DocumentCode :
1041286
Title :
Dynamic Multiple Fault Diagnosis: Mathematical Formulations and Solution Techniques
Author :
Singh, Satnam ; Kodali, A. ; Choi, Kihoon ; Pattipati, Kirshna R. ; Namburu, Setu Madhavi ; Sean, Shunsuke Chigusa ; Prokhorov, Danil V. ; Qiao, Liu
Author_Institution :
Sci. Lab., Gen. Motors India, Bangalore
Volume :
39
Issue :
1
fYear :
2009
Firstpage :
160
Lastpage :
176
Abstract :
Imperfect test outcomes, due to factors such as unreliable sensors, electromagnetic interference, and environmental conditions, manifest themselves as missed detections and false alarms. This paper develops near-optimal algorithms for dynamic multiple fault diagnosis (DMFD) problems in the presence of imperfect test outcomes. The DMFD problem is to determine the most likely evolution of component states, the one that best explains the observed test outcomes. Here, we discuss four formulations of the DMFD problem. These include the deterministic situation corresponding to perfectly observed coupled Markov decision processes to several partially observed factorial hidden Markov models ranging from the case where the imperfect test outcomes are functions of tests only to the case where the test outcomes are functions of faults and tests, as well as the case where the false alarms are associated with the nominal (fault free) case only. All these formulations are intractable NP-hard combinatorial optimization problems. Our solution scheme can be viewed as a two-level coordinated solution framework for the DMFD problem. At the top (coordination) level, we update the Lagrange multipliers (coordination variables, dual variables) using the subgradient method. At the bottom level, we use a dynamic programming technique (specifically, the Viterbi decoding or Max-sum algorithm) to solve each of the subproblems, one for each component state sequence. The key advantage of our approach is that it provides an approximate duality gap, which is a measure of the suboptimality of the DMFD solution. Computational results on real-world problems are presented. A detailed performance analysis of the proposed algorithm is also discussed.
Keywords :
automotive engineering; condition monitoring; decision theory; duality (mathematics); dynamic programming; fault diagnosis; fault trees; gradient methods; hidden Markov models; maintenance engineering; statistical testing; Lagrange multiplier; NP-hard combinatorial optimization problem; duality gap; dynamic multiple fault diagnosis; dynamic programming; electromagnetic interference; environmental condition; false alarm; fault free; imperfect test; near-optimal algorithm; partially observed factorial hidden Markov model; perfectly observed coupled Markov decision process; subgradient method; unreliable sensor; Decoding; Dynamic programming; Electromagnetic interference; Fault diagnosis; Heuristic algorithms; Hidden Markov models; Lagrangian functions; Performance analysis; Testing; Viterbi algorithm; Dynamic faults; hidden Markov models; imperfect tests; intermittent faults; multiple fault diagnosis;
fLanguage :
English
Journal_Title :
Systems, Man and Cybernetics, Part A: Systems and Humans, IEEE Transactions on
Publisher :
ieee
ISSN :
1083-4427
Type :
jour
DOI :
10.1109/TSMCA.2008.2007986
Filename :
4717835
Link To Document :
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