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Robust Heteroscedastic Probabilistic Neural Network for multiple source partial discharge pattern recognition - Significance of outliers on classification capability

机译:鲁棒的异方差概率神经网络用于多源局部放电模式识别-异常值对分类能力的意义

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Among various insulation diagnostic techniques utilized by researchers and personnel handling power equipment, partial discharge (PD) recognition and analysis has emerged as a vital methodology since it is inherently a non-intrusive testing strategy. Of late, the focus of researchers has shifted to the identification and classification of multiple sources of PD since it is most often encountered in practical insulation systems of power apparatus. Researchers have carried out studies to recognize multi-source PD and expounded the difficulties experienced in discriminating such discharge patterns. It has also been observed that identification of such patterns becomes increasingly difficult with the degree of overlap. Review of recent research studies indicates that classification of fully overlapped patterns is yet an unresolved issue and that techniques such as Mixed Weibull Functions, neural networks (NN) and Wavelet Transformation have been attempted with reasonable degree of success for single source and partially overlapped PD patterns only. This research study focuses on extending the previous work attempted by the authors in utilizing the novel approach of Heteroscedastic Probabilistic Neural Network (HRPNN) for classification of single source PD patterns to that of multiple PD sources also. Further, a Robust Heteroscedastic Probabilistic Neural Network (RHRPNN) is implemented for the classification of multi-source PD patterns. The RHRPNN utilizes the jackknife procedure for handling problems associated with training the neural network due to the presence of outliers, thus providing a compact yet effective set of centers in terms of probability density functions. In addition to the previously utilized traditional statistical operators in the pre-processing phase, a Two Pass Split Window (TPSW) scheme has also been developed to study and compare the classification capability of the RHRPNN with that of HRPNN. Detailed analysis of the performance of RHRPNN is carried out to ascertain the influence of the smoothing parameter in classifying PD patterns, to determine the role played by the pre-processing techniques during classification and to find the significance of the parsimonious set of centers in eliminating the effect of outliers during classification. Finally, the ability of the HRPNN and the RHRPNN in classifying large dataset multiple source PD patterns obtained from varying applied voltages is analyzed for its further applicability in real-time PD pattern recognition studies.
机译:在研究人员和操作动力设备的人员使用的各种绝缘诊断技术中,局部放电(PD)的识别和分析已成为一种至关重要的方法,因为它本质上是一种非侵入式测试策略。最近,研究人员的重点已转移到PD的多种来源的识别和分类上,因为在电力设备的实际绝缘系统中最常遇到PD。研究人员已经进行了研究,以识别多源PD,并阐明了在区分这种排放方式时遇到的困难。还已经观察到,随着重叠的程度,这种图案的识别变得越来越困难。近期研究的回顾表明,完全重叠模式的分类仍未解决,对于单一源和部分重叠的PD模式,尝试了混合威布尔函数,神经网络(NN)和小波变换等技术,并取得了一定程度的成功。只要。这项研究的重点是扩展作者先前尝试使用异方差概率神经网络(HRPNN)将单源PD模式分类为多种PD源的新方法。此外,实现了鲁棒的异方差概率神经网络(RHRPNN)来对多源PD模式进行分类。 RHRPNN利用折刀程序来处理由于异常值的存在而导致的与训练神经网络有关的问题,从而在概率密度函数方面提供了一个紧凑而有效的中心集。除了先前在预处理阶段使用的传统统计运算符之外,还开发了两遍拆分窗口(TPSW)方案来研究和比较RHRPNN和HRPNN的分类能力。对RHRPNN的性能进行了详细的分析,以确定平滑参数在PD模式分类中的影响,确定预处理技术在分类过程中所起的作用,并找到简约中心组在消除中心点中的意义。分类过程中异常值的影响。最后,分析了HRPNN和RHRPNN在对从变化的施加电压获得的多数据源PD模式进行大数据集分类的能力,以了解其在实时PD模式识别研究中的进一步适用性。

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