Data-Driven Machine Learning Methods for Nontechnical Losses of Electrical Energy Detection: A State-of-the-Art Review

Author:

Pazderin Andrey1,Kamalov Firuz2,Gubin Pavel Y.1,Safaraliev Murodbek1ORCID,Samoylenko Vladislav1,Mukhlynin Nikita1,Odinaev Ismoil1ORCID,Zicmane Inga3ORCID

Affiliation:

1. Department of Automated Electrical Systems, Ural Federal University, 620002 Yekaterinburg, Russia

2. Department of Electrical Engineering, Canadian University Dubai, Dubai P.O. Box 117781, United Arab Emirates

3. Faculty of Electrical and Environmental Engineering, Riga Technical University, 1048 Riga, Latvia

Abstract

Nontechnical losses of electrical energy (NTLEE) have been a persistent issue in both the Russian and global electric power industries since the end of the 20th century. Every year, these losses result in tens of billions of dollars in damages. Promptly identifying unscrupulous consumers can prevent the onset of NTLEE sources, substantially reduce the amount of NTLEE and economic damages to network grids, and generally improve the economic climate. The contemporary advancements in machine learning and artificial intelligence facilitate the identification of NTLEE sources through anomaly detection in energy consumption data. This article aims to analyze the current efficacy of computational methods in locating, detecting, and identifying nontechnical losses and their origins, highlighting the application of neural network technologies. Our research indicates that nearly half of the recent studies on identifying NTLEE sources (41%) employ neural networks. The most utilized tools are convolutional networks and autoencoders, the latter being recognized for their high-speed performance. This paper discusses the main metrics and criteria for assessing the effectiveness of NTLEE identification utilized in training and testing phases. Additionally, it explores the sources of initial data, their composition, and their impact on the outcomes of various algorithms.

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

Reference114 articles.

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2. (2023, August 07). Find the Leak: How Network Companies Reduce Energy Losses. (In Russian).

3. (2023, August 07). Tyumen Power Engineers Reduced Commercial Electricity Losses by 37 Million Rubles. (In Russian).

4. (2023, August 07). In 2022, Rosseti-Siberia Reduced Commercial Electricity Losses by 42%. (In Russian).

5. (2023, August 07). Meter Tampering: The Major Cause of Non-Technical Losses. Available online: https://clouglobal.com/meter-tampering-the-major-cause-of-non-technical-losses/.

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