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Advanced Vision and Learning Lab (AVLL)

Texas A&M University College of Engineering

Evaluating GAN-LSTM for Smart Meter Anomaly Detection in Power Systems

  • F.O. Nia, S. Salehi, and, J. Peeples, “Evaluating GAN-LSTM for Smart Meter Anomaly Detection in Power Systems,” in IEEE Texas Power and Energy Conference (TPEC), 2026, in Press, doi: arXiv:2601.09701.
  • Abstract: Advanced metering infrastructure (AMI) provides high-resolution electricity consumption data that can enhance monitoring, diagnosis, and decision making in modern power distribution systems. Detecting anomalies in these time-series measurements is challenging due to nonlinear, nonstationary, and multi-scale temporal behavior across diverse building types and operating conditions. This work presents a systematic, power-system-oriented evaluation of a GAN-LSTM framework for smart meter anomaly detection using the Large-scale Energy Anomaly Detection (LEAD) dataset, which contains one year of hourly measurements from 406 buildings. The proposed pipeline applies consistent preprocessing, temporal windowing, and threshold selection across all methods, and compares the GAN-LSTM approach against six widely used baselines, including statistical, kernel-based, reconstruction-based, and GAN-based models. Experimental results demonstrate that the GAN-LSTM significantly improves detection performance, achieving an F1-score of 0.89. These findings highlight the potential of adversarial temporal modeling as a practical tool for supporting asset monitoring, non-technical loss detection, and situational awareness in real-world power distribution networks. The code for this work is publicly available.
  • Link: https://arxiv.org/abs/2601.09701
  • Publication date: February 2026
  • Citation: F.O. Nia, S. Salehi, and, J. Peeples, “Evaluating GAN-LSTM for Smart Meter Anomaly Detection in Power Systems,” in IEEE Texas Power and Energy Conference (TPEC), 2026, in Press, doi: arXiv:2601.09701.

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