高速铁路牵引变电站室外绝缘子异常检测方法研究

Xuemin Lu, Yuchen Peng, W. Quan, N. Zhou, Dong Zou, Jim X. Chen
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引用次数: 2

摘要

室外绝缘子是高速铁路牵引变电站的重要组成部分,对维护输电线路的稳定,保证输电网络的正常运行具有重要意义。绝缘子一旦出现故障,将造成严重的输电故障和经济损失。为此,提出了一种基于目标检测和生成对抗网络的高速铁路牵引变电所室外绝缘子异常区域检测方法。首先,利用更快的RCNN从牵引变电站的输入图像中定位出绝缘子的区域。然后,将第一步得到的绝缘子图像输入到我们设计的生成式对抗网络中,生成假图像,该假图像是绝缘子的正常图像。最后,采用多尺度结构相似算法实现绝缘子异常检测和异常区域可视化。黑山牵引变电所的实验结果表明,该方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Anomaly Detection Method for Outdoors Insulator in High-Speed Railway Traction Substation
The outdoors insulator is an important component of the high-speed railway traction substation, which is of great significance to maintain the stability of transmission line and ensure the normal operation of transmission network. Once there is a fault for the insulator, it will cause serious transmission failure and economic loss. Therefore, a method is proposed to detect the abnormal areas of outdoors insulator in high-speed railway traction substation based on object detection and generative adversarial networks. First, we employ Faster RCNN to locate the area of insulator from the input image of traction substation. Then, the image of insulator obtained from the first step is fed into our designed generative adversarial networks to generate fake image, which is a normal image of insulator. Finally, multi-scale structural similarity algorithm is used to realize the anomaly detection of insulator and visualize anomalous areas. Experiments results on Heishan traction substation show that the proposed method is effective.
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