DocumentCode :
1727634
Title :
Feedwater heater system fault diagnosis during dynamic transient process based on two-stage neural networks
Author :
Ma Liangyu ; Wang Xiaoxia ; Cao Xing
Author_Institution :
Sch. of Control & Comput. Eng., North China Electr. Power Univ., Baoding, China
fYear :
2013
Firstpage :
6148
Lastpage :
6153
Abstract :
At present, researches on power plant fault diagnosis are mostly for steady-state work conditions and can not well adapt to the load-changing dynamic process, which greatly limits the practical application of a fault diagnosis system. Thus, a transient fault diagnosis approach based on two-stage neural networks was put forward for power plant thermal system fault diagnosis. An Elman recurrent neural network with time-delay inputs was applied to predict the expected normal values of the fault feature variables, and a BP neural network was used to identify the fault types. To improve the diagnostic effect for faults of varying severity under transient conditions, fault symptom zoom optimization technique was also used. Taking the high-pressure feedwater heater system of a 600MW supercritical power unit as the object investigated, the predictive model was built, trained and validated with large amount of historical operating data. The BP network fault diagnosis model was trained with the fault fuzzy knowledge library including typical fault samples. The real-time fault diagnosis program was then developed with MATLAB software. By communicating with the power plant simulator, intensive fault diagnosis tests were carried out. It was shown the suggested method can achieve good diagnosis results for the power plant thermal system under load-varying transient process.
Keywords :
backpropagation; fault diagnosis; heating; power engineering computing; power plants; power system faults; recurrent neural nets; BP neural network; Elman recurrent neural network; Matlab software; backpropagation; dynamic transient process; fault feature variables; fault fuzzy knowledge library; high-pressure feedwater heater system; intensive fault diagnosis tests; load-changing dynamic process; load-varying transient process; power 600 MW; power plant simulator; power plant thermal system fault diagnosis; steady-state work conditions; time-delay inputs; transient fault diagnosis approach; two-stage neural networks; Electronic mail; Fault diagnosis; Heating; Neural networks; Power generation; Process control; Transient analysis; Dynamic Transient Conditions; Fault Diagnosis; Feature Variables Prediction; Feedwater Heaters; Neural Network; Thermal System;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control Conference (CCC), 2013 32nd Chinese
Conference_Location :
Xi´an
Type :
conf
Filename :
6640515
Link To Document :
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