DocumentCode :
2643024
Title :
Neurofuzzy-based learning algorithm for fault detection & simulation
Author :
Gabbar, Hossam A. ; Akinlade, Damilola ; Sayed, Hanaa E. ; Osunleke, Ajiboye
Author_Institution :
Okayama Univ., Okayama
fYear :
2007
fDate :
17-20 Sept. 2007
Firstpage :
2286
Lastpage :
2291
Abstract :
Early fault detection is critical for safe and optimum plant operation and maintenance in any chemical plant. Quick corrective action can help in minimizing quality and productivity offsets and can assist in averting hazardous consequences in abnormal situations. In this paper, fault diagnosis based on trends analysis is considered where integrated equipment behaviors and operation trajectory are analyzed using a trend-matching approach. A qualitative representation of these trends using IF-THEN rules based on neuro-fuzzy approach is used to find root causes and possible and consequences for any detected abnormal situation. Experimental plant is constructed to provide real time fault simulation data for fault detection method verification.
Keywords :
chemical industry; fuzzy neural nets; industrial plants; learning (artificial intelligence); maintenance engineering; production engineering computing; chemical plant; corrective action; fault detection; fault simulation; if-then rules; neurofuzzy-based learning algorithm; plant maintenance; plant operation; Analytical models; Chemical hazards; Chemical industry; Chemical technology; Distributed control; Fault detection; Fault diagnosis; Productivity; Sensor systems; Technological innovation; FDS; fault diagnostic system; fault simulation; sensor analysis;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
SICE, 2007 Annual Conference
Conference_Location :
Takamatsu
Print_ISBN :
978-4-907764-27-2
Electronic_ISBN :
978-4-907764-27-2
Type :
conf
DOI :
10.1109/SICE.2007.4421370
Filename :
4421370
Link To Document :
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