Power Grid Facility Thermal Fault Diagnosis via Object Detection with Synthetic Infrared Imagery

Chao Wei
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引用次数: 2

Abstract

With the rapid development of the economy and society, the daily life of residents and the production activities of enterprises have an increasing demand for electric energy. With the surge of power facilities and power grid load, many potential dangerous factors in the power grid system are always threatening the safety of people's life and property. In order to maintain the safe and stable operation of power grid facilities, condition maintenance and fault diagnosis are particularly important. Traditional manual power facility diagnosis methods often have some problems and deficiencies and will encounter some difficulties in real-world applications. As a kind of instrument diagnostic method, infrared thermal imagery has attracted more and more attention in the electric power industry in recent years with its incomparable advantages. In this paper, we propose to utilize infrared imagery to diagnose the thermal fault of the power grid facilities, especially for the transformers. Specifically, we first employ the deep learning object detection models to locate the power grid facilities in the real world, then the diagnosis system can assess the condition of the facilities according to the infrared thermal imagery. To improve the detection rate of the power grid facilities, we typically synthesize the RGB based image and infrared thermal imagery. The experimental results show that the synthesis technique significantly promotes the detection results.
基于目标检测的综合红外图像电网设备热故障诊断
随着经济社会的快速发展,居民的日常生活和企业的生产活动对电能的需求越来越大。随着电力设施和电网负荷的激增,电网系统中存在的许多潜在危险因素时时威胁着人民生命财产安全。为了维护电网设施的安全稳定运行,状态维护和故障诊断显得尤为重要。传统的电力设施人工诊断方法往往存在一些问题和不足,在实际应用中会遇到一些困难。红外热成像作为一种仪器诊断手段,近年来以其无可比拟的优势在电力行业受到越来越多的关注。本文提出利用红外图像对电网设备,特别是变压器的热故障进行诊断。具体而言,我们首先利用深度学习目标检测模型对现实世界中的电网设施进行定位,然后根据红外热像图对设施进行状态评估。为了提高电网设施的检出率,我们通常将基于RGB的图像与红外热像相结合。实验结果表明,该合成技术显著提高了检测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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