Electricity Theft Detection Using Machine Learning Algorithm
Student: Abdullahi Umar (Project, 2025)
Department of Computer Science and Informatics
Kaduna State University, Kaduna, Kaduna State
Abstract
Electricity theft is a widespread problem that plagues both developed and developing countries. It has inflicted substantial revenue losses on the electricity industry, marked by Technical Losses (TL) and Non-Technical Losses (NTL) both in Transmission and Distribution. TL resulted from power dissipation in infrastructure, while prevalent NTL challenges in Nigeria included illegal connections and meter tampering. This research successfully addressed NTL challenges by predicting electricity theft among metered customers, employing the machine learning algorithm for efficient data balancing and classification. The system featured a user-friendly interface designed for ease of use. It encompassed data loading, pre-processing, visualization, and model training and evaluation. The trained model effectively predicted potential theft, with subsequent database interactions concluding the process. This outstanding performance not only positionsthe proposed system as the best choice but also establishes a foundation for a more sustainable future in the electricity industry.
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For the full publication, please contact the author directly at: umarabdullahi1100@gmail.com
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Institutions
- Federal University of Technology, Minna, Niger State 47
- Federal University of Technology, Owerri, Imo State 95
- Federal University Oye-Ekiti, Ekiti State 41
- Federal University, Birnin-Kebbi, Kebbi State 37
- Federal University, Dutse, Jigawa State 6
- Federal University, Dutsin-Ma, Katsina State 63
- Federal University, Gashua, Yobe State 3
- Federal University, Gusau, Zamfara State 14
- Federal University, Kashere, Gombe State 1
- Federal University, Lafia, Nasarawa State 6