基于LSTM人工神经网络和DGA的变压器故障诊断方法研究

Z. Li, Yihua Qian, Qing Wang, Yaohong Zhao
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引用次数: 0

摘要

变压器中溶解气体的浓度与变压器的运行状态密切相关。针对变压器油溶解气体分析(DGA)问题,提出了一种基于长短期记忆(LSTM)人工神经网络的变压器溶解气体分析故障诊断方法。该方法使用南方电网公司采集的240组样本,其中180组作为训练数据,其余60组作为测试数据。输入由油中五种溶解气体组成,输出为相应的故障类型。通过实验确定网络的超参数(H1=H2=50),建立基于LSTM的变压器DGA故障诊断模型。研究结果表明,与传统神经网络诊断模型相比,LSTM诊断模型与实际故障类型具有更高的一致性。这些结果表明LSTM在变压器DGA故障诊断领域具有广阔的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on the Transformer Fault Diagnosis Method Based on LSTM Artificial Neural Network and DGA
The concentration of dissolved gas in transformers is closely related to their operating status. Aiming at dissolved gas analysis (DGA) in transformer oil, this paper proposes a fault diagnosis method for transformer DGA based on long-term and short-term memory (LSTM) artificial neural networks. The method uses 240 sets of samples collected by China Southern Power Grid Corporation, with 180 sets as training data and the remaining 60 sets as test data. The input consists of five kinds of dissolved gases in oil, and the output is the corresponding fault type. The hyperparameters (H1=H2=50) of the network are determined through experimentation to establish a transformer DGA fault diagnosis model based on LSTM. The research results indicate that the LSTM diagnosis model has higher consistency with actual fault types compared to the traditional neural network diagnosis model. These findings demonstrate the promising application prospects of LSTM in the field of transformer DGA fault diagnosis.
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