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Battery energy storage systems (BESSs) play a key role in the renewable energy transition. Meanwhile, BESSs along with other electric grid components are leveraging the Internet-of-things paradigm. As a downside, they become vulnerable to cyberattacks. The detection of cyberattacks against BESSs is becoming crucial for system redundancy. We identified a gap in the existing BESS defense research and formulated new types of attacks against a BESS and their detection methods. The attack detection is divided into a forecast-based approach and long-term pattern analysis. We perform a main factor analysis of machine-learning-based methods to forecast the behavior of a BESS. In addition, we observe approaches that can be adapted for the BESS cyber secure design. To provide a thorough investigation, the attacks are classified based on a targeted battery service along with data features that the attack targets.
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Nina Kharlamova
Technical University of Denmark
Chresten Træhold
Technical University of Denmark
Seyedmostafa Hashemi
Technical University of Denmark
Journal of Energy Storage
Technical University of Denmark
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Kharlamova et al. (Thu,) studied this question.
synapsesocial.com/papers/6a1a8fb77ff99bba0645ddc5 — DOI: https://doi.org/10.1016/j.est.2023.107795
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