Flexible Mixed-Effect Modeling of Functional Data, with Applications to Process Monitoring

High levels of automation in manufacturing industries are leading to data sets of increasing size and dimension. The challenge facing statisticians and field professionals is to develop methodology to help meet this demand. Functional data is one example of high-dimensional data characterized by obs...

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Main Author: Mosesova, Sofia
Format: Others
Language:en
Published: 2007
Subjects:
Online Access:http://hdl.handle.net/10012/3104
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-OWTU.10012-31042013-10-04T04:07:47ZMosesova, Sofia2007-06-18T17:04:23Z2007-06-18T17:04:23Z2007-06-18T17:04:23Z2007-05-29http://hdl.handle.net/10012/3104High levels of automation in manufacturing industries are leading to data sets of increasing size and dimension. The challenge facing statisticians and field professionals is to develop methodology to help meet this demand. Functional data is one example of high-dimensional data characterized by observations recorded as a function of some continuous measure, such as time. An application considered in this thesis comes from the automotive industry. It involves a production process in which valve seats are force-fitted by a ram into cylinder heads of automobile engines. For each insertion, the force exerted by the ram is automatically recorded every fraction of a second for about two and a half seconds, generating a force profile. We can think of these profiles as individual functions of time summarized into collections of curves. The focus of this thesis is the analysis of functional process data such as the valve seat insertion example. A number of techniques are set forth. In the first part, two ways to model a single curve are considered: a b-spline fit via linear regression, and a nonlinear model based on differential equations. Each of these approaches is incorporated into a mixed effects model for multiple curves, and multivariate process monitoring techniques are applied to the predicted random effects in order to identify anomalous curves. In the second part, a Bayesian hierarchical model is used to cluster low-dimensional summaries of the curves into meaningful groups. The belief is that the clusters correspond to distinct types of processes (e.g. various types of “good” or “faulty” assembly). New observations can be assigned to one of these by calculating the probabilities of belonging to each cluster. Mahalanobis distances are used to identify new observations not belonging to any of the existing clusters. Synthetic and real data are used to validate the results.10354085 bytesapplication/pdfenfunctional datamixed effectsclusteringprocess monitoringBayesian random effects clusteringFlexible Mixed-Effect Modeling of Functional Data, with Applications to Process MonitoringThesis or DissertationStatistics and Actuarial ScienceDoctor of PhilosophyStatistics
collection NDLTD
language en
format Others
sources NDLTD
topic functional data
mixed effects
clustering
process monitoring
Bayesian random effects clustering
Statistics
spellingShingle functional data
mixed effects
clustering
process monitoring
Bayesian random effects clustering
Statistics
Mosesova, Sofia
Flexible Mixed-Effect Modeling of Functional Data, with Applications to Process Monitoring
description High levels of automation in manufacturing industries are leading to data sets of increasing size and dimension. The challenge facing statisticians and field professionals is to develop methodology to help meet this demand. Functional data is one example of high-dimensional data characterized by observations recorded as a function of some continuous measure, such as time. An application considered in this thesis comes from the automotive industry. It involves a production process in which valve seats are force-fitted by a ram into cylinder heads of automobile engines. For each insertion, the force exerted by the ram is automatically recorded every fraction of a second for about two and a half seconds, generating a force profile. We can think of these profiles as individual functions of time summarized into collections of curves. The focus of this thesis is the analysis of functional process data such as the valve seat insertion example. A number of techniques are set forth. In the first part, two ways to model a single curve are considered: a b-spline fit via linear regression, and a nonlinear model based on differential equations. Each of these approaches is incorporated into a mixed effects model for multiple curves, and multivariate process monitoring techniques are applied to the predicted random effects in order to identify anomalous curves. In the second part, a Bayesian hierarchical model is used to cluster low-dimensional summaries of the curves into meaningful groups. The belief is that the clusters correspond to distinct types of processes (e.g. various types of “good” or “faulty” assembly). New observations can be assigned to one of these by calculating the probabilities of belonging to each cluster. Mahalanobis distances are used to identify new observations not belonging to any of the existing clusters. Synthetic and real data are used to validate the results.
author Mosesova, Sofia
author_facet Mosesova, Sofia
author_sort Mosesova, Sofia
title Flexible Mixed-Effect Modeling of Functional Data, with Applications to Process Monitoring
title_short Flexible Mixed-Effect Modeling of Functional Data, with Applications to Process Monitoring
title_full Flexible Mixed-Effect Modeling of Functional Data, with Applications to Process Monitoring
title_fullStr Flexible Mixed-Effect Modeling of Functional Data, with Applications to Process Monitoring
title_full_unstemmed Flexible Mixed-Effect Modeling of Functional Data, with Applications to Process Monitoring
title_sort flexible mixed-effect modeling of functional data, with applications to process monitoring
publishDate 2007
url http://hdl.handle.net/10012/3104
work_keys_str_mv AT mosesovasofia flexiblemixedeffectmodelingoffunctionaldatawithapplicationstoprocessmonitoring
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