4.7 Article

Causative Cyberattacks on Online Learning-Based Automated Demand Response Systems

Journal

IEEE TRANSACTIONS ON SMART GRID
Volume 12, Issue 4, Pages 3548-3559

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSG.2021.3067896

Keywords

Computer crime; Power grids; Load management; Artificial intelligence; Training data; Protocols; Mathematical model; Causative attacks; cybersecurity; demand response; shapley value; smart grids

Funding

  1. U.S. National Science Foundation [ECCS-2029158, ECCS-1847285]

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Power utilities and third-party aggregators are using AI to learn energy usage patterns of consumers and design optimal DR incentives, but this approach is vulnerable to data integrity attacks.
Power utilities are adopting Automated Demand Response (ADR) to replace the costly fuel-fired generators and to preempt congestion during peak electricity demand. Similarly, third-party Demand Response (DR) aggregators are leveraging controllable small-scale electrical loads to provide on-demand grid support services to the utilities. Some aggregators and utilities have started employing Artificial Intelligence (AI) to learn the energy usage patterns of electricity consumers and use this knowledge to design optimal DR incentives. Such AI frameworks use open communication channels between the utility/aggregator and the DR customers, which are vulnerable to causative data integrity cyberattacks. This paper explores vulnerabilities of AI-based DR learning and designs a data-driven attack strategy informed by DR data collected from the New York University (NYU) campus buildings. The case study demonstrates the feasibility and effects of maliciously tampering with (i) real-time DR incentives, (ii) DR event data sent to DR customers, and (iii) responses of DR customers to the DR incentives.

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