DocumentCode
2310853
Title
Adaptive learning and neural networks in fault diagnosis
Author
Dalmi, I. ; Kovács, L. ; Loránt, I. ; Terstyánszky, G.
Author_Institution
Dept. of Autom., Miskole Univ., Hungary
Volume
1
fYear
1998
fDate
1-4 Sep 1998
Firstpage
284
Abstract
Neural networks provide a solution to overcome some of the drawbacks of quantitative fault diagnosis because they are capable of modelling systems by using training data off-line. The neural networks are particularly good for fault diagnosis of systems that have few a priori and imperfect and/or noisy data. Two basic learning methods and their application to fault diagnosis were studied: supervised and unsupervised learning methods. Two types of neural networks based on supervised learning were considered: multi-layered perceptron networks and radial basis function networks. Most neural network-based fault diagnosis systems require a priori fault classes that are used to train the networks in order to recognise faults during system operation. It may be extremely difficult or dangerous to acquire fault data from real systems. To solve this problem, unsupervised learning is recommended to be used. In this approach the neural network classifies the data and the network learns new faults and adapts them to similar faults already occurred. Two types of neural networks based on unsupervised learning are investigated: Kohonen and counterpropagation networks. As a result of research the radial basis function and counterpropagation network were selected and applied to a model of an autonomous mobile vehicle in order to diagnose fault in actuators, sensors and the system
Keywords
fault diagnosis; Kohonen networks; adaptive learning; autonomous mobile vehicle; counterpropagation networks; multi-layered perceptron networks; quantitative fault diagnosis; radial basis function networks;
fLanguage
English
Publisher
iet
Conference_Titel
Control '98. UKACC International Conference on (Conf. Publ. No. 455)
Conference_Location
Swansea
ISSN
0537-9989
Print_ISBN
0-85296-708-X
Type
conf
DOI
10.1049/cp:19980242
Filename
727926
Link To Document