Profile Monitoring for Mixed Model Data
The initial portion of this research focuses on appropriate parameter estimators within a general context of multivariate quality control. The goal of Phase I analysis of multivariate quality control data is to identify multivariate outliers and step changes so that the estimated control limits are...
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ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-270542020-09-26T05:30:14Z Profile Monitoring for Mixed Model Data Jensen, Willis Aaron Statistics Birch, Jeffrey B. Vining, G. Geoffrey Reynolds, Marion R. Jr. Spitzner, Dan J. Woodall, William H. High Breakdown Estimation Multivariate Outliers Nonlinear Mixed Models Multivariate Statistical Process Control Linear Mixed Models The initial portion of this research focuses on appropriate parameter estimators within a general context of multivariate quality control. The goal of Phase I analysis of multivariate quality control data is to identify multivariate outliers and step changes so that the estimated control limits are sufficiently accurate for Phase II monitoring. High breakdown estimation methods based on the minimum volume ellipsoid (MVE) or the minimum covariance determinant (MCD) are well suited to detecting multivariate outliers in data. Because of the inherent difficulties in computation many algorithms have been proposed to obtain them. We consider the subsampling algorithm to obtain the MVE estimators and the FAST-MCD algorithm to obtain the MCD estimators. Previous studies have not clearly determined which of these two estimation methods is best for control chart applications. The comprehensive simulation study here gives guidance for when to use which estimator. Control limits are provided. High breakdown estimation methods such as MCD and MVE can be applied to a wide variety of multivariate quality control data. The final, lengthier portion of this research considers profile monitoring. Profile monitoring is a relatively new technique in quality control used when the product or process quality is best represented by a profile (or a curve) at each time period. The essential idea is often to model the profile via some parametric method and then monitor the estimated parameters over time to determine if there have been changes in the profiles. Because the estimated parameters may be correlated, it is convenient to monitor them using a multivariate control method such as the T-squared statistic. Previous modeling methods have not incorporated the correlation structure within the profiles. We propose the use of mixed models (both linear and nonlinear) to monitor linear and nonlinear profiles in order to account for the correlation structure within a profile. We consider various data scenarios and show using simulation when the mixed model approach is preferable to an approach that ignores the correlation structure. Our focus is on Phase I control chart applications. Ph. D. 2014-03-14T20:10:13Z 2014-03-14T20:10:13Z 2006-04-10 2006-04-20 2008-04-26 2006-04-26 Dissertation etd-04202006-134123 http://hdl.handle.net/10919/27054 http://scholar.lib.vt.edu/theses/available/etd-04202006-134123/ Appendices.pdf Chapter5.pdf Chapter6.pdf BackMatter.pdf Chapter8.pdf FrontMatter.pdf Chapter4.pdf Chapter2.pdf Chapter3.pdf Chapter7.pdf Chapter1.pdf In Copyright http://rightsstatements.org/vocab/InC/1.0/ application/pdf application/pdf application/pdf application/pdf application/pdf application/pdf application/pdf application/pdf application/pdf application/pdf application/pdf Virginia Tech |
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High Breakdown Estimation Multivariate Outliers Nonlinear Mixed Models Multivariate Statistical Process Control Linear Mixed Models |
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High Breakdown Estimation Multivariate Outliers Nonlinear Mixed Models Multivariate Statistical Process Control Linear Mixed Models Jensen, Willis Aaron Profile Monitoring for Mixed Model Data |
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The initial portion of this research focuses on appropriate parameter estimators within a general context of multivariate quality control. The goal of Phase I analysis of multivariate quality control data is to identify multivariate outliers and step changes so that the estimated control limits are sufficiently accurate for Phase II monitoring. High breakdown estimation methods based on the minimum volume ellipsoid (MVE) or the minimum covariance determinant (MCD) are well suited to detecting multivariate outliers in data. Because of the inherent difficulties in computation many algorithms have been proposed to
obtain them. We consider the subsampling algorithm to obtain the MVE estimators and the FAST-MCD algorithm to obtain the MCD estimators. Previous studies have not clearly determined which of these two estimation methods is best for control chart applications. The comprehensive simulation study here gives guidance for when to use which estimator. Control limits are provided. High breakdown estimation methods such as MCD and MVE can be applied to a wide variety of multivariate quality control data.
The final, lengthier portion of this research considers profile monitoring. Profile monitoring is a relatively new technique in quality control used when the product or process quality is best
represented by a profile (or a curve) at each time period. The essential idea is often to model the profile via some parametric method and then monitor the estimated parameters over time to
determine if there have been changes in the profiles. Because the estimated parameters may be correlated, it is convenient to monitor them using a multivariate control method such as the T-squared statistic. Previous modeling methods have not incorporated the correlation structure within the profiles. We propose the use of mixed models (both linear and nonlinear) to monitor linear and
nonlinear profiles in order to account for the correlation structure within a profile. We consider various data scenarios and show using simulation when the mixed model approach is preferable to an approach that ignores the correlation structure. Our focus is on Phase I control chart applications. === Ph. D. |
author2 |
Statistics |
author_facet |
Statistics Jensen, Willis Aaron |
author |
Jensen, Willis Aaron |
author_sort |
Jensen, Willis Aaron |
title |
Profile Monitoring for Mixed Model Data |
title_short |
Profile Monitoring for Mixed Model Data |
title_full |
Profile Monitoring for Mixed Model Data |
title_fullStr |
Profile Monitoring for Mixed Model Data |
title_full_unstemmed |
Profile Monitoring for Mixed Model Data |
title_sort |
profile monitoring for mixed model data |
publisher |
Virginia Tech |
publishDate |
2014 |
url |
http://hdl.handle.net/10919/27054 http://scholar.lib.vt.edu/theses/available/etd-04202006-134123/ |
work_keys_str_mv |
AT jensenwillisaaron profilemonitoringformixedmodeldata |
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