Anomalous Electrical Power Consumption Detection in Household Appliances via Micro-Moment Classification

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Date

2025

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Institute of Electrical and Electronics Engineers Inc.

Abstract

The detection of anomalous power consumption is critical for improving energy efficiency, particularly with the increasing demand in buildings. This study explores Convolutional Neural Network-based models by transforming 1-dimensional micro-moment labeled data into 2-dimensional matrices to capture both temporal and spatial consumption patterns. Three architectural variants are investigated: a conventional Deep Convolutional Neural Network (DCNN), a Depthwise Separable Convolutional Neural Network (DS-CNN), and a Depthwise Separable Residual Convolutional Neural Network (DSR-CNN). Unlike earlier studies, this work incorporates hyperparameter tuning, statistical validation, and cross-validation, resulting in the evaluation of over 450 model configurations. The results indicate that while the DCNN consistently achieves the highest accuracy, the DS-CNN achieves comparable performance with significantly reduced parameters and computational cost, making it suitable for real-time and resource-constrained environments. Model complexity analysis and statistical tests confirm the robustness of the findings. Finally, a systematic model selection strategy is presented, identifying the DS-CNN as the most balanced solution for effective and efficient anomaly detection in smart grid applications. © 2020 IEEE.

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Keywords

Anomaly detection, Convolution, Convolutional neural networks, Deep learning, Domestic appliances, Electric power utilization, Energy efficiency, Green buildings, Smart power grids, Statistical tests, Anomalous power consumption, Convolutional neural network, Electrical power consumption, Energy, In-buildings, Labeled data, Micro-moment, Network-based modeling, Power, Classification (of information)

Citation

IEEE Transactions on Artificial Intelligence, 2025, , , pp. -

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