, Europe, APAC, and the Middle East
Why are attacks on smart factories rising?
Cyber risk predictions
Axis of attacks – Europe
Systemic attacks in the Middle East
Download the full report from here:
https://sectrio.com/resources/ot-threat-landscape-reports/sectrio-releases-ot-ics-and-iot-security-threat-landscape-report-2024/
Dev Dives: Train smarter, not harder – active learning and UiPath LLMs for do...UiPathCommunity
💥 Speed, accuracy, and scaling – discover the superpowers of GenAI in action with UiPath Document Understanding and Communications Mining™:
See how to accelerate model training and optimize model performance with active learning
Learn about the latest enhancements to out-of-the-box document processing – with little to no training required
Get an exclusive demo of the new family of UiPath LLMs – GenAI models specialized for processing different types of documents and messages
This is a hands-on session specifically designed for automation developers and AI enthusiasts seeking to enhance their knowledge in leveraging the latest intelligent document processing capabilities offered by UiPath.
Speakers:
👨🏫 Andras Palfi, Senior Product Manager, UiPath
👩🏫 Lenka Dulovicova, Product Program Manager, UiPath
Welocme to ViralQR, your best QR code generator.ViralQR
Welcome to ViralQR, your best QR code generator available on the market!
At ViralQR, we design static and dynamic QR codes. Our mission is to make business operations easier and customer engagement more powerful through the use of QR technology. Be it a small-scale business or a huge enterprise, our easy-to-use platform provides multiple choices that can be tailored according to your company's branding and marketing strategies.
Our Vision
We are here to make the process of creating QR codes easy and smooth, thus enhancing customer interaction and making business more fluid. We very strongly believe in the ability of QR codes to change the world for businesses in their interaction with customers and are set on making that technology accessible and usable far and wide.
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Ever since its inception, we have successfully served many clients by offering QR codes in their marketing, service delivery, and collection of feedback across various industries. Our platform has been recognized for its ease of use and amazing features, which helped a business to make QR codes.
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At ViralQR, here is a comprehensive suite of services that caters to your very needs:
Static QR Codes: Create free static QR codes. These QR codes are able to store significant information such as URLs, vCards, plain text, emails and SMS, Wi-Fi credentials, and Bitcoin addresses.
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Pricing and Packages
Additionally, there is a 14-day free offer to ViralQR, which is an exceptional opportunity for new users to take a feel of this platform. One can easily subscribe from there and experience the full dynamic of using QR codes. The subscription plans are not only meant for business; they are priced very flexibly so that literally every business could afford to benefit from our service.
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ViralQR will provide services for marketing, advertising, catering, retail, and the like. The QR codes can be posted on fliers, packaging, merchandise, and banners, as well as to substitute for cash and cards in a restaurant or coffee shop. With QR codes integrated into your business, improve customer engagement and streamline operations.
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Subscribers of ViralQR receive detailed analytics and tracking tools in light of having a view of the core values of QR code performance. Our analytics dashboard shows aggregate views and unique views, as well as detailed information about each impression, including time, device, browser, and estimated location by city and country.
So, thank you for choosing ViralQR; we have an offer of nothing but the best in terms of QR code services to meet business diversity!
1. O. Rama MohanaRao, K.VenkataSubbaiah, K.NarayanaRao, T. SrinivasaRao / International
Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622 www.ijera.com
Vol. 3, Issue 3, May-Jun 2013, pp.635-641
635 | P a g e
Application of Univariate Statistical Process Control Charts for
Improvement of Hot Metal Quality- A Case Study
O. Rama MohanaRao*
, K.VenkataSubbaiah**
, K.NarayanaRao***
, T.
SrinivasaRao****
*
Human Resource Department, Visakhapatnam Steel plant, Visakhapatnam
**
Department of Mechanical Engg, Andhra University, Visakhapatnam
***
Department of Mechanical Engg, Govt. Polytechnic, Visakhapatnam
****
Design &Engg, Department, Visakhapatnam Steel plant, Visakhapatnam
Abstract
Statistical Process Control (SPC)
techniques are employed to monitor production
processes over time to detect changes. The basic
fundamentals of statistical process control and
control charting were proposed by Walter
Shewhart. Shewhart chart can be used for
monitoring both the mean and the variance of a
process, however sensitivity of chart to shifts
in the variance is often considered inadequate.
So, it is common to use the chart coupled with
either R chart or S chart, to monitor changes in
mean and variance of process. This paper
presents the application of univariate control
chart for monitoring hot metal making process
in a blast furnace of a steel industry for
continuous quality improvement.
Key Words - Control Chart, Regression Analysis,
Statistical Process Control, Univariate, chart
Introduction
Statistical process control is defined as the
application of statistical techniques to control a
process. SPC is concerned with quality of
conformance. There are a number of tools available
to the quality engineer that is effective for problem
solving process. The seven quality tools are
relatively simple but very powerful tools which
every quality engineer should aware. The tools are:
flow chart, run chart, process control chart, check
sheet, pareto diagram, cause and effect diagram,
and scatter diagram (Juran&Gryna, 1998) [1].
The primary function of a control chart is
to determine which type of variation is present and
whether adjustments need to be made to the
process. Variables data are those data which can be
measured on a continuous scale. Variable data are
plotted on a combination of two charts- usually a
chart and a range (R) chart. The chart plots
sample means. It is a measure of between-sample
variation and is used to assess the centering and
long term variation of the process. The range chart
measure the within sample variation and asses the
short term variation of the process.
A control chart is a statistical tool used to
distinguish between variation in a process resulting
from common causes and variation resulting from
special causes. It presents a graphic display of
process stability or instability over time. Every
process has variation. Some variation may be the
result of causes which are not normally present in
the process. This could be special cause variation.
Some variation is simply the result of numerous,
ever-present differences in the process. This is
common cause variation. Control Charts
differentiate between these two types of variation.
One goal of using a Control Chart is to achieve and
maintain process stability. Process stability is
defined as a state in which a process has displayed
a certain degree of consistency in the past and is
expected to continue to do so in the future. This
consistency is characterized by a stream of data
falling within control limits based on plus or minus
3 Sigma (standard deviation) of the centerline.
Control charts are useful, i) To monitor process
variation over time ii) To differentiate between
special cause and common cause variation iii) To
assess the effectiveness of changes to improve a
process iv) To communicate how a process
performed during a specific period. There are
different types of control charts, and the chart to be
used is determined largely by the type of data to be
plotted. Two important types of data are:
Continuous (measurement) data and discrete (or
count or attribute) data. Continuous data involve
measurement. Discrete data involve counts
(integers). For continuous data that are chart, R
chart are often appropriate.
SPC is founded on the principle that a
process will demonstrate consistent results unless it
is performed inconsistently. Thus, we can define
control limits for a consistent process and check
new process outputs in order to determine whether
there is a discrepancy or not. In the manufacturing
arena, it is not difficult to figure out the
relationship between product quality and the
corresponding production process. Therefore we
can measure process attributes, work on them,
improve according to the results and produce high
2. O. Rama MohanaRao, K.VenkataSubbaiah, K.NarayanaRao, T. SrinivasaRao / International
Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622 www.ijera.com
Vol. 3, Issue 3, May-Jun 2013, pp.635-641
636 | P a g e
quality products. There is a repetitive production of
the same products in high numbers and this brings
an opportunity to obtain large sample size for the
measured attributes. Moreover, the product is
concrete, and the attributes and variables to be
measured are easily defined. Consequently, the
only difficulty left is to define correct attributes and
collect data for utilizing the tools of Statistical
Process Control.
Literature review
Many businesses use Univariate Statistical
Process Control (USPC) in both their
manufacturing and service operations. Automated
data collection, low-cost computation, products and
processes designed to facilitate measurement,
demands for higher quality, lower cost, and
increased reliability have accelerated the use of
USPC.
A more modern approach for monitoring
process variability is to calculate the standard
deviation of each subgroup and use these values to
monitor the process standard deviation
(Montgomery & Runger, 2003)[2]. Samanta and
Bhattacherjee (2004)[3] analyzed quality
characteristic through construction of the Shewart
control chart for mining applications. Woodall and
Faltin, F. W. (1993) [4] presented an overview and
perspective on control charting. The role of SPC in
understanding, modeling, and reducing variability
over time remains very important. Weller (2000)
[5] discussed some practical applications of
Statistical Process Control. Mohammed (2004) [6]
adopted Statistical Process Control to improve the
quality of health care. Mohammed et al.,(2008) [7]
illustrated the selection and construction of four
commonly used control charts(xmr-chart, p-chart,
u-chart, c-chart) using examples from healthcare.
Grigg et al., (1998)[8] presented a case study
Statistical Process Control in fish product
packaging. Srikaeo, K., & Hourigan, J.A. (2002)
[9] discussed the use Statistical Process Control to
enhance the validation of critical control points
(CCPs) in shell egg washing. Rashed (2005) [10]
made a performance Analysis of Univariate and
Multivariate Quality Control Charts for Optimal
Process Control. Statistical Process Control
involves measurements of process performance that
aim to identify common and assignable causes of
quality variation and maintain process performance
within specified limits. (Mukbelbaarz, 2012)[11].
Sharaf El-Din et al (2006) [12], made a comparison
of the univariate out-of-control signals with the
multivariate out-of-control signals using a case
study of Steel making.
Methodology
3.1 Identification of critical process variables
Generally, not all quality attributes and
process variables are equally important. Some of
them may be very important (critical) for quality of
the product performance and some of them may be
less important. The practitioners should know what
input variables need to be stable in order to achieve
stable output, and then these variables are
appropriately to be monitored. The critical process
variable of the process may be identified by
Regression Analysis. Regression analysis is a
statistical technique for estimating the relationships
among variables in process and to predict a
dependent variable(s) from a number of input
variables.
T-Statistics is an aid in determining
whether an independent variable should be
included in a model or not. A variable is typically
included in a model if it exceeds a pre-determined
threshold level or ‘critical value’. Thresholds are
determined for different levels of confidence. For
e.g. to be 95% confident that a variable should be
included in a model, or in other words to tolerate
only a 5% chance that a variable doesn’t belong in
a model, a T-statistic of greater than 1.98 (if the
coefficient is positive) or less than -1.98 (if the
coefficient is negative) is considered statistically
significant.
3.2 Construction of Control Charts
To produce with consistent quality,
manufacturing processes need to be closely
monitored for any deviations in the process. Proper
analysis of control charts that are used to determine
the state of the process not only requires a thorough
knowledge and understanding of the underlying
distribution theories associated with control charts,
but also the experience of an expert in decision
making. There are many different types of control
chart and the chart to be used is determined largely
by the type of data to be plotted. This paper
formulates Shewhart mean ( ) and R- Chart for
diagnosis and interpretation.
Case study
The hot metal production process in Blast
Furnace of an integrated Steel Plant is shown in
Fig. 1. The purpose of a blast furnace is to
chemically reduce and physically convert iron
oxides into liquid iron called "hot metal". The blast
furnace is a huge, steel stack lined with refractory
brick, where the inputs are iron ore, sinter, coke
and limestone are dumped into the top, and
preheated air (sometimes with Oxygen Enrichment)
is blown into the bottom.
3. O. Rama MohanaRao, K.VenkataSubbaiah, K.NarayanaRao, T. SrinivasaRao / International
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Vol. 3, Issue 3, May-Jun 2013, pp.635-641
637 | P a g e
Fig.1: Process flow diagram of Hot Metal process
in Blast Furnace
In which, inputs like sinter, coke are pre-
processed before using in Blast Furnace. The hot
air that was blown into the bottom of the furnace
ascends to the top after going through numerous
chemical reactions. These raw materials require 6
to 8 hours to descend to the bottom of the furnace
where they become the final product of liquid iron
and slag. The output liquid iron known as hot metal
drained from the furnace at regular intervals from
the bottom through tap hole.
The hot metal with lower silicon and
Sulphur contents is required for the production of
Steel at Steel Melt Shop. Blast Furnace is supposed
to supply the hot metal with the following
composition to reduce defectives in Steel making at
Steel Melt Shop (SMS).
Silicon (Si) = 0.3 - 0.60%
Manganese (Mn) = 0.0 - 0.25%
Phosphorous (P) = 0.0 - 0.15%
Sulphur (S) = 0.0 - 0.04%
To produce desired quality hot metal, it is
essential to identify the critical process variable
from the given inputs and optimize them.
The various inputs for this process are
Blast Volume (M3
/Min), Blast Pressure (Kg/cm2
),
Blast Temperature (0
C), Steam (t/hr.), Oxygen
Enrichment(%), Oxygen (M3
/hr.), Ash, Moisture,
Volatile material, Fe(%),FeO (%), SiO2(%),
Al2O3(%), CaO (%), MgO (%), Mn (% ), SiO,
Sulpher (S), Phosphorus(P), Manganese (Mn),
Silica(Si), MnO (%) etc. The production data with
370 observations grouped by 46 days was collected
for the study.
Results & Discussion
5.1 Identification of critical process variables
In order to understand the relationship
between the input and output variables of the hot
metal, the data is analyzed and Regression analysis
has been carried out with the help of MINITAB
software. In the analysis, each output variable is
tested individually to find out relationship between
input process variables. A set of data containing
observations on 370 samples were analyzed. The
regression equation for each output variable is as
follows:
(1) The regression equation for Silicon to
input variables is
Si = - 36.8 - 0.000016 Blast Volume (M3
/Min) +
0.864 Blast Pressure (Kg/cm2
)- 0.830 Top Pressure
(Kg/cm2
) - 0.00130 Blast Temp (o
C) + 0.00413
Steam (t/hr) + 0.0402 % Oxygen Enrichment -
0.000014 Oxygen (M3
/hr.) + 0.420 Ash - 0.154
Moist + 0.524 VM + 0.389 FC - 0.0165 %Fe +
0.0397 %FeO- 0.372 %SiO2 + 0.793 %Al2O3 +
0.0609 %CaO - 0.0220 %MgO + 0.973 %Mn- 4.16
SiO2
Table 1. T & P values for Silicon.
Predictor T p
Constant -0.47 0.636
Blast Volume -0.24 0.811
Blast Pressure 1.89 0.06
Top Pressure -1.75 0.08
Blast Temp -3.34 0.001
Steam (t/hr) 1.18 0.239
Oxygen Enrichment 0.69 0.493
Oxygen -0.85 0.397
Ash 0.55 0.586
Moist -1.06 0.291
VM 0.67 0.501
FC 0.5 0.616
%Fe -0.24 0.814
%FeO 2.55 0.011
%SiO2 -3.66 0.000
%Al2O3 3.36 0.001
%CaO 1.1 0.271
%MgO -0.33 0.739
%Mn 3.19 0.002
SiO2 -3.09 0.002
(2) The regression equation for Manganese to
input variables is
Mn = - 7.00 + 0.000012 Blast Volume (M3
/Min) -
0.0169 Blast Pressure (Kg/cm2
) - 0.0141 Top
Pressure (Kg/cm2
) + 0.000314 Blast Temp (o
C) +
0.000390 Steam (t/hr) - 0.0115 % Oxygen
Enrichment + 0.000003 Oxygen (M3
/hr.) + 0.0622
Ash - 0.0049 Moist + 0.106 VM + 0.0746 FC -
0.00946 %Fe + 0.00173 %FeO - 0.0406 %SiO2 +
0.0784 %Al2O3 + 0.0166 %CaO - 0.0233 %MgO
+ 0.141 %Mn - 0.187 SiO2
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Vol. 3, Issue 3, May-Jun 2013, pp.635-641
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Table 2. T & P values for Manganese.
Predictor T p
Constant -0.73 0.465
Blast volume 1.43 0.154
Blast Pressure -0.3 0.765
Top Pressure -0.24 0.81
Blast Temp 6.55 0.000
Steam (t/hr) 0.9 0.367
Oxygen Enrichment -1.59 0.113
Oxygen 1.54 0.125
Ash 0.65 0.513
Moist -0.27 0.787
VM 1.11 0.269
FC 0.78 0.435
%Fe -1.1 0.274
%FeO 0.9 0.369
%SiO2 -3.23 0.001
%Al2O3 2.69 0.007
%CaO 2.44 0.015
%MgO -2.87 0.004
%Mn 3.74 0.000
SiO2 -1.13 0.261
(3) The regression equation for Sulpher to
input variables is
S = - 0.88 + 0.000009 Blast Volume (M3
/Min) -
0.0490 Blast Pressure (Kg/cm2
) + 0.0459 Top
Pressure (Kg/cm2
) + 0.000013 Blast Temp (o
C) -
0.00116 Steam (t/hr) - 0.00924 % Oxygen
Enrichment + 0.000002 Oxygen (M3
/hr.) + 0.0088
Ash + 0.0102 Moist - 0.0075 VM + 0.0076 FC +
0.00305 %Fe - 0.00090 %FeO + 0.00167 %SiO2 +
0.0120 %Al2O3 - 0.00326 %CaO + 0.00840 %MgO
+ 0.0575 %Mn - 0.0846 SiO2
Table 3. T & P values for Sulpher.
Predictor T p
Constant -0.16 0.874
Blast Volume 1.86 0.064
Blast Pressure -1.51 0.132
Top Pressure 1.37 0.173
Blast Temp 0.49 0.626
Steam -4.66 0.000
Oxygen Enrichment -2.22 0.027
Oxygen 2.15 0.032
Ash 0.16 0.872
Moist 0.98 0.328
VM -0.14 0.892
Predictor T p
FC 0.14 0.89
%Fe 0.61 0.539
%FeO -0.81 0.418
%SiO2 0.23 0.818
%Al2O3 0.72 0.474
%CaO -0.83 0.406
%MgO 1.8 0.073
%Mn 2.66 0.008
SiO2 -0.89 0.377
(4) The regression equation for Phosphorous
to input variables is
P = - 3.16 + 0.000023 Blast Volume (M3
/Min) -
0.0421 Blast Pressure (Kg/cm2
) + 0.0115 Top
Pressure (Kg/cm2
) - 0.000071 Blast Temp (o
C) +
0.000868 Steam (t/hr) - 0.00572 % Oxygen
Enrichment + 0.000000 Oxygen (M3
/hr.) + 0.0323
Ash - 0.0026 Moist + 0.0276 VM + 0.0358 FC -
0.00458 %Fe - 0.00238 %FeO + 0.00923 %SiO2 -
0.0139 %Al2O3 + 0.00114 %CaO - 0.0114 %MgO
- 0.0404 %Mn + 0.182 SiO2
Table 4. T & P values for Phosphorus.
Predictor T p
Constant -0.43 0.668
Blast Volume 3.62 0.000
Blast Pressure -0.97 0.332
Top Pressure 0.26 0.798
Blast Temp -1.93 0.055
Steam 2.61 0.009
Oxygen Enrichment -1.03 0.304
Oxygen 0.14 0.887
Ash 0.44 0.659
Moist -0.19 0.853
VM 0.37 0.708
FC 0.49 0.626
%Fe -0.69 0.491
%FeO -1.61 0.109
%SiO2 0.95 0.341
%Al2O3 -0.62 0.536
%CaO 0.22 0.828
%MgO -1.83 0.067
%Mn -1.4 0.163
SiO2 1.42 0.155
It is also necessary to examine the
dependency between these variables and also find
the critical process variables (p value < 0.05) which
5. O. Rama MohanaRao, K.VenkataSubbaiah, K.NarayanaRao, T. SrinivasaRao / International
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Vol. 3, Issue 3, May-Jun 2013, pp.635-641
639 | P a g e
may influence the quality of hot metal. The ‘p’ and
‘T’ values from the Table 1 to Table 4 of the
regression analysis are tabulated in Table 5 for
which ‘p’ value is less than 0.05. It is predicted
from the above, the critical process variables which
may influence the quality of Hot metal in this
process are Blast Volume, Blast Pressure, Steam,
Oxygen Enrichment, Oxygen, %FeO, %MgO,
%Mn, SiO2 and %Al2O3.
The T-statistic values for the above critical
process variables are also higher than the threshold
values (i.e. plus or minus 1.98 for 95 % confidence
level) indicating their significance presence of
dependence which may influence the quality of Hot
metal.
Table 5. Diagnosis of critical process variables
Predictor Variable T p
Blast Volume 3.62 0.000
Blast Pressure -3.34 0.001
Steam (t/hr) 2.61 0.009
Oxygen Enrichment -2.22 0.027
Oxygen 2.15 0.032
%FeO 2.55 0.011
%MgO 2.44 0.015
%Mn 2.66 0.008
SiO2 -3.09 0.002
%Al2O3 3.36 0.001
5.2 Control limits and construction of Control
charts
The data has been analyzed using chart
with customary plus/minus three sigma control
limits to identify the problematic observations. The
individual Control charts for the critical process
variables are drawn and shown (Fig.2 to Fig. 11).
Chart of Blast Volume is shown in
Fig.2 and the observations on the days of 9, 25 and
45falls outside the control limits, indicating an
unstable process. Test Results for Chart of Blast
Pressure is shown in Fig.3 and the observations on
the days of 9, 25, 45 and 46 falls outside the control
limits, indicating an unstable process. Test Results
for Chart of Steam is shown in Fig.4 and the
observations on the days of 6, 15, 25, 32, 35and 45
falls outside the control limits, indicating an
unstable process. Test Results for Chart of %
Oxygen Enrichment is shown in Fig. 5 and the
observations on the days of 7, 35, 36, 37, 38, and
45 falls outside the control limits, indicating an
unstable process. Test Results for Chart of
Oxygen is shown in Fig. 6 and the observations on
the days of 7, 35, 36, 37, 38, and 45 falls outside
the control limits, indicating an unstable process.
Test Results for Chart of % FeO is shown in Fig.
7 and the observations on the days of 5, 13, 14, 17,
18, and 22 falls outside the control limits,
indicating an unstable process. Test Results for
Chart of %MgO is shown in Fig. and the
observations on the days of 10, 20, 21, 22, 29, 30,
34, 35, 40, 42, and 45 falls outside the control
limits, indicating an unstable process. Test Results
for Chart of %Mn is shown in Fig. 9 and the
observations on the days of 31, 32, 33, 34, 35, 40,
45 and 46 falls outside the control limits, indicating
an unstable process. Test Results for Chart of
SiO2is shown in Fig. 10 and the observations on the
days of 1, 12, 13, 14, 30, 33 and 46 falls outside the
control limits, indicating an unstable process. Test
Results for Chart of %Al2O3is shown in Fig. 11
and the observations on the days of 15, 19, 20, 40,
42, 45 and 46 falls outside the control limits,
indicating an unstable process.
The input values for Blast Volume, Blast
Pressure, Steam, Oxygen Enrichment and Oxygen
remain unchanged for the entire day and there is no
difference in sample range with in a day. Hence the
significance of R- Chart does not exist for these
variables. It is evident from the R-Chart drawn for
the above variables in the Fig. 2 to Fig. 6 that many
of the observations fall outside control limits,
hence ignored.
Whereas the input values of other
variables like %FeO, %MgO, %Mn, SiO2, and
%Al2O3 may vary for each observation and
corresponding R- Charts were drawn and shown in
the Fig.7 to Fig.11 respectively. The out of control
limit points for MgO is on 46th
day, for Mn is on
10th
day, for SiO2 is on 3rd
and 30th
day and for
%Al2O3 is on 4th
, 8th
, 10th
, 37th
and 46th
days.
464136312621161161
6000
5000
4000
3000
Days
SampleMean
__
X=4691
UCL=5122
LCL=4260
464136312621161161
2000
1500
1000
500
0
Days
SampleRange
_
R=1156
UCL=2154
LCL=157
1
1
1
1111111111111111111111111111111111111111
Figure 2. Xbar-R Chart of Blast Volume
464136312621161161
4.0
3.5
3.0
2.5
2.0
Days
SampleMean
__
X=3.22
UCL=3.502
LCL=2.938
464136312621161161
1.6
1.2
0.8
0.4
0.0
Days
SampleRange
_
R=0.757
UCL=1.412
LCL=0.103
1
1
1
1
1111111111111111111111111111111111111111
Figure 3. Xbar-R Chart of Blast Pressure
6. O. Rama MohanaRao, K.VenkataSubbaiah, K.NarayanaRao, T. SrinivasaRao / International
Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622 www.ijera.com
Vol. 3, Issue 3, May-Jun 2013, pp.635-641
640 | P a g e
464136312621161161
15
10
5
0
Days
SampleMean
__
X=6.44
UCL=9.84
LCL=3.05
464136312621161161
20
15
10
5
0
Days
SampleRange
_
R=9.11
UCL=16.98
LCL=1.24
1
1
1
1
1
1
1111111111111111111111111111111111111111
Figure 4. Xbar-R Chart of Steam
464136312621161161
3
2
1
0
-1
Days
SampleMean
__
X=0.948
UCL=1.850
LCL=0.047
464136312621161161
4
3
2
1
0
Days
SampleRange
_
R=2.420
UCL=4.510
LCL=0.329
111111111
1111111111111111111111111111111111111111
Figure 5. Xbar-R Chart of % Enrichment
464136312621161161
10000
5000
0
-5000
Days
SampleMean
__
X=3550
UCL=6944
LCL=156
464136312621161161
20000
15000
10000
5000
0
Days
SampleRange
_
R=9110
UCL=16980
LCL=1240
1111111
1
11
1111111111111111111111111111111111111111
Figure 6. Xbar-R Chart of Oxygen
464136312621161161
12.0
11.5
11.0
10.5
Days
SampleMean
__
X=11.332
UCL=11.720
LCL=10.944
464136312621161161
2.0
1.5
1.0
0.5
0.0
Days
SampleRange
_
R=1.042
UCL=1.942
LCL=0.142
1
1
1
1
1
1
Figure 7. Xbar-R Chart of % FeO
464136312621161161
2.4
2.2
2.0
Days
SampleMean
__
X=2.21
UCL=2.3450
LCL=2.0750
464136312621161161
0.8
0.6
0.4
0.2
0.0
Days
SampleRange
_
R=0.3624
UCL=0.6755
LCL=0.0493
1
1
1
1
1
11
11
1
1
1
Figure 8. Xbar-R Chart of % MgO
464136312621161161
0.15
0.12
0.09
0.06
Days
SampleMean
__
X=0.108
UCL=0.1293
LCL=0.0867
464136312621161161
0.100
0.075
0.050
0.025
0.000
Days
SampleRange
_
R=0.0572
UCL=0.1067
LCL=0.0078
1
11
1
1
1
1
1
1
Figure 9. Xbar-R Chart of % Mn
464136312621161161
6.8
6.4
6.0
5.6
5.2
Days
SampleMean
__
X=5.99
UCL=6.327
LCL=5.653
464136312621161161
2.0
1.5
1.0
0.5
0.0
Days
SampleRange
_
R=0.905
UCL=1.687
LCL=0.123
1
1
1
1
11
1
1
1
Figure 10. Xbar-R Chart of % SiO2
464136312621161161
2.8
2.6
2.4
2.2
2.0
Days
SampleMean
__
X=2.447
UCL=2.6581
LCL=2.2359
464136312621161161
1.00
0.75
0.50
0.25
0.00
Days
SampleRange
_
R=0.567
UCL=1.056
LCL=0.077
1
1
1
1
1
11
11
11
11
1
111
1
Figure 11. Xbar-R Chart of % Al2O3
5.3 Results and discussion
Even if the variation in input variables
were known but the exact reason was difficult to
identify due to complexities in Blast Furnace
Process. Blast furnace slag composition has very
important behavior on its physicochemical
characteristics which affects the degree of
desulphurization, smoothness of operation, coke
consumption, hot metal productivity and its quality.
Al2O3, MgO and CaO that entered with
the iron ore, pellets, sinter or coke Si with the coke
ash and Sulphur enters through coke. In the normal
practice of blast furnace, slag is generally
accounted for by adjusting the overall composition
of CaO, SiO2, Al2O3 and MgO components. Since
the limestone (flux) is melted to become the slag
which removes Sulphur and other impurities, the
blast furnace operator may blend the different
grades of flux to produce the desired slag chemistry
and produce optimum hot metal quality. High top
pressure in Blast Furnaces can decrease % of Si in
7. O. Rama MohanaRao, K.VenkataSubbaiah, K.NarayanaRao, T. SrinivasaRao / International
Journal of Engineering Research and Applications (IJERA) ISSN: 2248-9622 www.ijera.com
Vol. 3, Issue 3, May-Jun 2013, pp.635-641
641 | P a g e
hot metal. An increase in the Fe content of sinter
may optimizes the Carbon/ Sulpher ratio and
decrease in Al2O3 content in hot metal. Manganese
reaction is always accompanied by silica reaction.
By adding additional SiO2 can reduce % Mn
content in hot metal. By implementing these steps
may lead to reduce the defectives in the output and
improves the quality of hot metal
Conclusion
This paper explores monitoring of
variables that effects hot metal making in an
integrated steel plant. In the first phase critical
process variables that affect the quality of hot metal
are identified through regression analysis. From the
study the variables namely, Blast Volume, Blast
Pressure, Steam,% Enrichment, Oxygen, %FeO,
%MgO, %Mn, SiO2, and %Al2O3 are identified as
critical process variables. Subsequently and R-
Charts are drawn to monitor these critical process
variables.
When the more number of variables are
correlated with each other, univariate control charts
are difficult to manage and analyze because of the
large numbers of control charts of each process
variable. An alternative approach is to construct a
single multivariate T2
control chart that minimizes
the occurrence of false process alarms. Hence this
study may be extended to multivariate control
charts that monitor the relationship between the
variables and identifies real process changes which
are not detectable through univariate charts.
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