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Background: Machine learning is progressively utilized within the realm of electrical fault detection, enhancing the accuracy of fault discrimination. Objective: This paper aims to utilize five machine learning algorithms to predict faults in three-phase electrical power system and compare the predictive performance of five classical machine learning algorithms. Method: Logistic Regression, Decision Tree, Random Forest, XGBoost, and Support Vector Machine are employed to predict the existence and types of faults in three-phase electrical power system. The algorithms' performance is evaluated by comparing the predictive evaluation metrics. Results: In this paper, Decision Tree exhibited the optimal evaluation metrics, achieving an accuracy of 88% on the test set. Conclusion: The experimental results indicate that Decision Tree exhibits the best performance in predicting faults in power system. This study provides guidance and recommendations for decision-makers in relevant industries.
Yousong Li (Mon,) studied this question.
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