DocumentCode
1725377
Title
A Genetic Training Algorithm of Wavelet Neural Networks for Fault Prognostics in Condition Based Maintenance
Author
Lei, Zhang ; Xingshan, Li ; Jinsong, Yu ; ZhanBao, Gao
Author_Institution
BeiHang Univ., Beijing
fYear
2007
Abstract
The main idea of condition based maintenance (CBM) is to monitor the health of critical machine components and system almost continuously during operation and maintenance actions based on the assessed condition. If done correctly, CBM has the benefits such as reducing catastrophic failures, minimizing maintenance and logistical cost, maximizing system security and availability and improving platform reliability. A CBM system usually has four major functional modules, namely feature extraction, diagnostics, prognostics and decision support. Among them, fault prognostics is the most important enabling technology. It is the most challenging research area which is so called crystal ball of CBM. But it has the potential to be the most beneficial. This paper presents a fault prognostic algorithm based on a generic wavelet neural networks (WNN) architecture. Its training process based on genetic algorithm is described in detail. Finally, the fault prognostic algorithm has been verified using a simulation experiment, and the results are very satisfactory.
Keywords
condition monitoring; fault diagnosis; genetic algorithms; maintenance engineering; wavelet transforms; condition based maintenance; fault prognostics; genetic training algorithm; wavelet neural networks; Artificial neural networks; Availability; Condition monitoring; Costs; Feature extraction; Genetic algorithms; Instruments; Life estimation; Maintenance; Neural networks; Condition based maintenance; fault prognostics; genetic algorithm; wavelet neural networks;
fLanguage
English
Publisher
ieee
Conference_Titel
Electronic Measurement and Instruments, 2007. ICEMI '07. 8th International Conference on
Conference_Location
Xi´an
Print_ISBN
978-1-4244-1136-8
Electronic_ISBN
978-1-4244-1136-8
Type
conf
DOI
10.1109/ICEMI.2007.4350749
Filename
4350749
Link To Document