Machine Learning Algorithm Analysis for Detecting and Classification Faults in Power Transmission System

J. Hassan, Imran Fareed Nizami
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Abstract

The importance of Power Transmission System PTS fault detection and classification is increasing day by day as because consumption of electricity is increasing. Short circuit fault in Power Transmission Line Network PTLN can cause severe damage to the power transmission system as well as economic loss. Power Transmission System requires new methods to detect and classify fault behaviour to prevent it from heavy damage. Machine Learning ML algorithms can be very effective to classify and detect various types of faults within the PTLN. There are variety of ML algorithms to recognise and classify the faults but as complexity of PTS is increasing day by day, reliability of these algorithms is decreasing. This study uses various types of ML algorithms to generate predictive models to evaluate what kind of algorithm is more appropriate to recognise and classify faults within the PTLN. Faults investigated in this research work include (L-L) double line fault, (L-L-L) three phase fault, (L-G) line to ground fault, (L-L-G) double line to ground fault, and (L-L-L-G) three phase fault with the involvement of the ground. The data was evaluated using six (06) ML algorithms that are Decision Tree, Support Vector Machine (SVM), K-Nearest Neighbor (Knn), Random Forest, XGBoost (XGB) and Naive Bayes (NB) for recognise of fault and classification within the PTLN. The performance of ML algorithms obtained by comparing the results and determine which algorithm is fast and more accurate. These results can be used to create more effective ML algorithms for PTS. The results indicate that the application of ML algorithms for PTS task could improve the PTLN yield and save time for technical teams.
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输电系统故障检测与分类的机器学习算法分析
随着电力消耗的不断增加,输电系统PTS故障检测与分类的重要性日益凸显。输电线路网络短路故障不仅会给输电系统造成严重的破坏,还会造成经济损失。电力传动系统对故障行为的检测和分类提出了新的要求,以防止电力传动系统遭受重大损失。机器学习ML算法可以非常有效地分类和检测PTLN内的各种类型的故障。有各种各样的机器学习算法来识别和分类故障,但随着PTS的复杂性日益增加,这些算法的可靠性正在下降。本研究使用各种类型的ML算法生成预测模型,以评估哪种算法更适合识别和分类PTLN内的故障。本研究研究的故障包括(L-L)双线故障、(L-L- l)三相故障、(L-G)线路到地故障、(L-L- g)双线到地故障和(L-L-L-G)涉及地的三相故障。使用决策树、支持向量机(SVM)、k近邻(Knn)、随机森林、XGBoost (XGB)和朴素贝叶斯(NB)等六种ML算法对数据进行评估,用于识别PTLN内的故障和分类。通过比较各ML算法的性能结果,确定哪一种算法更快、更准确。这些结果可用于为PTS创建更有效的ML算法。结果表明,将ML算法应用于PTS任务可以提高PTLN的产出率,节省技术团队的时间。
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