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Typical current modelling and feature extraction of high voltage circuit breaker towards condition analysis and fault diagnosis

机译:高压断路器对病症分析及故障诊断的典型电流建模与特征提取

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摘要

This study proposes a coil current model and an energy storage motor current (ESMC) model of circuit breakers (CBs) with spring operated mechanism. To make sure the signals generated by the models are identical to the actual ones, this study proposes a stochastic optimisation algorithm to optimise the model parameters. Based on the data produced by the optimised models, two fault diagnosis methods are proposed to assess operational condition and detect faults. The first method is based on fast template matching, which adopts K-means clustering algorithm to cluster the data and form a template library. The second one combines deep belief network and Softmax classifier, which can not only extract high level information of the characteristic signals, but also avoid the negative impact of the large dimension on classification results. In the simulation studies, the two methods are tested on various scenarios and their merits are demonstrated, respectively, where the latter one shows superior performance.
机译:本研究提出了一种带弹簧操作机构的线圈电流模型和电动电动机电流(ESMC)模型,具有弹簧操作机构。为了确保模型生成的信号与实际的信号相同,本研究提出了一种随机优化算法来优化模型参数。基于由优化模型产生的数据,提出了两个故障诊断方法来评估运行条件并检测故障。第一种方法基于快速模板匹配,它采用K-means群集算法来聚类数据并形成模板库。第二个组合了深度信念网络和软MAX分类器,这不仅可以提取特征信号的高级信息,还可以避免大维度对分类结果的负面影响。在模拟研究中,两种方法在各种场景上进行测试,分别证明了它们的优点,其中后者显示出优异的性能。

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