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A Structure for Automatically Extracting and Identifying Internal Overvoltage Measured in Distribution Networks Based on FSWT-SSAE

机译:基于FSWT-SSAE的配电网内部过电压自动提取与识别结构

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The overvoltage is the main cause of insulation damage in power grid. It is of great practical significance to study the feature extraction and classification of the measured overvoltage in the distribution network. This paper constructed the band of time-frequency distribution of overvoltage in Lo Shu Square based on Frequency Slice Wavelet Transform and completed the overall and detail information of overvoltage extraction. The measured overvoltage feature automatically extraction and classification is achieved based on modified Stacked Sparse Autoencoders. The influence of key parameters, namely, the size of convolutional patches, the number of convolutional maps and sparsity parameter in modified SSAEs are analyzed respectively, and the best optimization parameters are determined. The results show that this structure can extract and classify the measured overvoltage waveforms automatically.
机译:过电压是电网绝缘损坏的主要原因。研究配电网中测得的过电压的特征提取和分类具有重要的现实意义。本文基于频率切片小波变换构造了罗树广场过电压时频分布的频带,并完成了过电压提取的总体和详细信息。基于修改后的堆叠式稀疏自动编码器,可以自动提取和分类所测量的过压特性。分别分析了关键参数的影响,即卷积斑块的大小,卷积图的数量和稀疏性参数在改进的SSAE中的影响,并确定了最佳的优化参数。结果表明,该结构可以自动提取和分类测得的过电压波形。

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