Fault prediction model on electrical power network using artificial neural network-based time series: A case study of Ayede-Eruwa/ Lanlate Feeder

Bolarinwa Samson Adeleke, Adewale Abayomi Alabi, Sunday Oyinlola Ogundoyin, Ademola Adekunle Araromi
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Abstract

Increase in size of electrical power network usually results in a rise in fault level and consequently in huge economic losses to energy providers and consumers in the distribution systems. Therefore, it is very important to be proactive in dealing with faults on distribution feeder systems not only to reduce financial havoc, but to save lives and improve the quality of life of the people. A case study of Ayede-Eruwa/Lanlate Oyo State, Nigeria 33kV line is considered. An Artificial Neural Network based Time Series (ANN-TS) fault predictive model is developed for forecasting of faults on the above chosen electrical power network. Daily forced outage readings of the substation’s feeders for three years were collected and modeled using a three-layer feed-forward network ANN-TS. The results in the frequency of fault prediction show that there is an overlap between the observed and predicted values. The annual Mean Average Percentage Error (MAPE) varies between 0.004% and 25%, and the feeders’ average MAPE ranges from 6% to 10%. The fault duration annual MAPE varies between 0.001% and 25.54% while the feeders’ average MAPE varies between 6% and 11%. The energy loss prediction follows the same trend with the annual MAPE alternating between 0.01% and 26.75%, andthe feeders’ average MAPE between 6% and 10%. The average overall MAPE of each feeder is between 6% and 10% which indicates that the developed model is about 90% to 94% accurate. Although, the model is designed for Ayede-Eruwa/Lanlate feeder, it could be utilized for effective prediction of faults in any power distribution network.
基于时间序列的人工神经网络电力网络故障预测模型——以阿伊德-埃鲁瓦/兰纳特输电网为例
电网规模的增大往往会导致故障水平的上升,从而给配电系统的能源供应商和消费者带来巨大的经济损失。因此,积极主动地处理配电馈线系统的故障,不仅可以减少经济损失,而且可以挽救生命,提高人们的生活质量。本文考虑了尼日利亚Ayede-Eruwa/Lanlate Oyo州33kV线路的案例研究。建立了基于人工神经网络的时间序列(ANN-TS)故障预测模型,对所选电网的故障进行预测。使用三层前馈网络ANN-TS收集了三年变电站馈线的每日强制中断读数并进行了建模。故障预测频率的结果表明,观测值与预测值之间存在重叠。年平均百分比误差(MAPE)在0.004%到25%之间,喂食者的平均MAPE在6%到10%之间。年故障持续时间MAPE在0.001% ~ 25.54%之间,馈线平均MAPE在6% ~ 11%之间。能量损失预测也遵循同样的趋势,年MAPE在0.01% ~ 26.75%之间交替,饲主平均MAPE在6% ~ 10%之间。每个给料机的平均整体MAPE在6%到10%之间,这表明所开发的模型的准确率约为90%到94%。虽然该模型是针对Ayede-Eruwa/Lanlate馈线设计的,但它可以有效地用于任何配电网的故障预测。
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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