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Fault diagnosis approach of traction transformers in high-speed railway combining kernel principal component analysis with random forest

机译:核主成分分析与随机森林相结合的高速铁路牵引变压器故障诊断方法

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摘要

With the rapid development of high-speed railways, fault detection and diagnosis for traction transformers are more and more important, and the detection method with high accuracy is the key to assure the normal operation of the traction power supply system. A method based on kernel principal component analysis (KPCA) and random forest (RF) is proposed to diagnose the traction transformer faults in this study. In this method, KPCA can obtain more fault characteristics in high-dimensional space through the non-linear transformation of the original data with dissolved gas analysis, and RF can utilise these characteristics to construct the classifier group. The experimental results show that the combination of KPCA and RF can effectively extract more characteristics of traction transformer faults to construct the classifiers with better performance, which contributes to the higher accuracy in traction transformer fault diagnosis and gets better anti-jamming performance.
机译:随着高速铁路的飞速发展,牵引变压器的故障检测与诊断越来越重要,高精度的检测方法是保证牵引供电系统正常运行的关键。提出了一种基于核主成分分析(KPCA)和随机森林(RF)的诊断牵引变压器故障的方法。在这种方法中,KPCA可以通过使用溶解气体分析对原始数据进行非线性变换来在高维空间中获得更多的断层特征,而RF可以利用这些特征来构建分类器组。实验结果表明,KPCA和RF的结合可以有效地提取牵引变压器故障的更多特征,构造出性能更好的分类器,有助于牵引变压器故障诊断的准确性更高,抗干扰性能更好。

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