首页> 外国专利> DEEP PARALLEL FAULT DIAGNOSIS METHOD AND SYSTEM FOR DISSOLVED GAS IN TRANSFORMER OIL

DEEP PARALLEL FAULT DIAGNOSIS METHOD AND SYSTEM FOR DISSOLVED GAS IN TRANSFORMER OIL

机译:变压器油中溶解气体深度平行故障诊断方法和系统

摘要

The disclosure provides a deep parallel fault diagnosis method and system for dissolved gas in transformer oil, which relate to the field of power transformer fault diagnosis. The deep parallel fault diagnosis method includes: collecting monitoring information of dissolved gas in each transformer substation and performing a normalizing processing on the data; using the dissolved gas in the oil to build feature parameters as the input of the LSTM diagnosis model, and performing image processing on the data as the input of the CNN diagnosis model; building the LSTM diagnosis model and the CNN diagnosis model, respectively, and using the data set to train and verify the diagnosis models according to the proportion; and using the DS evidence theory calculation to perform a deep parallel fusion of the outputs of the softmax layers of the two deep learning models.
机译:本公开提供了一种深度平行的故障诊断方法和用于变压器油中的溶解气体的系统,涉及电力变压器故障诊断领域。 深度平行故障诊断方法包括:在每个变压器变电站中收集溶解气体的监测信息,并对数据进行正常化处理; 使用油中的溶解气来构建特征参数作为LSTM诊断模型的输入,并在数据上执行图像处理作为CNN诊断模型的输入; 建立LSTM诊断模型和CNN诊断模型,并使用数据集培训并根据比例验证诊断模型; 并使用DS证据理论计算,对两个深度学习模型的软MAX层输出进行深度平行融合。

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