Bayesian Process Monitoring, Control and Optimization

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ISBN 9781584885443
Cat# C5440
 

Features

  • Presents a state-of-the-art survey of the engineering applications of Bayesian statistics in process monitoring, control, and optimization
  • Emphasizes modern computational techniques, such as Markov chain Monte Carlo (MCMC) and other simulation approaches
  • Explores the advantages and disadvantages of Bayesian techniques and frequentist approaches
  • Illustrates MCMC with the variance component model, using WinBUGS® and CODA
  • Demonstrates how Bayesian methods can be successfully applied in SPC, process adjustment, experimental design, and response surface methods (RSM)
  • Summary

    Although there are many Bayesian statistical books that focus on biostatistics and economics, there are few that address the problems faced by engineers. Bayesian Process Monitoring, Control and Optimization resolves this need, showing you how to oversee, adjust, and optimize industrial processes.

    Bridging the gap between application and development, this reference adopts Bayesian approaches for actual industrial practices. Divided into four parts, it begins with an introduction that discusses inferential problems and presents modern methods in Bayesian computation. The next part explains statistical process control (SPC) and examines both univariate and multivariate process monitoring techniques. Subsequent chapters present Bayesian approaches that can be used for time series data analysis and process control. The contributors include material on the Kalman filter, radar detection, and discrete part manufacturing. The last part focuses on process optimization and illustrates the application of Bayesian regression to sequential optimization, the use of Bayesian techniques for the analysis of saturated designs, and the function of predictive distributions for optimization.

    Written by international contributors from academia and industry, Bayesian Process Monitoring, Control and Optimization provides up-to-date applications of Bayesian processes for industrial, mechanical, electrical, and quality engineers as well as applied statisticians.

    Table of Contents

    INTRODUCTION TO BAYESIAN INFERENCE
    An Introduction to Bayesian Inference in Process Monitoring, Control, and Optimization
    Enrique del Castillo and Bianca M. Colosimo
    Modern Numerical Methods in Bayesian Computation
    Bianca M. Colosimo and Enrique del Castillo

    PROCESS MONITORING
    A Bayesian Approach to Statistical Process Control
    Panagiotis Tsiamyrtzis and Douglas M. Hawkins
    Empirical Bayes Process Monitoring Techniques
    Jyh-Jen Horng Shiau and Carol J. Feltz
    A Bayesian Approach to Monitoring the Mean of a Multivariate Normal Process
    Frank B. Alt
    Two-Sided Bayesian Control Charts for Short Production Runs
    George Tagaras and George Nenes
    Bayes' Rule of Information and Monitoring in Manufacturing Integrated Circuits
    Spencer Graves

    PROCESS CONTROL AND TIME SERIES ANALYSIS
    A Bayesian Approach to Signal Analysis of Pulse Trains
    Melinda Hock and Refik Soyer
    Bayesian Approaches to Process Monitoring and Process Adjustment
    Rong Pan

    PROCESS OPTIMIZATION AND DESIGNED EXPERIMENTS
    A Review of Bayesian Reliability Approaches to Multiple Response Surface Optimization
    John J. Peterson
    An Application of Bayesian Statistics to Sequential Empirical Optimization
    Carlos W. Moreno
    Bayesian Estimation from Saturated Factorial Designs
    Marta Y. Baba and Steven G. Gilmour

    Index

    Editorial Reviews

    … this volume is a special collection of informative and valuable articles in industrial statistics, particularly in the areas of process monitoring, control/adjustment, and optimization. The volume includes contributors from different parts of the world in both academia and industry sharing their research knowledge, experience, and wisdom in this particular area. In addition, this volume demonstrates the great effort being made to reach out to researchers in this area from both industry and academia.
    Technometrics, May 2009, Vol. 51, No. 2

    Overall, this is a nice reference text … The editors have done a nice job keeping the notation consistent throughout, and the book is well organized. An invaluable component of each chapter is the accompanying extensive list of references …
    —Timothy J. Robinson, University of Wyoming, JASA, May 2008, Vol. 62, No. 6

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