Optimal coordinate sensor placements for estimating mean and variance components of variation sources

In-process Optical Coordinate Measuring Machine (OCMM) offers the potential of diagnosing in a timely manner variation sources that are responsible for product quality defects. Such a sensor system can help manufacturers improve product quality and reduce process downtime. Effective use of sensory d...

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Bibliographic Details
Main Author: Liu, Qinyan
Other Authors: Ding, Yu
Format: Others
Language:en_US
Published: Texas A&M University 2005
Subjects:
Online Access:http://hdl.handle.net/1969.1/2238
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spelling ndltd-tamu.edu-oai-repository.tamu.edu-1969.1-22382013-01-08T10:37:45ZOptimal coordinate sensor placements for estimating mean and variance components of variation sourcesLiu, QinyanDiagnosabilityD-optimalityE-optimalityExchange AlgorithmRoot Cause AnalysisIn-process Optical Coordinate Measuring Machine (OCMM) offers the potential of diagnosing in a timely manner variation sources that are responsible for product quality defects. Such a sensor system can help manufacturers improve product quality and reduce process downtime. Effective use of sensory data in diagnosing variation sources depends on the optimal design of a sensor system, which is often known as the problem of sensor placements. This thesis addresses coordinate sensor placement in diagnosing dimensional variation sources in assembly processes. Sensitivity indices of detecting process mean and variance components are defined as the design criteria and are derived in terms of process layout and sensor deployment information. Exchange algorithms, originally developed in the research of optimal experiment deign, are employed and revised to maximize the detection sensitivity. A sort-and-cut procedure is used, which remarkably improve the algorithm efficiency of the current exchange routine. The resulting optimal sensor layouts and its implications are illustrated in the specific context of a panel assembly process.Texas A&M UniversityDing, Yu2005-08-29T14:36:32Z2005-08-29T14:36:32Z2003-052005-08-29T14:36:32ZBookThesisElectronic Thesistext343546 byteselectronicapplication/pdfborn digitalhttp://hdl.handle.net/1969.1/2238en_US
collection NDLTD
language en_US
format Others
sources NDLTD
topic Diagnosability
D-optimality
E-optimality
Exchange Algorithm
Root Cause Analysis
spellingShingle Diagnosability
D-optimality
E-optimality
Exchange Algorithm
Root Cause Analysis
Liu, Qinyan
Optimal coordinate sensor placements for estimating mean and variance components of variation sources
description In-process Optical Coordinate Measuring Machine (OCMM) offers the potential of diagnosing in a timely manner variation sources that are responsible for product quality defects. Such a sensor system can help manufacturers improve product quality and reduce process downtime. Effective use of sensory data in diagnosing variation sources depends on the optimal design of a sensor system, which is often known as the problem of sensor placements. This thesis addresses coordinate sensor placement in diagnosing dimensional variation sources in assembly processes. Sensitivity indices of detecting process mean and variance components are defined as the design criteria and are derived in terms of process layout and sensor deployment information. Exchange algorithms, originally developed in the research of optimal experiment deign, are employed and revised to maximize the detection sensitivity. A sort-and-cut procedure is used, which remarkably improve the algorithm efficiency of the current exchange routine. The resulting optimal sensor layouts and its implications are illustrated in the specific context of a panel assembly process.
author2 Ding, Yu
author_facet Ding, Yu
Liu, Qinyan
author Liu, Qinyan
author_sort Liu, Qinyan
title Optimal coordinate sensor placements for estimating mean and variance components of variation sources
title_short Optimal coordinate sensor placements for estimating mean and variance components of variation sources
title_full Optimal coordinate sensor placements for estimating mean and variance components of variation sources
title_fullStr Optimal coordinate sensor placements for estimating mean and variance components of variation sources
title_full_unstemmed Optimal coordinate sensor placements for estimating mean and variance components of variation sources
title_sort optimal coordinate sensor placements for estimating mean and variance components of variation sources
publisher Texas A&M University
publishDate 2005
url http://hdl.handle.net/1969.1/2238
work_keys_str_mv AT liuqinyan optimalcoordinatesensorplacementsforestimatingmeanandvariancecomponentsofvariationsources
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