ISSN 2096-4498

   CN 44-1745/U

二维码

Tunnel Construction ›› 2022, Vol. 42 ›› Issue (S2): 541-547.DOI: 10.3973/j.issn.2096-4498.2022.S2.068

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Causes of Low Voltage Electric Appliance Failures of Shields and Design of TestBed Detection Method

ZHANG Zheng1, LIU Ruiqing2, HAN Weifeng3, YANG Lei4, *HUANG Liudu4, JIANG Yongcheng4   

  1. (1.College of Mechanical Engineering,Jiamusi University,Jiamusi 154007,Heilongjiang,China;2.Equipment Branch of China Railway Tunnel Group Co.,Ltd.,Guangzhou 511466,Guangdong,China;3.State Key Laboratory of Shield Tunneling and Tunneling Technology,Zhengzhou 450001,Henan,China;4.College of Engineering and Technology, Tianjin Agricultural University,Tianjin 300392,China)

  • Online:2022-12-30 Published:2023-03-27

Abstract:

There are many disadvantages in the fault detection of lowvoltage electrical apparatus in shields, such as lack of convenient and intelligent detection methods and judgment basis, complicated process, low detection efficiency, low accuracy and reliability. As a result, a method combining wavelet transform and deep learning technology is proposed to detect the performance index of lowvoltage electrical apparatus in shield. Based on several typical lowvoltage electrical faults in shield, the wavelet transform method is employed to extract the fault feature vector, which is taken as the input of the network, establishing a BP neural network for fault diagnosis network model. Finally, a detection method that can simulate the actual working conditions is proposed. The results show that: (1) The algorithm can quickly and accurately determine the fault problems and causes of the lowvoltage electrical apparatus in shield, and solve the problems of the existing detection device, such as single function, low efficiency, and no advance prediction ability of the electrical system remanufacture, full disassembly, and full inspection process when the shield stops. (2) The detection method is practical and stable, which can realize the simultaneous detection of multiple electrical components, thus greatly improve the work efficiency.

Key words:

shield, low voltage appliances, wavelet transform, BP neural network, fault diagnosis