Application of Machine Learning Algorithms for Predicting Vegetation Related Outages in Power Distribution Systems

A. U. Melagoda, T. D. L. P. Karunarathna, G. Nisaharan, P. A. G. M. Amarasinghe, S. Abeygunawardane
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引用次数: 1

Abstract

A large number of faults in power distribution systems is caused due to vegetation growing near power lines. Therefore, to maintain high system reliability, outages should be prevented as much as possible before they occur. This paper proposes a data-driven approach to predict vegetation-related outages in power distribution systems. Three Machine Learning (ML) methods i.e., the Neural Network (NN), Decision Tree Classifier (DTC) and Random Forest Classifier (RFC) are used to predict the vegetation-related outages. Historical outage data and weather data are used as the inputs to the ML methods. Then, the ML models are trained and used to predict the probability of occurrence of an outage in the next fourteen days. A risk map is generated by incorporating the geographical location of distribution feeders based on the predicted outage probabilities. Moreover, a real-time outage prediction platform is developed to provide the utilities a better insight into vegetation-related outages. The accuracy of predicting failures is found to be 72.57%, 84.06% and 93.79% for NN, DTC and RFC, respectively.
机器学习算法在配电系统植被相关停电预测中的应用
在配电系统中,大量的故障是由于电线附近的植被生长造成的。因此,为了保持系统的高可靠性,应该尽可能地在中断发生之前进行预防。本文提出了一种数据驱动的方法来预测配电系统中与植被相关的停电。利用神经网络(NN)、决策树分类器(DTC)和随机森林分类器(RFC)三种机器学习(ML)方法来预测植被相关的中断。历史停电数据和天气数据被用作ML方法的输入。然后,对ML模型进行训练并用于预测未来14天内发生停机的概率。根据预测的停电概率,结合配电馈线的地理位置,生成风险图。此外,还开发了一个实时停电预测平台,使公用事业公司能够更好地了解与植被有关的停电情况。结果表明,神经网络、DTC和RFC的故障预测准确率分别为72.57%、84.06%和93.79%。
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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