DocumentCode
1966588
Title
Novel classifier fusion approahces for fault diagnosis in automotive systems
Author
Choi, Kihoon ; Singh, Satnam ; Kodali, Anuradha ; Pattipati, Krishna R. ; Sheppard, John W. ; Namburu, Setu Madhavi ; Chigusa, Shunsuke ; Prokhorov, Danil V. ; Qiao, Liu
Author_Institution
Connecticut Univ., Storrs
fYear
2007
fDate
17-20 Sept. 2007
Firstpage
260
Lastpage
269
Abstract
Faulty automotive systems significantly degrade the performance and efficiency of vehicles, and oftentimes are the major contributors of vehicle breakdown; they result in large expenditures for repair and maintenance. Therefore, intelligent vehicle health-monitoring schemes are needed for effective fault diagnosis in automotive systems. Previously, we developed a data-driven approach using a data reduction technique, coupled with a variety of classifiers, for fault diagnosis in automotive systems. In this paper, we consider the problem of fusing classifier decisions to reduce diagnostic errors. Specifically, we develop three novel classifier fusion approaches: class-specific Bayesian fusion, joint optimization of fusion center and of individual classifiers, and dynamic fusion. We evaluate the efficacies of these fusion approaches on an automotive engine data. The results demonstrate that dynamic fusion and joint optimization, and class-specific Bayesian fusion outperform traditional fusion approaches. We also show that learning the parameters of individual classifiers as part of the fusion architecture can provide better classification performance.
Keywords
Bayes methods; automotive engineering; fault diagnosis; optimisation; automotive systems; class-specific Bayesian fusion; classifier fusion; dynamic fusion; fault diagnosis; intelligent vehicle health-monitoring schemes; joint optimization; vehicle efficiency; vehicle performance; Automotive engineering; Bayesian methods; Degradation; Electric breakdown; Engines; Fault diagnosis; Intelligent vehicles; Mathematical model; Pattern recognition; Vehicle dynamics;
fLanguage
English
Publisher
ieee
Conference_Titel
Autotestcon, 2007 IEEE
Conference_Location
Baltimore, MD
ISSN
1088-7725
Print_ISBN
978-1-4244-1239-6
Electronic_ISBN
1088-7725
Type
conf
DOI
10.1109/AUTEST.2007.4374227
Filename
4374227
Link To Document