Low Voltage Series Arc Modelling Based on Neural Network Considering Harmonics Load Current

D. A. Asfani, I. M. Y. Negara, I. S. Hernanda, D. Fahmi, Shafirah Khairina Budiawan, Reynaldi Syahril
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Abstract

Series Arc is one of the electrical fault types in a low voltage power system. Series arc occurred when two points of the same conductor connection have different potential values. It usually happens on a cable with broken insulation. Most people rarely notice the phenomenon of series arc because it may not be visible. When it happens continuously, the temperature around the arc location will increase and potentially cause a fire. The value of the series arc fault current has a similar value as the nominal current and causes protection devices such as circuit-breaker and fuse unable to detect it. Low voltage series arc modeling is necessary to enable protection devices in detecting series arc faults. This experiment conducts low voltage arc modeling on non-linear loads containing THDi values and several line impedance values. The modeling input is the arc voltage, arc current, and arc power before the series arc occurred, and the modeling target is the arc resistance. The modeling method is by using the artificial neural network with feed-forward backpropagation. The experiment shows that the higher the THDi values in the system, the higher the series arc fault current. The modeling results show that the modeling can represent the series arc fault resistance with an MSE value less than 0.04.
考虑谐波负载电流的神经网络低压串联电弧建模
串联电弧是低压电力系统的电气故障类型之一。当同一导体连接的两点电位不同时,就会产生串联电弧。它通常发生在绝缘断裂的电缆上。大多数人很少注意到系列弧的现象,因为它可能不可见。当它连续发生时,电弧位置周围的温度将升高,并可能引起火灾。串联电弧故障电流的值与标称电流的值相近,导致断路器、熔断器等保护装置无法检测到。低压串联电弧建模是保护装置检测串联电弧故障的必要条件。本实验对包含THDi值和多个线路阻抗值的非线性负载进行了低压电弧建模。建模输入为串联电弧发生前的电弧电压、电弧电流和电弧功率,建模目标为电弧电阻。建模方法是采用前馈反向传播的人工神经网络。实验表明,系统中THDi值越高,串联电弧故障电流越大。建模结果表明,该模型能较好地表示串联电弧故障电阻,且MSE值小于0.04。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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