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Intelligent schemes for fault classification in mutually coupled series-compensated parallel transmission lines

机译:相互耦合串联补偿并行传输线的故障分类智能方案

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The protection of mutually coupled series capacitor-compensated (SCC) parallel transmission lines is a more complicated task than uncompensated lines due to the effect of mutual coupling, inter-circuit faults, and non-linearity of effective impedance of SCC line. A method that can overcome these issues and still work efficiently is a supervised learning-based method which is an adaptive technique. Hence, in this work, various supervised learning-based intelligent schemes like artificial neural network (ANN), support vector machines (SVM), and decision tree (DT) are employed to find a suitable method for the protection of series capacitor-compensated lines. Discrete wavelet transform has been used to process the three-phase current signals of the parallel lines measured at one terminal only. A moving window of 20 samples is selected, and approximate wavelet coefficient is calculated up to level 1 using DB-4 mother wavelet. The resultant is then given as input to the intelligent schemes (ANN, SVM, and DT). The proposed intelligent schemes have been tested with variety of fault conditions such as inter-circuit faults, cross-country faults, transforming faults, single-circuit operation, and high resistance faults. A large number of fault simulation studies corroborate that DT-based fault classification method is better than ANN and SVM. The accuracy of faulty phase and ground identification scheme is 100% for all the tested fault cases. Hence, the proposed supervised learning-based intelligent method can be implemented in real power system network effectively.
机译:相互耦合串联电容器补偿(SCC)并联传输线的保护是一种比不合格的线路更复杂的任务,因为相互耦合,电路间故障和SCC线路的有效阻抗的非线性度的影响。一种可以克服这些问题并仍然有效地工作的方法是一种受监督的基于学习的方法,它是自适应技术。因此,在这项工作中,采用了各种受监督的学习智能方案,如人工神经网络(ANN),支持向量机(SVM)和决策树(DT),以找到保护串联电容补偿线的合适方法。已经使用离散小波变换来处理仅在一个终端测量的并行线的三相电流信号。选择20个样本的移动窗口,并且使用DB-4母小波计算近似小波系数。然后将所得到的结果作为输入到智能方案(ANN,SVM和DT)。所提出的智能方案已经通过各种故障条件进行了测试,例如电路间故障,越野故障,转换故障,单电路操作和高电阻故障。大量故障仿真研究证实了基于DT的故障分类方法优于ANN和SVM。所有测试故障情况下,故障相位和地面识别方案的准确性为100%。因此,建议的受监督的学习智能方法有效地在实际电力系统网络中实现。

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