Towards Realizing a Distributed Event and Intrusion Detection System

Power system blackouts would cause a significant impact on social and economic activities. Therefore, a key underlying requirement for a resilient power system is to detect cyber attacks and provide an appropriate response in nearly real time. However, due to limited computing resource and latency of the current power system Intrusion Detection Systems (IDS), they are not capable to detect cyber attacks for a large-scale system in real time.

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