Multivariate statistical process control with industrial applications (Q2772094)
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scientific article; zbMATH DE number 1706937
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Multivariate statistical process control with industrial applications |
scientific article; zbMATH DE number 1706937 |
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18 February 2002
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multivariate normal distribution
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Hotellings T-square
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control charts
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Historical Data Set
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graphical representations
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examples
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case studies
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0.9300618
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0.92430365
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0.9174688
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Multivariate statistical process control with industrial applications (English)
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This book centers around Hotelling's \(T^2\) statistics and its applications in statistical quality control. In the first three chapters, the \(T^2\) statistic, its basic concepts and the underlying assumptions are discussed in detail. Chapters 4 and 5 are devoted to the Historical Data Set, which is a collection of data obtained from a process operating in-control and used for the purpose of determining the control procedure and for comparison with actual samples. General guidelines for a HDS are given in Chapter 4 and the question how to detect outliers ist dealt with in Chapter 5.NEWLINENEWLINENEWLINEThe subsequent chapters deal with the application of \(T^2\) during the operational phase of a process. Chapter 6 discusses the question how to choose the error probabilities and Chapters 7 and 8 contain a detailed discussion on the interpretation of \(T^2\) signals in the bivariate and the general case by means of a decomposition technique. Chapter 9 treats various topics related to improving sensitivity of \(T^2\) charts, for instance with respect to small and abrupt changes. It follows an investigation of \(T^2\) charts in the presence of autocorrelation. The book is concluded by extending the \(T^2\) techniques to the case of batch processes.NEWLINENEWLINENEWLINEFor improving and simplifying understanding, many graphical representations, examples and case studies are used, moreover a CD-ROM for demonstration of multivariate techniques in statistical process control is included.
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