The paper presents a novel deep reinforcement learning (DRL)-based controller, called DRL2FC, to improve the cyber resilience of automatic generation control (AGC) systems against false data injection attacks (FDIAs).
The key highlights are:
The DRL2FC controller dynamically adjusts generator setpoints in response to both load fluctuations and potential cyber threats, learning optimal control policies through interaction with a simulated power system environment that incorporates AGC dynamics under cyberattacks.
The DRL2FC controller is capable of distinguishing FDIAs from other external disturbances and effectively mitigating their impact on the power system, outperforming conventional AGC techniques like fine-tuned PID, LQR, and MPC controllers.
The scalability of the DRL2FC approach is demonstrated through experimental validation on a two-area AGC system subjected to various FDIA scenarios, including load disturbances, step FDIAs, coordinated pulse FDIAs, and simultaneous load disturbances with ramp FDIAs.
The results show that while conventional controllers fail to maintain zero frequency deviation under FDIAs, the proposed DRL2FC effectively restores system frequency to its nominal value, enhancing the cyber resilience of the AGC system.
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arxiv.org
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by Vasileios Di... ที่ arxiv.org 04-29-2024
https://arxiv.org/pdf/2404.16974.pdfสอบถามเพิ่มเติม