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arxiv: 2009.13088 · v1 · pith:FIUBGGZInew · submitted 2020-09-28 · 📡 eess.SY · cs.SY

Deep Reinforcement Learning for DER Cyber-Attack Mitigation

classification 📡 eess.SY cs.SY
keywords networkcyber-attackdeepdistributionfunctionalitylearningreinforcementsystem
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The increasing penetration of DER with smart-inverter functionality is set to transform the electrical distribution network from a passive system, with fixed injection/consumption, to an active network with hundreds of distributed controllers dynamically modulating their operating setpoints as a function of system conditions. This transition is being achieved through standardization of functionality through grid codes and/or international standards. DER, however, are unique in that they are typically neither owned nor operated by distribution utilities and, therefore, represent a new emerging attack vector for cyber-physical attacks. Within this work we consider deep reinforcement learning as a tool to learn the optimal parameters for the control logic of a set of uncompromised DER units to actively mitigate the effects of a cyber-attack on a subset of network DER.

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