Please use this identifier to cite or link to this item: http://elar.urfu.ru/handle/10995/130954
Title: Data-Driven Machine Learning Methods for Nontechnical Losses of Electrical Energy Detection: A State-of-the-Art Review
Authors: Pazderin, A.
Kamalov, F.
Gubin, P. Y.
Safaraliev, M.
Samoylenko, V.
Mukhlynin, N.
Odinaev, I.
Zicmane, I.
Issue Date: 2023
Publisher: Multidisciplinary Digital Publishing Institute (MDPI)
Citation: Pazderin, A, Kamalov, F, Gubin, P, Safaraliev, M, Samoylenko, V, Mukhlynin, N, Odinaev, I & Zicmane, I 2023, 'Data-Driven Machine Learning Methods for Nontechnical Losses of Electrical Energy Detection: A State-of-the-Art Review', Energies, Том. 16, № 21, 7460. https://doi.org/10.3390/en16217460
Pazderin, A., Kamalov, F., Gubin, P., Safaraliev, M., Samoylenko, V., Mukhlynin, N., Odinaev, I., & Zicmane, I. (2023). Data-Driven Machine Learning Methods for Nontechnical Losses of Electrical Energy Detection: A State-of-the-Art Review. Energies, 16(21), [7460]. https://doi.org/10.3390/en16217460
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. © 2023 by the authors.
Keywords: DISTRIBUTION NETWORKS
ELECTRICAL ENERGY ACCOUNTING
MACHINE LEARNING
NEURAL NETWORKS
NONTECHNICAL LOSSES OF ELECTRICAL ENERGY
THEFT OF ELECTRICAL ENERGY
ANOMALY DETECTION
ELECTRIC LOSSES
ELECTRIC NETWORK PARAMETERS
ENERGY UTILIZATION
MACHINE LEARNING
ELECTRICAL ENERGY
ELECTRICAL ENERGY ACCOUNTING
ENERGY ACCOUNTING
MACHINE-LEARNING
NEURAL-NETWORKS
NON-TECHNICAL LOSS
NONTECHNICAL LOSS OF ELECTRICAL ENERGY
THEFT OF ELECTRICAL ENERGY
ELECTRIC POWER DISTRIBUTION
URI: http://elar.urfu.ru/handle/10995/130954
Access: info:eu-repo/semantics/openAccess
cc-by
License text: https://creativecommons.org/licenses/by/4.0/
SCOPUS ID: 85176504516
WOS ID: 001100284800001
PURE ID: 48547103
ISSN: 1996-1073
DOI: 10.3390/en16217460
metadata.dc.description.sponsorship: Ministry of Education and Science of the Russian Federation, Minobrnauka: FEUZ-2023-0013
This work was partially supported by the Ministry of Science and Higher Education of the Russian Federation (through the basic part of the government mandate, project No. FEUZ-2023-0013).
Appears in Collections:Научные публикации ученых УрФУ, проиндексированные в SCOPUS и WoS CC

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