DocumentCode :
252373
Title :
Research on fault diagnosis of turbine generator unit based on improved CPN neural network
Author :
Daogang Peng ; Yuliang Qian ; Hao Zhang ; Fei Xia
Author_Institution :
Coll. of Autom. Eng., Shanghai Univ. of Electr. Power, Shanghai, China
fYear :
2014
fDate :
13-15 Dec. 2014
Firstpage :
672
Lastpage :
677
Abstract :
Steam turbine generator unit is the core of thermal power plant, whose structure is complex and the operating environment is special. The fault diagnosis research of turbine generator unit has a practical significance in many aspects because of the inevitable failure of the turbine, which can improve the operational safety, reliability and the economic efficiency for the unit. In this paper, it takes the advantages of the combination of supervised and unsupervised types learning process of the Counter-Propagation Network, uses the fault spectrum feature vectors of turbine generator unit as the learning samples to train the CPN, and then improves the algorithm of CPN training process, intervenes the neurons artificially so that the information of the failure modes can be recorded within different neurons. In this way, the network can reflect the mapping relationship between the fault spectrum feature vectors and the fault types directly. Compared with the BP neural network and the improved CPN neural network, the simulation results show that the improved CPN neural network can overcome the shortcomings and deficiencies of BP neural network, can be better applied to the fault diagnosis of turbine generator unit.
Keywords :
fault diagnosis; neural nets; power generation economics; power generation faults; power generation reliability; power system analysis computing; steam power stations; steam turbines; unsupervised learning; CPN training process; counter-propagation network; economic efficiency improvement; fault diagnosis research; fault spectrum feature vectors; improved CPN neural network; operational safety improvement; reliability improvement; steam turbine generator unit; supervised type learning process; thermal power plant; unsupervised type learning process; Biological neural networks; Fault diagnosis; Generators; Neurons; Training; Turbines; Vectors;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
System Integration (SII), 2014 IEEE/SICE International Symposium on
Conference_Location :
Tokyo
Print_ISBN :
978-1-4799-6942-5
Type :
conf
DOI :
10.1109/SII.2014.7028119
Filename :
7028119
Link To Document :
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