基于粗糙集、主成分分析和颗粒计算的变压器套管状态监测

J. T. Maumela, F. Nelwamondo, T. Marwala
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引用次数: 2

摘要

介绍了粗糙神经网络(RNN)在轴套溶解气体分析(DGA)状态监测中的应用。本文通过研究RNN、反向传播神经网络(BPNN)和支持向量机(SVM)分类器在使用主成分分析(PCA)、粗糙集(RS)和增量粒度排序(GR++)作为预处理器降低DGA训练数据属性时的性能,进一步扩展了该分类器。由于RNN是使用反向传播方法构建的,因此RNN分类器的性能与BPNN的性能进行了基准测试。RNN分类器在使用PCA和RS约简数据集训练时,分类精度高于BPNN和SVM。RNN在使用RS和GR++约简数据集训练时,比BPNN和SVM的训练时间更短。PCA约简数据集提高了BPNN、RNN和SVM分类器的分类精度,而RS约简数据集仅提高了RNN分类器的分类精度。gr++降低了BPNN、RNN和SVM的分类精度,但增加了它们的训练时间。
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Condition monitoring of transformer bushings using Rough Sets, Principal Component Analysis and Granular Computation as preprocessors
This paper introduces the adaption of Rough Neural Networks (RNN) in bushings dissolved gas analysis (DGA) condition monitoring. The paper extended by investigating the RNN, Backpropagation Neural Networks (BPNN) and Support Vector Machine (SVM) classifiers' performance when Principal Component Analysis (PCA), Rough Sets (RS) and Incremental Granular Ranking (GR++) are used as preprocessors to reduce the attributes of the DGA training data. The performance of RNN classifier was benchmarked against the performance of BPNN since RNN was built using Backpropagation. The RNN classifier had higher classification accuracy than BPNN and SVM when trained using PCA and RS reduct dataset. RNN had a lower training time than BPNN and SVM when trained using RS and GR++ reduct dataset. PCA reducts dataset increased the classification accuracy of the BPNN, RNN and SVM classifiers, while RS reducts dataset only increased the classification accuracy of RNN classifiers. GR++ reduced the classification accuracy of BPNN, RNN and SVM but increased their training time.
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