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A neural space vector fault location for parallel double-circuit distribution lines

机译:并联双回路配电线的神经空间矢量故障定位

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摘要

A new approach to fault location for parallel double-circuit distribution power lines is presented. This approach uses the Clarke-Concordia transformation and an artificial neural network based learning algorithm. The α, β, 0 components of double line currents resulting from the Clarke-Concordia transformation are used to characterize different states of the system. The neural network is trained to map the non-linear relationship existing between fault location and characteristic eigenvalue. The proposed approach is able to identify and to locate different types of faults such as: phase-to-earth, phase-to-phase, two-phase-to-earth and three-phase. Using the eigenvalue as neural network inputs the proposed algorithm locates the fault distance. Results are presented which shows the effectiveness of the proposed algorithm for a correct fault location on a parallel double-circuit distribution line.
机译:提出了一种新的并联双回配电线路故障定位方法。这种方法使用Clarke-Concordia变换和基于人工神经网络的学习算法。 Clarke-Concordia变换产生的双线电流的α,β,0分量用于表征系统的不同状态。训练神经网络以映射故障位置和特征特征值之间存在的非线性关系。所提出的方法能够识别和定位不同类型的故障,例如:相对地,相间,两相对地和三相。使用特征值作为神经网络输入,该算法确定了故障距离。结果表明,所提出的算法在并联双回配电线路上正确定位故障的有效性。

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