Pollution state detection of insulators based on multisource imaging and information fusion

Lijun Jin, Jianyong Ai, Zhiren Tian, K. Gao, Hua Huang
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引用次数: 5

Abstract

The insulators' pollution flashover will cause huge economic losses. But at present, there is no non-contact method with high accuracy to detect the pollution state of insulators. This paper aims to realize the non-contact online detection of the pollution state on the surface of the insulators, by researching on multi-source imaging methods, including visible imaging, infrared imaging and ultraviolet imaging. The insulators were polluted according to the IEC standard, and the visible images of the polluted insulators were obtained to find the features of the images. After that, the polluted insulators were tested with their working voltage. At the same time, both the infrared images and ultraviolet images were shot, in order to get the features of the images and the relationship between the features and the pollution state of insulators. Finally, a BP neural network was set up, fused by the three kinds of imaging detection methods, and an accuracy test was conducted. Before the fusion, the accuracy of every one of the three imaging detecting method was no more than 85%. However, after the fusion, the accuracy of multi- source imaging detection rose to 90% and the incorrect detection disappeared.
基于多源成像和信息融合的绝缘子污染状态检测
绝缘子污闪将造成巨大的经济损失。但目前还没有一种高精度的非接触检测绝缘子污染状态的方法。本文旨在通过对可见光、红外、紫外等多源成像方法的研究,实现绝缘子表面污染状态的非接触式在线检测。根据IEC标准对绝缘子进行污染处理,得到污染绝缘子的可见图像,找出图像特征。然后对污染的绝缘子进行工作电压测试。同时对红外图像和紫外图像进行拍摄,得到图像的特征以及特征与绝缘子污染状态的关系。最后,建立BP神经网络,将三种成像检测方法进行融合,并进行精度测试。融合前,三种成像检测方法的准确率均不超过85%。而融合后的多源成像检测精度提高到90%以上,错误检测消失。
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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