基于神经网络的相角跳变配电系统故障定位新方法

Juan David Gordill, David F. Celeita, G. Ramos
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引用次数: 0

摘要

本文提出了一种基于神经网络的配电系统故障定位方法,该方法采用相角跳变作为模型的单输入。采用IEEE 34节点系统。考虑了不同的故障场景来训练人工神经网络模型,包括各种初始角度、故障类型、故障电阻值和各种故障距离,这些通常会影响故障定位算法的准确性。在这个特殊的研究中没有考虑不同的荷载条件。针对特定故障类型和故障电阻值专门训练了9个不同的模型,并考虑针对每种故障类型专门训练了3个不同的模型,无论后者是否获得最佳性能,都对一个模型进行了所有故障场景的训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel fault location method for distribution systems using phase-angle jumps based on neural networks
This work presents a fault location method in distribution systems based on neural networks using a phase-angle jump as the model’s single input. The IEEE 34 nodes system was used. Different fault scenarios have been considered to train ANN models including various incipient angles, fault types, fault resistance values, and various fault distances that typically affect a fault location algorithm’s accuracy. Different load conditions were not considered in this particular study. Nine different models were trained specifically with particular fault types and fault resistance values and one model was trained with all fault scenarios regardless of the latter obtaining the best performance with three different models trained specifically for locating each fault type considered.
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