Decision Tree Models and Machine Learning Algorithms in the Fault Recognition on Power Lines with Branches

Author:

Kulikov Aleksandr1,Loskutov Anton1ORCID,Bezdushniy Dmitriy1,Petrov Ilya1

Affiliation:

1. Department of Electric Power Engineering, Power Supply and Power Electronics, Nizhny Novgorod State Technical University n.a. R.E. Alekseev, Minin St., 24, 603115 Nizhny Novgorod, Russia

Abstract

The complication of the structure, topology and composition of the future electrical networks is characterized by difficult-to-recognize circuit-mode situations and requires modern methods for analyzing information parameters. The growing trend of digitizing signals in substations and the use of the IEC 61850 standard results in a huge amount of new data available at the nodes of the electrical network. The development and analysis of new methods for detecting and recognizing the modes of electrical networks (normal and emergency) are topical research issues. The article explores a new approach to recognizing a faulted section of an electrical network with branches by concurrently analyzing several information features and applying machine learning methods: decision tree, random forest, and gradient boosting. The application of this approach for decision-making by relay protection has not been previously implemented. Simulation modeling and the Monte Carlo method are at the heart of obtaining training samples. The results of testing the studied methods under review showed the required flexibility, the ability to use a large number of information parameters, as well as the best results of fault recognition in comparison with the distance protection relay.

Funder

Ministry of Science and Higher Education of the Russian Federation

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction

Reference32 articles.

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3. Loskutov, A.A., Pelevin, P.S., and Vukolov, V.Y. (2020, January 21–25). Improving the recognition of operating modes in intelligent electrical networks based on machine learning methods. Proceedings of the E3S Web of Conferences, Kazan, Russia.

4. Loskutov, A.A., Pelevin, P.S., and Mitrovic, M. (2019, January 23–27). Development of the logical part of the intellectual multi-parameter relay protection. Proceedings of the E3S Web of Conferences, Tashkent, Uzbekistan.

5. Kulikov, A., Loskutov, A., and Sovina, A. (September, January 29). The Use of Machine Learning and Artificial Neural Networks to Recognition of Turning Faults in Power Transformers. Proceedings of the 49th CIGRE Session, Paris, France.

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