Towards reinforcement learning for vulnerability analysis in power-economic systems

Author:

Wolgast Thomas,Veith Eric MSP,Nieße Astrid

Abstract

AbstractFuture smart grids can and will be subject of systematic attacks that can result in monetary costs and reduced system stability. These attacks are not necessarily malicious, but can be economically motivated as well. Emerging flexibility markets are of interest here, because they can incite attacks if market design is flawed. The dimension and danger potential of such strategies is still unknown. Automatic analysis tools are required to systematically search for unknown strategies and their respective countermeasures. We propose deep reinforcement learning to learn attack strategies autonomously to identify underlying systemic vulnerabilities this way. As a proof-of-concept, we apply our approach to a reactive power market setting in a distribution grid. In the case study, the attacker learned to exploit the reactive power market by using controllable loads. That was done by systematically inducing constraint violations into the system and then providing countermeasures on the flexibility market to generate profit, thus finding a hitherto unknown attack strategy. As a weak-point, we identified the optimal power flow that was used for market clearing. Our general approach is applicable to detect unknown attack vectors, to analyze a specific power system regarding vulnerabilities, and to systematically evaluate potential countermeasures.

Publisher

Springer Science and Business Media LLC

Reference38 articles.

1. Amjady, N, Rabiee A, Shayanfar HA (2010) Pay-as-bid based reactive power market. Energy Convers Manag 51(2):376–381. https://doi.org/10.1016/j.enconman.2009.10.012.

2. Buchholz, S, Tiemann PH, Wolgast T, Scheunert A, Gerlach J, Majumdar N, Breitner M, Hofmann L, Nieße A, Weyer H (2021) A sketch of unwanted gaming strategies in flexibility provision for the energy system In: 16th International Conference on Wirtschaftsinformatik, Pre-Conference Community Workshop Energy Informatics and Electro Mobility ICT.

3. Chen, Y, Tan Y, Zhang B (2019) Exploiting Vulnerabilities of Load Forecasting Through Adversarial Attacks In: Proceedings of the Tenth ACM International Conference on Future Energy Systems - e-Energy ’19, 1–11.. ACM Press, New York, USA. https://doi.org/10.1145/3307772.3328314.

4. de Souza, ACZ, Alvarado F, Glavic M (2001) The effect of loading on reactive market power. In: Sprague RH (ed)Proceedings of the 34th Annual Hawaii International Conference on System Sciences.. IEEE Computer Society, Los Alamitos, Calif.https://doi.org/10.1109/HICSS.2001.926287.

5. E-ISAC (2016) Analysis of the Cyber Attack on the Ukrainian Power Grid: Defense Use Case. Electr Inf Sharing Anal Center (E-ISAC).

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