Bayesian network classifiers for set-based collaborative design (Record no. 21127)

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fixed length control field 240603b xxu||||| |||| 00| 0 eng d
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Original cataloging agency AIKTC-KRRC
Transcribing agency AIKTC-KRRC
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9 (RLIN) 23576
Author Shahan, David W.
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Title Bayesian network classifiers for set-based collaborative design
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Volume, Issue number Vol.134(7), Jul
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Place of publication, distribution, etc. New York
Name of publisher, distributor, etc. ASME
Year 2012
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Pagination 1-14p.
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Summary, etc. Complex engineering design problems are often decomposed into a set of interdependent, distributed subproblems that are solved by domain-specific experts. These experts must resolve couplings between the subproblems and negotiate satisfactory, system-wide solutions. Set-based approaches help resolve these couplings by systematically mapping satisfactory regions of the design space for each subproblem and then intersecting those maps to identify mutually satisfactory system-wide solutions. In this paper, Bayesian network classifiers are introduced for mapping sets of promising designs, thereby classifying the design space into satisfactory and unsatisfactory regions. The approach is applied to two example problems—a spring design problem and a simplified, multilevel design problem for an unmanned aerial vehicle (UAV). The method is demonstrated to offer several advantages over competing techniques, including the ability to represent arbitrarily shaped and potentially disconnected regions of the design space and the ability to be updated straightforwardly as new information about the satisfactory design space is discovered. Although not demonstrated in this paper, it is also possible to interface the classifier with automated search and optimization techniques and to combine expert knowledge with the results of quantitative simulations when constructing the classifiers.
650 #0 - SUBJECT ADDED ENTRY--TOPICAL TERM
9 (RLIN) 4626
Topical term or geographic name entry element Mechanical Engineering
700 ## - ADDED ENTRY--PERSONAL NAME
9 (RLIN) 23578
Co-Author Seepersad, Carolyn Conner
773 0# - HOST ITEM ENTRY
Title Journal of mechanical design
Place, publisher, and date of publication New York ASME
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URL https://asmedigitalcollection.asme.org/mechanicaldesign/article-abstract/134/7/071001/409718/Bayesian-Network-Classifiers-for-Set-Based?redirectedFrom=fulltext
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Koha item type Articles Abstract Database
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          School of Engineering & Technology School of Engineering & Technology Archieval Section 2024-06-03 2024-0695 2024-06-03 2024-06-03 Articles Abstract Database
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