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A transformer fault diagnosis method based on sub-clustering reduction and multiclass multi-kernel support vector machine

机译:基于子聚类约简和多类多核支持向量机的变压器故障诊断方法

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The application of big data technology to the equipment asset management helps to enhance the operational reliability of the energy system. This paper is focused on transformer fault diagnosis using support vector machine (SVM), one of the most commonly used data-mining methods. The direct multiclass SVM model is capable of obtaining a single classification function and avoids the difficulties of designing multiple groups of model parameters. However, when dealing with mass samples, the direct model will lead to low training efficiency and curse of dimensionality. To make the direct multiclass SVM-based transformer fault diagnosis not subject to the sample size limit, the sample reduction algorithm based on K-medoids clustering is introduced. Before multiclass SVM training, potential support vectors can be extracted from the large-scale training set via sub-clustering method, which improves the calculation efficiency. Multi-kernel learning is also applied to the SVM model to further boost the classification performance. The effectiveness and application prospect of the proposed method are verified in case study.
机译:大数据技术在设备资产管理中的应用有助于提高能源系统的运行可靠性。本文着重于使用支持向量机(SVM)的变压器故障诊断,这是最常用的数据挖掘方法之一。直接多类SVM模型能够获得单个分类函数,并且避免了设计多组模型参数的困难。然而,当处理大量样本时,直接模型将导致训练效率低下和维数诅咒。为了使直接基于多类支持向量机的变压器故障诊断不受样本量限制,引入了基于K-medoids聚类的样本约简算法。在进行多类SVM训练之前,可以通过子聚类方法从大规模训练集中提取潜在的支持向量,从而提高计算效率。多内核学习也应用于SVM模型,以进一步提高分类性能。通过实例验证了该方法的有效性和应用前景。

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