4.6 Article

A Novel Features-Based Multivariate Gaussian Distribution Method for the Fraudulent Consumers Detection in the Power Utilities of Developing Countries

Journal

IEEE ACCESS
Volume 9, Issue -, Pages 81057-81067

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3085501

Keywords

Developing countries; Meters; Companies; Tariffs; Gaussian distribution; Smart meters; Feature extraction; Artificial intelligence; data analytics; fraudulent consumer identification framework; machine learning; multivariate gaussian distribution; non-technical losses

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This paper discusses the issue of non-technical losses in developing countries in natural gas and electricity distribution, proposing a machine learning solution based on multivariate Gaussian distribution to reduce NTLs by identifying fraudulent consumers, with a maximum success rate of 75%.
According to statistics, developing countries all over the world have suffered significant non-technical losses (NTLs) both in natural gas and electricity distribution. NTLs are thought of as energy that is consumed but not billed e.g., theft, meter tampering, meter reversing, etc. The adaptation of smart metering technology has enabled much of the developed world to significantly reduce their NTLs. Also, the recent advancements in machine learning and data analytics have enabled a further reduction in these losses. However, these solutions are not directly applicable to developing countries because of their infrastructure and manual data collection. This paper proposes a tailored solution based on machine learning to mitigate NTLs in developing countries. The proposed method is based on a multivariate Gaussian distribution framework to identify fraudulent consumers. It integrates novel features like social class stratification and the weather profile of an area. Thus, achieving a significant improvement in fraudulent consumer detection. This study has been done on a real dataset of consumers provided by the local power distribution companies that have been cross-validated by onsite inspection. The obtained results successfully identify fraudulent consumers with a maximum success rate of 75%.

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