Title :
Robust Optimization of Static Reserve Planning With Large-Scale Integration of Wind Power: A Game Theoretic Approach
Author :
Shengwei Mei ; De Zhang ; Yingying Wang ; Feng Liu ; Wei Wei
Author_Institution :
Dept. of Electr. Eng., Tsinghua Univ., Beijing, China
Abstract :
This paper presents a methodology based on game theory for power system static reserve planning with large-scale integration of wind power to ensure the generating capacity adequacy. First, a min-max game model is proposed for decision-making problems with uncertainties. Then, it is applied to the static reserve capacity planning problem. In the proposed model, the system planner (as one player) aims to find the minimum static reserve capacity to meet the total load demand while keeping the system reliability index within a desired value. Nature (as the other player), which determines the wind power output, is modeled as an attacker who wants to worsen the system reliability level due to its uncertainty and inaccurate prediction. Then, a two-stage relaxation algorithm is introduced to solve the min-max game. Finally, the proposed model for static reserve planning is applied to the IEEE Reliability Test System (RTS), and its robustness and high efficiency are demonstrated by comparing it to the traditional expectation method and Monte Carlo method.
Keywords :
IEEE standards; Monte Carlo methods; decision making; game theory; minimax techniques; power generation planning; relaxation theory; wind power plants; IEEE reliability test system; Monte Carlo method; decision-making problems; game theoretic approach; large-scale integration; min-max game model; power system static reserve planning; robust optimization; static reserve capacity planning problem; system reliability index; total load demand; traditional expectation method; two-stage relaxation algorithm; wind power; Capacity planning; Games; Load modeling; Planning; Reliability; Uncertainty; Wind power generation; Game theory; generating capacity adequacy; static reserve; system reliability index; wind power;
Journal_Title :
Sustainable Energy, IEEE Transactions on
DOI :
10.1109/TSTE.2014.2299827