Towards Intelligent Energy Security: A Unified Spatio-Temporal and Graph Learning Framework for Scalable Electricity Theft Detection in Smart Grids
AbdulQoyum A. Olowookere, Usman A. Oguntola, Ebenezer. Leke Odekanle, Maridiyah A. Madehin, Aisha A. Adesope

TL;DR
This paper presents SGEIS, an integrated AI framework combining machine learning, deep learning, NILM, and graph-based models to detect electricity theft in smart grids with high accuracy and interpretability.
Contribution
It introduces a comprehensive, scalable framework that unifies temporal, spatial, and statistical analysis for improved electricity theft detection in smart grids.
Findings
Gradient Boosting achieved ROC-AUC of 0.894.
Graph Neural Networks identified over 96% of high-risk nodes.
Hybrid approach enhances detection robustness and interpretability.
Abstract
Electricity theft and non-technical losses (NTLs) remain critical challenges in modern smart grids, causing significant economic losses and compromising grid reliability. This study introduces the SmartGuard Energy Intelligence System (SGEIS), an integrated artificial intelligence framework for electricity theft detection and intelligent energy monitoring. The proposed system combines supervised machine learning, deep learning-based time-series modeling, Non-Intrusive Load Monitoring (NILM), and graph-based learning to capture both temporal and spatial consumption patterns. A comprehensive data processing pipeline is developed, incorporating feature engineering, multi-scale temporal analysis, and rule-based anomaly labeling. Deep learning models, including Long Short-Term Memory (LSTM), Temporal Convolutional Networks (TCN), and Autoencoders, are employed to detect abnormal usage…
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