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Distributed Learning Mechanisms for Anomaly Detection in Privacy-Aware Energy Grid Management Systems

Online AM: 17 January 2024 Publication History

Abstract

Smart grids have become an emerging topic due to net-zero emissions and the rapid development of artificial intelligence (AI) technology focused on achieving targeted energy distribution and maintaining operating reserves. In order to prevent cyber-physical attacks, issues related to the security and privacy of grid systems are receiving much attention from researchers. In this paper, privacy-aware energy grid management systems with anomaly detection networks and distributed learning mechanisms are proposed. The anomaly detection network consists of a server and a client learning network, which collaboratively learn patterns without sharing data, and periodically train and exchange knowledge. We also develop learning mechanisms with federated, distributed, and split learning to improve privacy and use Q-learning for decision-making to facilitate interpretability. To demonstrate the effectiveness and robustness of the proposed schemes, extensive simulations are conducted in different energy grid environments with different target distributions, ORRs, and attack scenarios. The experimental results show that the proposed schemes not only improve management performance but also enhance privacy and security levels. We also compare the management performance and privacy level of the different learning machines and provide usage recommendations.

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  • (2024)A trust enhancement model based on distributed learning and blockchain in service ecosystemsJournal of King Saud University - Computer and Information Sciences10.1016/j.jksuci.2024.10214736:7(102147)Online publication date: Sep-2024

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  1. Distributed Learning Mechanisms for Anomaly Detection in Privacy-Aware Energy Grid Management Systems

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      cover image ACM Transactions on Sensor Networks
      ACM Transactions on Sensor Networks Just Accepted
      EISSN:1550-4867
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      Publication History

      Online AM: 17 January 2024
      Accepted: 25 July 2023
      Revised: 19 April 2023
      Received: 25 October 2022

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      Author Tags

      1. Anomaly Detection
      2. Distributed Learning
      3. Federated Learning
      4. Split Learning
      5. Energy Grid Management

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      • (2024)A trust enhancement model based on distributed learning and blockchain in service ecosystemsJournal of King Saud University - Computer and Information Sciences10.1016/j.jksuci.2024.10214736:7(102147)Online publication date: Sep-2024

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