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Improved Fault Classification in Series Compensated Transmission Line: Comparative Evaluation of Chebyshev Neural Network Training Algorithms

机译:串联补偿传输线中故障分类的改进:Chebyshev神经网络训练算法的比较评估

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This paper presents the Chebyshev neural network (ChNN) as an improved artificial intelligence technique for power system protection studies and examines the performances of two ChNN learning algorithms for fault classification of series compensated transmission line. The training algorithms are least-square Levenberg–Marquardt (LSLM) and recursive least-square algorithm with forgetting factor (RLSFF). The performances of these algorithms are assessed based on their generalization capability in relating the fault current parameters with an event of fault in the transmission line. The proposed algorithm is fast in response as it utilizes postfault samples of three phase currents measured at the relaying end corresponding to half-cycle duration only. After being trained with only a small part of the generated fault data, the algorithms have been tested over a large number of fault cases with wide variation of system and fault parameters. Based on the studies carried out in this paper, it has been found that although the RLSFF algorithm is faster for training the ChNN in the fault classification application for series compensated transmission lines, the LSLM algorithm has the best accuracy in testing. The results prove that the proposed ChNN-based method is accurate, fast, easy to design, and immune to the level of compensations. Thus, it is suitable for digital relaying applications.
机译:本文介绍了Chebyshev神经网络(ChNN)作为一种改进的人工智能技术,用于电力系统保护研究,并检验了用于串联补偿传输线故障分类的两种ChNN学习算法的性能。训练算法是最小二乘Levenberg-Marquardt(LSLM)和具有遗忘因子的递归最小二乘算法(RLSFF)。这些算法的性能是根据它们在传输电流中将故障电流参数与故障事件相关联的通用能力来评估的。所提出的算法响应速度很快,因为它利用了在中继端测得的三相电流的故障后样本(仅对应于半周期持续时间)。在仅使用生成的故障数据的一小部分进行训练之后,已经在系统和故障参数变化很大的大量故障情况下对算法进行了测试。基于本文的研究,发现尽管在串联补偿传输线的故障分类应用中使用RLSFF算法训练ChNN更快,但是LSLM算法在测试中具有最佳准确性。结果证明,所提出的基于ChNN的方法准确,快速,易于设计,并且不受补偿水平的影响。因此,它适用于数字中继应用。

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