Data-Driven Insights: Boosting Algorithms to Uncover Electricity Theft Patterns in AMI

Inam Ullah Khan, Arshid Ali, C. James Taylor, Xiandong Ma

Research output: Contribution to Journal/MagazineJournal articlepeer-review

27 Downloads (Pure)

Abstract

This study introduces a sophisticated supervised machine learning method for electric theft detection utilizing a customized Histogram Gradient Boosting (HGB) algorithm. Comprehensive preprocessing, including imputation, normalization, outlier management, and resampling, ensures the time-series data is accurately prepared for analysis. The SMOTE-ENN algorithm corrects class imbalances, preparing the data for the feature optimization stage, in which key features are selected and extracted. The HGB algorithm, enhanced through Bayesian optimization, is central to the training process, resulting in a model that precisely classifies electricity consumption patterns as genuine or fraudulent. The robustness of the model is evaluated against other recognized boosting methods, such as Adaptive Boosting (ADB), Gradient Boosting Decision Tree (GBDT), and LightGBM, alongside various ensemble and traditional machine learning models. Utilizing key performance metrics like accuracy, F1 score, and AUC for validation, the proposed model yields very promising results, with 93% accuracy, 95% F1 score, and 98% AUC, outperforming the comparison group under similar dataset and hyperparameter conditions. This underscores the model’s potential as a highly accurate tool for combating electricity theft within an advanced metering infrastructure (AMI).
Original languageEnglish
Article number2524212
Pages (from-to)1-12
Number of pages12
JournalIEEE Transactions on Instrumentation and Measurement
Volume74
Early online date2/04/2025
DOIs
Publication statusPublished - 2025

User-defined Keywords

  • Electricity Theft Detection
  • Class Balancing
  • Feature Engineering
  • Boosting Algorithms
  • Advanced Metering Infrastructure
  • Smart Grid

Cite this