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Fault Detection and Classification Based on Co-training of Semisupervised Machine Learning

机译:基于半监督机器学习协同训练的故障检测与分类

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This paper presents a semisupervised machine learning approach based on co-training of two classifiers for fault classification in both the transmission and the distribution systems with consideration of microgrids. Unlike previous work in which only labeled data are treated using supervised machine learning approaches, this study uses a semisupervised machine learning approach to handle both labeled and unlabeled data. In order to extract the hidden features in the current and voltage waveforms, the discrete wavelet transform is applied, while the harmony search algorithm is utilized to identify the optimal parameters of the wavelets. The performance of the proposed method was examined on both transmission and distribution test systems in a simulation environment, and also using experimental hardware. The results have shown that the proposed approach provides flexibility and adaptability in dealing with various system conditions/configurations with high accuracy. The results also have demonstrated that the proposed semisupervised approach can improve the fault classification accuracy compared to that obtained using other machine learning approaches (i.e., supervised and unsupervised) in the case of utilizing unlabeled data to build and train the classifier's model.
机译:本文提出了一种基于两个分类器的共同训练的半监督机器学习方法,用于在输电和配电系统中考虑微电网的故障分类。与以前的工作中仅使用监督的机器学习方法处理标记数据不同,本研究使用半监督的机器学习方法来处理标记的数据和未标记的数据。为了提取电流和电压波形中的隐藏特征,应用离散小波变换,而和声搜索算法则用于识别小波的最佳参数。在模拟环境中的传输和分配测试系统上,以及使用实验硬件,都对所提方法的性能进行了检验。结果表明,所提出的方法在处理各种系统条件/配置时具有很高的灵活性和适应性。结果还表明,与利用其他机器学习方法(即有监督和无监督)获得的故障分类精度相比,在利用未标记数据建立和训练分类器模型的情况下,所提出的半监督方法可以提高故障分类的准确性。

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