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Fault Diagnosis of SOFC Stack Based on Neural...
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Fault Diagnosis of SOFC Stack Based on Neural Network Algorithm

Abstract

To realize the commercialization of SOFC, it must be ensured that it can work efficiently and stably. SOFC fault diagnosis becomes an essential part of the research. Due to the strong coupling of faults in the stack, this paper uses neural network algorithm to detect and diagnose faults. The simulation results verify that through the diagnosis of the test sample, the recognition rate of the test sample by the network is found to be 95%, which explains the neural network fault diagnosis model established in this paper on identifying the normal working state of the stack, the electrode stacking of the stack, and the gas leakage fault of the stack has good effectiveness and accuracy.

Authors

Xue T; Wu X; Xu Y; Jing S; Li Z; Jiang J; Deng Z; Fu X; Xi L

Volume

158

Pagination

pp. 1798-1803

Publisher

Elsevier

Publication Date

February 1, 2019

DOI

10.1016/j.egypro.2019.01.423

Conference proceedings

Energy Procedia

ISSN

1876-6102

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