An intelligent system for acoustic inspection of outdoor insulators

A. El-Hag, S. Mukhopadhyay, Kamil Al-Ali, AbdulRahman Al-Saleh
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引用次数: 9

Abstract

Condition monitoring of outdoor insulators is crucial to the integrity of distribution and transmission overhead lines. The objective of this paper is to use an Artificial Neural Network (ANN), along with a commercial acoustic sensor to measure and classify the different types of arcing on outdoor insulators. Experiments were performed, where both corona and dry band arcing were generated under lab test conditions which mimicked reality as closely as possible. The sound produced by corona, dry band arcing and acoustic noise was recorded using a commercial acoustic sensor. The problem of detecting corona, dry band arcing, or noise constituted a three-class pattern recognition problem, which is considered in this paper. The acquired acoustic signal was transferred to a low frequency signal using an envelope detection technique. Both the 100 and 150 Hz components of the envelope were used as input feature vectors for the developed ANN. Results show an average of around 90% success rate in classifying the measured acoustic signals.
一种用于室外绝缘体声学检测的智能系统
室外绝缘子的状态监测对配电和输电架空线路的完整性至关重要。本文的目的是使用人工神经网络(ANN)和商用声学传感器来测量和分类室外绝缘体上不同类型的电弧。进行了实验,在尽可能接近现实的实验室测试条件下产生日冕和干带电弧。用商用声学传感器记录了电晕、干带电弧和声学噪声产生的声音。本文考虑了电晕、干带电弧和噪声的检测问题,构成了一个三类模式识别问题。利用包络检测技术将采集到的声信号转换为低频信号。包络的100和150 Hz分量被用作开发的人工神经网络的输入特征向量。结果表明,对实测声信号的分类成功率平均在90%左右。
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