Near optimal design of fixture layouts in multi-station assembly processes
This dissertation presents a methodology for the near optimal design of fixture layouts in multi-station assembly processes. An optimal fixture layout improves the robustness of a fixture system, reduces product variability and leads to manufacturing cost reduction. Three key aspects of the multi-...
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ndltd-tamu.edu-oai-repository.tamu.edu-1969.1-10762013-01-08T10:37:27ZNear optimal design of fixture layouts in multi-station assembly processesKim, PansooFixture Layout DesignData-mining MethodRevised Exchange AlgorithmE-optimalityThis dissertation presents a methodology for the near optimal design of fixture layouts in multi-station assembly processes. An optimal fixture layout improves the robustness of a fixture system, reduces product variability and leads to manufacturing cost reduction. Three key aspects of the multi-station fixture layout design are addressed: a multi-station variation propagation model, a quantitative measure of fixture design, and an effective and efficient optimization algorithm. Multi-station design may have high dimensions of design space, which can contain a lot of local optima. In this dissertation, I investigated two algorithms for optimal fixture layout designs. The first algorithm is an exchange algorithm, which was originally developed in the research of optimal experimental designs. I revised the exchange routine so that it can remarkably reduce the computing time without sacrificing the optimal values. The second algorithm uses data-mining methods such as clustering and classification. It appears that the data-mining method can find valuable design selection rules that can in turn help to locate the optimal design efficiently. Compared with other non-linear optimization algorithms such as the simplex search method, simulated annealing, genetic algorithm, the data-mining method performs the best and the revised exchange algorithm performs comparably to simulated annealing, but better than the others. A four-station assembly process for a sport utility vehicle (SUV) side frame is used throughout the dissertation to illustrate the relevant concepts and the resulting methodology.Texas A&M UniversityDing, Yu2004-11-15T19:45:40Z2004-11-15T19:45:40Z2004-082004-11-15T19:45:40ZElectronic Dissertationtext892365 bytes140040 byteselectronicapplication/pdftext/plainborn digitalhttp://hdl.handle.net/1969.1/1076en_US |
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Others
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Fixture Layout Design Data-mining Method Revised Exchange Algorithm E-optimality |
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Fixture Layout Design Data-mining Method Revised Exchange Algorithm E-optimality Kim, Pansoo Near optimal design of fixture layouts in multi-station assembly processes |
description |
This dissertation presents a methodology for the near optimal design of fixture layouts in multi-station assembly processes. An optimal fixture layout improves the robustness of a fixture system, reduces product variability and leads to manufacturing cost reduction. Three key aspects of the multi-station fixture layout design are addressed: a multi-station variation propagation model, a quantitative measure of fixture design, and an effective and efficient optimization algorithm. Multi-station design may have high dimensions of design space, which can contain a lot of local optima. In this dissertation, I investigated two algorithms for optimal fixture layout designs. The first algorithm is an exchange algorithm, which was originally developed in the research of optimal experimental designs. I revised the exchange routine so that it can remarkably reduce the computing time without sacrificing the optimal values. The second algorithm uses data-mining methods such as clustering and classification. It appears that the data-mining method can find valuable design selection rules that can in turn help to locate the optimal design efficiently. Compared with other non-linear optimization algorithms such as the simplex search method, simulated annealing, genetic algorithm, the data-mining method performs the best and the revised exchange algorithm performs comparably to simulated annealing, but better than the others. A four-station assembly process for a sport utility vehicle (SUV) side frame is used throughout the dissertation to illustrate the relevant concepts and the resulting methodology. |
author2 |
Ding, Yu |
author_facet |
Ding, Yu Kim, Pansoo |
author |
Kim, Pansoo |
author_sort |
Kim, Pansoo |
title |
Near optimal design of fixture layouts in multi-station assembly processes |
title_short |
Near optimal design of fixture layouts in multi-station assembly processes |
title_full |
Near optimal design of fixture layouts in multi-station assembly processes |
title_fullStr |
Near optimal design of fixture layouts in multi-station assembly processes |
title_full_unstemmed |
Near optimal design of fixture layouts in multi-station assembly processes |
title_sort |
near optimal design of fixture layouts in multi-station assembly processes |
publisher |
Texas A&M University |
publishDate |
2004 |
url |
http://hdl.handle.net/1969.1/1076 |
work_keys_str_mv |
AT kimpansoo nearoptimaldesignoffixturelayoutsinmultistationassemblyprocesses |
_version_ |
1716502663525302272 |