89 / 2021-07-21 16:31:45
Deep learning based infrared image recognize and internal overheating fault diagnosis of gas insulated switchgear
终稿
hongtao li / Jiangsu Electric Power Research Institute
Current infrared inspection method could not identify inner connector temperature rise on different components of gas insulated switchgear (GIS). In this paper, a deep learning based infrared image recognize and internal overheating fault diagnosis method of GIS is purposed. First, various components of 110kV/220kV GIS which include are labeled from 700 field captured infrared images. A MASK-RCNN model is adopted to recognize different components of GIS. Second, surface temperature of different GIS components is calculated by grey level values of segmented infrared images. Finally, electromagnetic-fluid-thermal coupled numerical calculation are carried out to obtain relationship between surface and inner connector temperature rises, and temperature rise of inner connector is obtained from this relationship through calculated surface temperature. The GIS component recognition algorithm and the internal connector temperature inversion algorithm are integrated into the software developed based on PyQt. After field application, good application effects can be achieved.  Field applications show that the average recognition and diagnosis time for each infrared picture is about 4 seconds, which meets the real-time application requirements in the actual scene of power inspection
重要日期
  • 会议日期

    10月21日

    2021

    10月23日

    2021

  • 10月26日 2021

    注册截止日期

主办单位
Southeast University, China
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