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Characterization of acoustic signals due to surface discharges on H.V. glass insulators using wavelet radial basis function neural networks

机译:由于H.V上的表面放电而引起的声学信号的表征小波径向基函数神经网络的玻璃绝缘子

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摘要

A hybrid model incorporating wavelet and radial basis function neural network is presented which is used to detect, identify and characterize the acoustic signals due to surface discharge activity and hence differentiate abnormal operating conditions from the normal ones. The tests were carried out on cleaned and polluted high voltage glass insulators by using surface tracking and erosion test procedure of international electrotechnical commission 60587. A laboratory experiment was conducted by preparing the prototypes of the discharges. This study suggests a feature extraction and classification algorithm for surface discharge classification, which when combined together reduced the dimensionality of the feature space to a manageable dimension, by "marrying" the wavelet to radial basis function neural network very high levels of classification are achieved. Wavelet signal treatment toolbox is used to recover the surface discharge acoustic signals by eliminating the noisy portion and to reduce the dimension of the feature input vector. A radial basis function neural network classifier was used to classify the surface discharge and assess the suitability of this feature vector in classification. This learning method is proved to be effective by applying the wavelet radial basis function neural network in the classification of surface discharge fault data set. The test results show that the proposed approach is efficient and reliable.
机译:提出了一种结合小波和径向基函数神经网络的混合模型,该模型用于检测,识别和表征由于表面放电活动而产生的声信号,从而将异常工作条件与正常工作条件区分开。使用国际电工委员会60587的表面跟踪和腐蚀测试程序,在清洁和污染过的高压玻璃绝缘子上进行测试。通过制备放电样机进行了室内实验。这项研究提出了一种用于表面放电分类的特征提取和分类算法,当将该算法组合在一起时,通过将小波与径向基函数神经网络“结合”,可以将特征空间的维数降低到可管理的维数,从而实现了非常高的分类水平。小波信号处理工具箱用于通过消除噪声部分来恢复表面放电声信号,并减小特征输入向量的维数。使用径向基函数神经网络分类器对表面放电进行分类,并评估该特征向量在分类中的适用性。通过将小波径向基函数神经网络应用于地表放电故障数据集的分类,证明该学习方法是有效的。测试结果表明,该方法是有效且可靠的。

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