Application of artificial neural networks to monitor thermal condition of electrical equipment

Surbhi Pareek, Ritam Sharma, Ranjan Maheshwari
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引用次数: 7

Abstract

Infrared thermography technology is nowadays one of the most efficient non-destructive testing techniques for diagnosing faults of electrical systems and components. Overheated components in electrical systems and equipment indicate a poor connection, overloading, load imbalance or any other defect. Employing Thermographic inspection for finding such heat-related problems before subsequent failure of the system is practised in several industries. However, an automatic diagnostic system based on artificial neural network enhances the functionality by decreasing the operating time, human efforts and also increases the reliability of the system. The present article proposes employing artificial neural network (ANN) for inspection of electrical components and classifying their thermal conditions into three classes namely normal, intermediate and critical. Two different sets of inputs were provided to the neural network classifier, firstly statistical data of the temperature profile obtained from thermal images and secondly histogram based first order statistical features along with the glcm based features and both are compared to get the performance of network created. The multilayered perceptron network (MLP) was used as the classifier and the performance of the network was compared to two different training algorithms, viz. Levenberg-Marquardt (LM) and Scaled Conjugate Gradient (SCG). The performances were determined in terms of percentage of accuracy by plotting the confusion matrix. It was found that MLP network trained using the SCG algorithm gives the highest percentage of accuracy of classification i.e., 91.5% for the Statistical data features of the temperature profile as compared to the other set of features.
人工神经网络在电气设备热状态监测中的应用
红外热成像技术是目前诊断电气系统和部件故障最有效的无损检测技术之一。电气系统和设备中的过热部件表明连接不良,过载,负载不平衡或任何其他缺陷。在随后的系统故障之前,采用热成像检查来发现这种与热有关的问题在几个行业中都有应用。然而,基于人工神经网络的自动诊断系统通过减少操作时间和人力来增强功能,并提高了系统的可靠性。本文提出利用人工神经网络(ANN)对电气元件进行检测,并将其热状态分为正常、中等和临界三类。为神经网络分类器提供了两组不同的输入,首先是由热图像获得的温度分布统计数据,其次是基于直方图的一阶统计特征以及基于glcm的特征,并对两者进行了比较,以获得所创建网络的性能。使用多层感知器网络(MLP)作为分类器,并比较了Levenberg-Marquardt (LM)和缩放共轭梯度(SCG)两种不同的训练算法对网络性能的影响。通过绘制混淆矩阵来确定性能的准确度百分比。研究发现,与其他特征集相比,使用SCG算法训练的MLP网络对温度剖面的统计数据特征的分类准确率最高,即91.5%。
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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