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Deep learning-based electricity theft prediction in non-smart grid environments

Sheikh Muhammad Saqib, Tehseen Mazhar, Muhammad Iqbal, Tariq Shahzad, Ahmad Almogren, Khmaies Ouahada, Habib Hamam

2024Heliyon27 citationsDOIOpen Access PDF

Abstract

In developing countries, smart grids are nonexistent, and electricity theft significantly hampers power supply. This research introduces a lightweight deep-learning model using monthly customer readings as input data. By employing careful direct and indirect feature engineering techniques, including Principal Component Analysis (PCA), t-distributed Stochastic Neighbor Embedding (t-SNE), UMAP (Uniform Manifold Approximation and Projection), and resampling methods such as Random-Under-Sampler (RUS), Synthetic Minority Over-sampling Technique (SMOTE), and Random-Over-Sampler (ROS), an effective solution is proposed. Previous studies indicate that models achieve high precision, recall, and F1 score for the non-theft (0) class, but perform poorly, even achieving 0 %, for the theft (1) class. Through parameter tuning and employing Random-Over-Sampler (ROS), significant improvements in accuracy, precision (89 %), recall (94 %), and F1 score (91 %) for the theft (1) class are achieved. The results demonstrate that the proposed model outperforms existing methods, showcasing its efficacy in detecting electricity theft in non-smart grid environments.

Topics & Concepts

Random forestComputer sciencePrincipal component analysisResamplingSmart gridElectricityArtificial intelligenceMachine learningDeep learningOversamplingData miningEngineeringBandwidth (computing)Computer networkElectrical engineeringElectricity Theft Detection TechniquesWater Systems and OptimizationSmart Grid Security and Resilience
Deep learning-based electricity theft prediction in non-smart grid environments | Litcius