Detection of Non-Technical Losses on a Smart Distribution Grid Based on Artificial Intelligence Models
Murilo A. Souza,
Hugo T. V. Gouveia,
Aida A. Ferreira
et al.
Abstract:Non-technical losses (NTL) have been a growing problem over the years, causing significant financial losses for electric utilities. Among the methods for detecting this type of loss, those based on Artificial Intelligence (AI) have been the most popular. Many works use the electricity consumption profile as an input for AI models, which may not be sufficient to develop a model that achieves a high detection rate for various types of energy fraud that may occur. In this paper, using actual electricity consumpti… Show more
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