YIN Chunya, XU Dacheng, LI Fengting, et al. 基于主从博弈的风电场虚拟惯量辅助服务动态定价与优化分配策略[J]. Power system protection and control, 2025, (21). DOI: 10.19783/j.cnki.pspc.241696.
the rapid development of new energy has led to a scarcity of rotational inertia
making inertia support from wind power systems increasingly important. However
providing inertia support by adjusting active power output reduces the economic efficiency of wind farms. To address this issue
a dynamic pricing and optimal allocation method for wind farm virtual inertia in the ancillary service market is proposed based on a Stackelberg game framework. First
the inertia support capability of wind farms is assessed based on rotor speed and power change constraints of wind turbines. The wind farm capacity is also evaluated
and a differentiated reward-penalty mechanism is established accordingly. Second
a Stackelberg leader-follower game model is constructed
where the power market operator acts as the leader and the wind farm cluster as followers. The market operator determines dynamic pricing and reward-penalty mechanisms to incentivize wind farms to participate in system inertia support. Finally
the proposed model and method are solved in MATLAB using the Gurobi commercial solver
and case studies verify their feasibility and effectiveness.