AUTOMATIC DEFECT RECOGNITION FOR ELECTRICAL EQUIPMENT WITH ARTIFICIAL NEURAL NETWORKS

A.D. Chernova, A.A. Kosenko
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引用次数: 0

Abstract

Local heating is a sign of the development of defects in electrical equipment. It is detected by thermal imaging control. The result is thermal images of working electrical equipment – thermograms, which are analyzed using a visual assessment. However, in order to reduce the human factor in processing a large number of thermograms taken from unmanned aerial vehicles, the development of an automated defect recognition system has been proposed. The paper presents the results of recognizing defects in electrical equipment with artificial convolutional neural networks (CNN). It is proposed to use the learning transfer mechanism, the SqueezeNet architecture to classify thermograms into two classes: with a defect and without a defect. To assess the effectiveness of classification, the following metrics are proposed: sensitivity, specificity, balanced accuracy, Matthews correlation coefficient, F-measure. Testing of the trained CNN on a control sample of thermograms not used in training proves the effectiveness of the CNN in the tasks of recognizing defects in electrical equipment. It is promising to continue research on improving the speed and quality of classification of thermograms.
基于人工神经网络的电气设备缺陷自动识别
局部供暖是电气设备缺陷发展的标志。它是由热成像控制检测。结果是工作电气设备的热图像-热图,使用视觉评估对其进行分析。然而,为了减少处理大量无人机热像图时的人为因素,提出了一种自动缺陷识别系统的开发。本文介绍了用人工卷积神经网络(CNN)识别电气设备缺陷的结果。提出了使用学习迁移机制和SqueezeNet架构将热图分为两类:有缺陷和没有缺陷。为了评估分类的有效性,提出了以下指标:敏感性、特异性、平衡准确性、马修斯相关系数、F-measure。训练后的CNN在未用于训练的热像图的控制样本上进行测试,证明了CNN在电气设备缺陷识别任务中的有效性。在提高热图分类速度和质量方面的研究是有前景的。
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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