DocumentCode :
3147685
Title :
Application of learning theory to a single phase induction motor incipient fault detector artificial neural network
Author :
Chow, Mo-Yuen ; Bilbro, Griff L. ; Yee, Sui Oi
Author_Institution :
Dept. of Electr. & Comput. Eng., North Carolina State Univ., Raleigh, NC, USA
fYear :
1991
fDate :
23-26 Jul 1991
Firstpage :
97
Lastpage :
101
Abstract :
The generalization ability of a neural network in a specific application is of interest to many neural network designers. Learning theory, derived from maximum entropy, is applied to a neural network used for incipient fault detection in single-phase induction motors. The authors use learning theory to predict the proper number of training examples needed to reach a specific accuracy level (before actually training the network), so that excessive and unnecessary training examples and training time can be avoided. The results of learning theory are compared to actual training results to show the efficiency and reliability of the use of learning theory
Keywords :
fault location; induction motors; learning (artificial intelligence); neural nets; artificial neural network; incipient fault detector; learning theory; maximum entropy; single phase induction motor; Application software; Artificial neural networks; Damping; Electrical fault detection; Entropy; Fault detection; Induction motors; Insulation; Neural networks; Tin;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks to Power Systems, 1991., Proceedings of the First International Forum on Applications of
Conference_Location :
Seattle, WA
Print_ISBN :
0-7803-0065-3
Type :
conf
DOI :
10.1109/ANN.1991.213504
Filename :
213504
Link To Document :
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