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An expert system for EMI data classification based on complex Bispectrum representation and deep learning methods

机译:基于复杂BISPectrum表示和深度学习方法的EMI数据分类专家系统

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This paper presents expert system framework based on Machine Learning (ML) for High-Voltage (HV) asset condition monitoring. The work investigates the classification of insulation faults in HV environment, based on real-world time series signals labelled by condition monitoring experts. Extending on our previous work, the proposed approach exploits the Bispectrum analysis and deep learning for feature extraction and classification. The calculated Bispectrum on time series signals can be deployed as the complex-valued Bispectrum, which contains phase information, or as its real-valued magnitude. This can be approached as an image classification problem which can be implemented in various deep networks including Convolutional Neural Network (CNN), Residual Neural Network (ResNet) and their complex-valued version. The employed deep networks performance is compared in terms of their classification accuracy. High classification performance is obtained which produces comparable performance with expert diagnosis. Thus, it can be interpreted as transfer of expert system to an intelligent system.
机译:本文介绍了基于机器学习(ML)的专家系统框架,用于高压(HV)资产条件监控。该工作根据条件监测专家标记的实际时间序列信号,调查HV环境中的绝缘故障分类。在我们以前的工作中延伸,该方法利用BISPectrum分析和深度学习进行特色提取和分类。计算出的BISPectrum ON时间序列信号可以部署为复值BISPectrum,其中包含相位信息或作为其实值幅度。这可以接近作为图像分类问题,该图像分类问题可以在包括卷积神经网络(CNN),残差神经网络(Reset)及其复值版本的各种深网络中实现。在其分类准确性方面比较了所采用的深网络性能。获得高分类性能,可与专家诊断产生相当的性能。因此,它可以被解释为专家系统的转移到智能系统。

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