IET Renewable Power Generation (Oct 2024)

Resilient robust model predictive load frequency control for smart grids with air conditioning loads

  • Shiluo Jike,
  • Guobao Liu,
  • Feng Li,
  • Changyu Zhang,
  • Qi Wang,
  • Mengxia Zhou,
  • Haiya Qian

DOI
https://doi.org/10.1049/rpg2.13075
Journal volume & issue
Vol. 18, no. 14
pp. 2326 – 2339

Abstract

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Abstract This paper investigates the robust model predictive load frequency control problem for smart grids with wind power under cyber attacks. To accommodate intermittent power generation, the demand response of the system is considered by involving the air conditioning loads in the frequency regulation. In addition, the system uncertainties produced by the air conditioning load users and wind turbines when replacing traditional generator sets are considered. By using the cone complementary linearization algorithm and the linear matrix inequality technique, a resilience robust model predictive control strategy with mixed H2/H∞ performance indexes is proposed. Furthermore, a rigorous derivation of the recursive feasibility of robust model predictive control is given. Finally, the simulation results of the two‐area load frequency control scheme show that the proposed model predictive control strategy is capable of realizing the load frequency control of the multi‐area smart grid and is robust to the parameter uncertainties and frequency regulation of the system. The results also show that the proposed model predictive control strategy has some resistance to cyber attacks and external disturbances.

Keywords