PROCESS OPTIMIZATION: A Statistical Approach is a textbook for a course in Response Surface Methodology and experimental optimization techniques for industrial production processes and other "noisy" systems where the main emphasis is process optimization. The book can also be used as a reference tex
Process Optimization: A Statistical Approach
โ Scribed by Professor Enrique Del Castillo (auth.)
- Publisher
- Springer US
- Year
- 2007
- Tongue
- English
- Leaves
- 461
- Series
- International Series in Operations Research & Management Science 105
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
PROCESS OPTIMIZATION: A Statistical Approach
The major features of PROCESS OPTIMIZATION: A Statistical Approach are:
- It provides a complete exposition of mainstream experimental design techniques, including designs for first and second order models, response surface and optimal designs;
- Discusses mainstream response surface method in detail, including unconstrained and constrained (i.e., ridge analysis and dual and multiple response) approaches;
- Includes an extensive discussion of Robust Parameter Design (RPD) problems, including experimental design issues such as Split Plot designs and recent optimization approaches used for RPD;
- Presents a detailed treatment of Bayesian Optimization approaches based on experimental data (including an introduction to Bayesian inference), including single and multiple response optimization and model robust optimization;
- Provides an in-depth presentation of the statistical issues that arise in optimization problems, including confidence regions on the optimal settings of a process, stopping rules in experimental optimization and more;
- Contains a discussion on robust optimization methods as used in mathematical programming and their application in response surface optimization;
- Offers software programs written in MATLAB and MAPLE to implement Bayesian and frequentist process optimization methods;
- Provides an introduction to the optimization of computer and simulation experiments including and introduction to stochastic approximation and stochastic perturbation stochastic approximation (SPSA) methods;
- Includes an introduction to Kriging methods and experimental design for computer experiments;
Provides extensive appendices on Linear Regression, ANOVA, and Optimization Results.
โฆ Table of Contents
Front Matter....Pages i-xviii
Front Matter....Pages 2-2
An Overview of Empirical Process Optimization....Pages 3-25
Front Matter....Pages 28-28
Optimization Of First Order Models....Pages 29-43
Experimental Designs For First Order Models....Pages 45-83
Analysis and Optimization of Second Order Models....Pages 85-107
Experimental Designs for Second Order Models....Pages 109-156
Front Matter....Pages 158-158
Statistical Inference in First Order RSM Optimization....Pages 159-192
Statistical Inference in Second Order RSM Optimization....Pages 193-208
Bias Vs. Variance....Pages 209-219
Front Matter....Pages 222-222
Robust Parameter Design....Pages 223-278
Robust Optimization....Pages 279-287
Front Matter....Pages 290-290
Introduction to Bayesian Inference....Pages 291-319
Bayesian Methods for Process Optimization....Pages 321-364
Front Matter....Pages 366-366
Simulation Optimization....Pages 367-378
Kriging and Computer Experiments....Pages 379-395
Front Matter....Pages 398-398
Basics of Linear Regression....Pages 399-412
Analysis of Variance....Pages 413-427
Matrix Algebra and Optimization Results....Pages 429-441
Some Probability Results Used in Bayesian Inference....Pages 443-444
Back Matter....Pages 445-459
โฆ Subjects
Statistical Theory and Methods; Quality Control, Reliability, Safety and Risk; Statistics, general; Mathematical Modeling and Industrial Mathematics; Engineering Design; Optimization
๐ SIMILAR VOLUMES
PROCESS OPTIMIZATION: A Statistical Approach is a textbook for a course in Response Surface Methodology and experimental optimization techniques for industrial production processes and other "noisy" systems where the main emphasis is process optimization. The book can also be used as a reference tex
PROCESS OPTIMIZATION: A Statistical Approach is a textbook for a course in experimental optimization techniques for industrial production processes and other "noisy" systems where the main emphasis is process optimization. The book can also be used as a reference text by Industrial, Quality and Proc
A Unified Treatment of Non-Gaussian Processes and Nonlinear Signal Processing <P>Nonlinear signal processing methods are finding numerous applications in such fields as imaging, teletraffic, communications, hydrology, geology, and economics--fields where nonlinear systems and non-Gaussian processe
Nonlinear Signal Processing: A Statistical Approach focuses on unifying the study of a broad and important class of nonlinear signal processing algorithms which emerge from statistical estimation principles, and where the underlying signals are non-Gaussian, rather than Gaussian, processes. Notably,
Nonlinear Signal Processing: A Statistical Approach focuses on unifying the study of a broad and important class of nonlinear signal processing algorithms which emerge from statistical estimation principles, and where the underlying signals are non-Gaussian, rather than Gaussian, processes. Notably,