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Transformer fault diagnosis based on chemical reaction optimization algorithm and relevance vector machine

机译:基于化学反应优化算法和相关矢量机的变压器故障诊断

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摘要

Power transformer is one of the most important equipment in power system. In order to predict the potential fault of power transformer and identify the fault types correctly, we proposed a transformer fault intelligent diagnosis model based on chemical reaction optimization (CRO) algorithm and relevance vector machine(RVM). RVM is a powerful machine learning method, which can solve nonlinear, high-dimensional classification problems with a limited number of samples. CRO algorithm has well global optimization and simple calculation, so it is suitable to solve parameter optimization problems. In this paper, firstly, a multi-layer RVM classification model was built by binary tree recognition strategy. Secondly, CRO algorithm was adopted to optimize the kernel function parameters which could enhance the performance of RVM classifiers. Compared with IEC three-ratio method and the RVM model, the CRO-RVM model not only overcomes the coding defect problem of IEC three-ratio method, but also has higher classification accuracy than the RVM model. Finally, the new method was applied to analyze a transformer fault case, Its predicted result accord well with the real situation. The research provides a practical method for transformer fault intelligent diagnosis and prediction.
机译:电力变压器是电力系统中最重要的设备之一。为了预测电力变压器的潜在故障并正确识别故障类型,我们提出了一种基于化学反应优化(CRO)算法和相关矢量机(RVM)的变压器故障智能诊断模型。 RVM是一种强大的机器学习方法,可以解决有限数量的样品的非线性,高维分类问题。 CRO算法具有良好的全局优化和简单的计算,因此它适合解决参数优化问题。在本文中,首先,由二进制树识别策略构建了多层RVM分类模型。其次,采用CRO算法优化了内核函数参数,可以提高RVM分类器的性能。与IEC三相法和RVM模型相比,CRO-RVM模型不仅克服了IEC三比例的编码缺陷问题,而且还具有比RVM模型更高的分类精度。最后,应用了新方法来分析变压器故障情况,其预测结果与真实情况很好。该研究为变压器故障智能诊断和预测提供了一种实用的方法。

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