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Machine learning techniques for robust classification of partial discharges in oil–paper insulation systems

机译:机器学习技术,可对油纸绝缘系统中的局部放电进行可靠的分类

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摘要

Ageing power systems infrastructure and concerns about climate change have increased interest in the next generation of grid infrastructure, known as the smart grid (SG). This study studies a particularly critical SG application: intelligent monitoring of power transformers for the early detection of insulation failure. Specifically, the focus is on the use of machine learning algorithms to distinguish between different types of partial discharges, which are closely correlated with insulation failure. Measurements made using acoustic emission sensors are used to train and test different classification algorithms. In an earlier study, high classification accuracies were achieved using training and test datasets collected under similar measurement conditions. However, under different conditions, classification accuracy was greatly reduced. Experiments using the latest classification techniques were performed, producing significant improvements in classification accuracy. A possible reason for these results could be a form of overfitting, and further experiments were conducted to test this hypothesis.
机译:老化的电力系统基础设施和对气候变化的担忧已使人们对下一代电网基础设施(称为智能电网(SG))的兴趣增加。这项研究研究了一个特别关键的SG应用:对变压器进行智能监视以及早发现绝缘故障。具体而言,重点是使用机器学习算法来区分与绝缘故障密切相关的不同类型的局部放电。使用声发射传感器进行的测量用于训练和测试不同的分类算法。在较早的研究中,使用在相似测量条件下收集的训练和测试数据集可以实现较高的分类精度。但是,在不同条件下,分类精度大大降低。进行了使用最新分类技术的实验,从而显着提高了分类准确性。这些结果的可能原因可能是过拟合的形式,并进行了进一步的实验以检验该假设。

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