Authors
Sandro Saitta, Prakash Kripakaran, Benny Raphael, Ian F Smith
Publication date
2008/9
Journal
Journal of Computing in Civil Engineering
Volume
22
Issue
5
Pages
292-302
Publisher
American Society of Civil Engineers
Description
System identification involves identification of a behavioral model that best explains the measured behavior of a structure. This research uses a strategy of generation and iterative filtering of multiple candidate models for system identification. The task of model filtering is supported by measurement-interpretation cycles. During each cycle, the location for subsequent measurement is chosen using the predictions of current candidate models. In this paper, data mining techniques are proposed to support such measurement-interpretation cycles. Candidate models, representing possible states of a structure, are clustered using a technique that combines principal component analysis and -means clustering. Representative models of each cluster are used to place sensors for subsequent measurement on the basis of the entropy of their predictions. Results show that clustering is necessary to identify the different …
Total citations
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Scholar articles
S Saitta, P Kripakaran, B Raphael, IF Smith - Journal of Computing in Civil Engineering, 2008