Introduction to Statistical Process Control. Muhammad Amir Aslam

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from NCBAE, Lahore, in 2011. He also received Research Productivity Award for the year 2012 from Pakistan Council for Science and Technology. He was the second‐listed statistician in the Directory of Productivity Scientists of Pakistan 2013. He was the first‐listed statistician in the Directory of Productivity Scientists of Pakistan 2014. He got 371th position in the list of top 2210 profiles of Scientist of Saudi Institutions 2016. He received King Abdulaziz University Excellence Awards in scientific research.

      Aamir Saghir is currently working as an associate professor of statistics in Mirpur University of Science and Technology, Azad Jammu and Kashmir, Pakistan. He obtained his PhD degree in probability theory and mathematical statistics from Zhejiang University, China, in 2014. He obtained his MS degree in statistics from Quaid‐i‐Azam University, Islamabad, Pakistan, in 2008. His current research interests include statistical process monitoring and probability modeling. He published more than 34 articles in internationally well‐reputed International Scientific Indexing journals. He also served as a peer reviewer for many international journals in the field of statistics and mathematics.

      Liaquat Ahmad is currently working as an associate professor in the Department of Statistics and Computer Science, University of Veterinary and Animal Sciences (UVAS), Lahore, Pakistan. He has published 35 research articles in highly reputed international impact factor journals. He has also reviewed more than 30 articles of international journals in the field of statistics. His areas of interest are quality control charts, acceptance sampling plans, experimental design, biostatistical data analysis, and statistical softwares.

      This book is about the use of modern statistical methods for quality control. It provides comprehensive coverage of the subject from basic principles to state‐of‐the‐art concepts and applications. The objective is to give the reader a sound understanding of the principles and the basis for applying them in a variety of situations. Although statistical techniques are emphasized throughout, the book has a strong engineering and management orientation. Extensive knowledge of statistics is not a prerequisite for using this book. Readers whose background includes a basic course in statistical methods will find much of the material in this book easily accessible.

      The book originally grew out of our teaching, research, and consulting in the application of statistical methods for various fields, particularly for industries. It is designed as a textbook for students enrolled in colleges and universities, who are studying engineering, statistics, management, and related fields and are taking a first course in statistical quality control. The basic quality control course is often taught at the junior or senior level. All the standard topics for this course are covered in detail. We have also used the text materials extensively in programs for professional practitioners, including quality and reliability engineers, manufacturing and development engineers, product designers, managers, procurement specialists, marketing personnel, technicians and laboratory analysts, inspectors, and operators.

      In Chapter 3, control charts for monitoring the variable data processing are presented with basic concepts and implantation on real data sets. These Shewhart control charts certainly are not new, but its use in modern‐day business and industries is of tremendous value. Chapter 4 contains the new idea of control charts for multiple dependent state (MDS) sampling. The MDS sampling showed the efficiency of the attribute control chart over the traditional Shewhart attribute control chart in terms of average run length. The use of MDS sampling in the area of control chart has increased the sensitivity of the control charts to detect a small shift in the manufacturing process. For decision‐making, it uses the current subgroup information and previous subgroup information to make the decision about the state of the process. In Chapter 5, exponentially weighted moving average (EWMA) control charts using repetitive group sampling scheme are introduced. The methods for EWMA‐based control charts for a variety of situations, such as the average and the dispersion monitoring charts, single sampling, double sampling, multiple sampling, sequential sampling, repetitive sampling, ranked set sampling, and the MDS sampling charts have been developed in this chapter.

      Chapter 6 presents the different sampling schemes used to construct the control charts. Some of these sampling schemes are very simple to develop and understand, while some schemes are much complex to develop and understand. Each of the sampling schemes has advantages and disadvantages; therefore the quality control personnel can select according to the situation and the available resources. The use of modern statistical software has made a very simple task of developing a control chart for the non‐statisticians' quality control personnel as there is no need to develop and understand the complex sampling schemes. In Chapter 7, memory‐type control charts for monitoring attributes, such as the cumulative sum chart, the EWMA chart, and the moving average charts, are given with application in industries. Chapter 8 contains the material related to multivariate process control schemes. Nowadays, in industry, there are many situations in which the simultaneous monitoring or control of two or more related quality process characteristics is necessary. Monitoring these quality characteristics independently can be very misleading.

      Muhammad Aslam

      Aamir Saghir

      Liaquat Ahmad

      May 2020

      The writing of this book was a challenging task and needed many months of concerted efforts, which involved long working hours for which our families sacrificed tremendously over this long period of time. We thank them for their patience and understanding.

      We first recognize Elisha Benjamin, the project editor; Kathleen Santoloci, associate editor; and Mindy Okura‐Marszyck, senior editor, at Wiley, for providing many

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