基于DGA的LightGBM-ICOA-CNN变压器故障诊断方法

LightGBM-ICOA-CNN Transformer Fault Diagnosis Method Based on DGA

  • 摘要: 为提高基于深度学习的变压器故障诊断精度,提出了基于油中溶解气体分析(Dissolved gas analysis,DGA)的LightGBM-ICOA-CNN变压器故障诊断方法。首先,基于变压器油中溶解气体含量对变压器特征变量进行丰富,利用轻量梯度提升机算法(Light gradient boosting machine,LightGBM)量化其重要性,实现特征变量优选;其次,引入改进浣熊优化算法(Improved coati optimization algorithm,ICOA)对卷积神经网络(Convolutional neural network,CNN)的学习率、卷积核大小与数量、全连接层神经元数量等超参数实现优化,提高模型诊断结果的准确率;最后,通过算例分析对建立的LightGBM-ICOA-CNN方法性能进行评估,验证了所提方法对变压器故障诊断的有效性,且收敛性较好,精度较高。

     

    Abstract: To improve the accuracy of transformer fault diagnosis based on deep learning, a LightGBM-ICOA-CNN transformer fault diagnosis method based on dissolved gas analysis(DGA) is proposed. Firstly, the characteristic variables of transformer are enriched based on the content of dissolved gas in transformer oil, and then the light gradient boosting machine(LightGBM) is used to quantify their importance and achieve the feature variable preference. Secondly, the improved coati optimization algorithm(ICOA) is introduced to optimize the hyperparameters of convolutional neural network(CNN) such as learning rate, size and number of convolutional kernels, and number of fully connected layer neurons to improve the accuracy of the model diagnosis results. Finally, the performance of the established LightGBM-ICOA-CNN method is evaluated by an example analysis, which verifies the effectiveness of the proposed method for transformer fault diagnosis, and the convergence is good and the accuracy is high.

     

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