Energy theft poses a significant challenge for all parties involved in energy distribution, and its detection is crucial for maintaining stable and financially sustainable energy grids. One potential solution for detecting energy theft is through the use of artificial intelligence (AI) methods. This systematic review article provides an overview of the various methods used by malicious users to steal energy, along with a discussion of the challenges associated with implementing a generalized AI solution for energy theft detection. In this work, we analyze the benefits and limitations of AI methods, including machine learning, deep learning, and neural networks, and relate them to the specific thefts also analyzing problems arising with data collection. The article proposes key aspects of generalized AI solutions for energy theft detection, such as the use of smart meters and the integration of AI algorithms with existing utility systems. Overall, we highlight the potential of AI methods to detect various types of energy theft and emphasize the need for further research to develop more effective and generalized detection systems, providing key aspects of possible generalized solutions.

Systematic review of energy theft practices and autonomous detection through artificial intelligence methods / Stracqualursi, E.; Rosato, A.; Di Lorenzo, G.; Panella, M.; Araneo, R.. - In: RENEWABLE & SUSTAINABLE ENERGY REVIEWS. - ISSN 1364-0321. - 184:(2023), pp. 1-19. [10.1016/j.rser.2023.113544]

Systematic review of energy theft practices and autonomous detection through artificial intelligence methods

Stracqualursi E.;Rosato A.;Di Lorenzo G.;Panella M.;Araneo R.
2023

Abstract

Energy theft poses a significant challenge for all parties involved in energy distribution, and its detection is crucial for maintaining stable and financially sustainable energy grids. One potential solution for detecting energy theft is through the use of artificial intelligence (AI) methods. This systematic review article provides an overview of the various methods used by malicious users to steal energy, along with a discussion of the challenges associated with implementing a generalized AI solution for energy theft detection. In this work, we analyze the benefits and limitations of AI methods, including machine learning, deep learning, and neural networks, and relate them to the specific thefts also analyzing problems arising with data collection. The article proposes key aspects of generalized AI solutions for energy theft detection, such as the use of smart meters and the integration of AI algorithms with existing utility systems. Overall, we highlight the potential of AI methods to detect various types of energy theft and emphasize the need for further research to develop more effective and generalized detection systems, providing key aspects of possible generalized solutions.
2023
artificial intelligence; autonomous theft detection; electricity theft; energy meter tampering; machine learning; non-technical losses; smart grids
01 Pubblicazione su rivista::01a Articolo in rivista
Systematic review of energy theft practices and autonomous detection through artificial intelligence methods / Stracqualursi, E.; Rosato, A.; Di Lorenzo, G.; Panella, M.; Araneo, R.. - In: RENEWABLE & SUSTAINABLE ENERGY REVIEWS. - ISSN 1364-0321. - 184:(2023), pp. 1-19. [10.1016/j.rser.2023.113544]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1686169
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