Neural expert system for vehicle fault diagnosis via the WWW

Fong, A.C.M. and Hui, S.C. (2004) Neural expert system for vehicle fault diagnosis via the WWW. In: Zhang, Y.-Q. (ed.) Computational Web Intelligence: Intelligent Technology for Web Applications. Series: Series in machine perception and artificial intelligence (58). World Scientific: Singapore, pp. 169-181. ISBN 9789812388278 (doi: 10.1142/9789812562432_0009)

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Publisher's URL: http://dx.doi.org/10.1142/9789812562432_0009

Abstract

The present trend in vehicle fault diagnosis is toward automation. Modern motor vehicles can often be modeled as a complex system made up of many components, making fault diagnosis difficult. Traditionally, effective vehicle fault diagnosis relies heavily on the experience and knowledge of human experts. This chapter presents the development of an expert system whose aim is to provide useful aid to human users in their attempts at vehicle fault diagnosis, even at remote locations via the WWW. The system employs a hybrid data mining process to effectively mine data stored in a vehicle service database, which contains past service records. Through the learning capability of a neural network, the system is able to generalize knowledge stored in the database. Performance evaluation of the system confirms its effectiveness both in terms of speed and accuracy.

Item Type:Book Sections
Status:Published
Glasgow Author(s) Enlighten ID:Fong, Dr Alvis Cheuk Min
Authors: Fong, A.C.M., and Hui, S.C.
College/School:College of Science and Engineering > School of Computing Science
Publisher:World Scientific
ISSN:1793-0839
ISBN:9789812388278

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