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Cloud-Fog Computing-Based Distributed Event-Triggered Consensus Predictive Compensation for Optimal Energy Management in Microgrid under DoS Attack

Author

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  • Lvhang Wang
  • Yongheng Pang
  • Bowen Zhou
  • Shuowei Jin

Abstract

A cloud-fog computing-based event-triggered distributed energy optimization management method based on predictive attack compensation is proposed to address the problem of denial of service (DoS) attack, the complexity of computation, and the bandwidth constraint on the communication network in microgrids. Firstly, in order to optimize the energy supply of microgrid and maximize the profit, the minimum cost function of maintaining the balance of supply and demand is given considering the power loss of microgrid. Secondly, considering the problem of bandwidth-constrained communication, a distributed event-triggered consensus algorithm is proposed based on fog computing. Thirdly, a model predictive compensation algorithm based on cloud computing is proposed, which uses the mismatched power between supply and demand at the historical time before the attack to predict and compensate the missing data of the agent power at the current time and many times after attack. Finally, the effectiveness of the proposed method is verified by simulation results.

Suggested Citation

  • Lvhang Wang & Yongheng Pang & Bowen Zhou & Shuowei Jin, 2020. "Cloud-Fog Computing-Based Distributed Event-Triggered Consensus Predictive Compensation for Optimal Energy Management in Microgrid under DoS Attack," Mathematical Problems in Engineering, Hindawi, vol. 2020, pages 1-11, November.
  • Handle: RePEc:hin:jnlmpe:5401298
    DOI: 10.1155/2020/5401298
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