Research on the fault diagnosis method of AC power supply in substations based on a synchronous digital sampling technology

Author:

Fan Dehe,Li Xinhai,Wang Fan,Xiao Xing

Abstract

Abstract In order to improve the accuracy and efficiency of AC power supply fault diagnosis in substations, a fault diagnosis method of AC power supply in substations based on synchronous digital sampling technology is proposed and designed in this study. Based on the IEC 61850-9-2 communication protocol, the same sampling of the status data of the substation AC power supply is realized first. Then, in order to improve the fault diagnosis effect, the data is pre-processed such as de-noising and de-redundancy. Finally, the substation AC power supply fault diagnosis is carried out based on Dempster/Shafer (D-S). The experimental results show that for different types of faults, the diagnosis accuracy of the proposed method is higher than 95.5%, and the diagnosis time is less than 1.31 ms.

Publisher

IOP Publishing

Subject

Computer Science Applications,History,Education

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