Title :
Realistic and Transparent Optimum Scheduling Strategy for Hybrid Power System
Author :
Reddy, S. Surender ; Momoh, James A.
Author_Institution :
Dept. of Railroad & Electr. Eng., Woosong Univ., Daejeon, South Korea
Abstract :
This paper addresses the transparent and realistic optimum day-ahead (DA) scheduling for a hybrid power system by explicitly considering the uncertainties. The basic components of the hybrid power system include conventional thermal generators, wind farm, and solar photovoltaic (PV) modules. A set of batteries is available for energy storage and/or discharge. The most critical problem in operating a wind farm or solar PV module is that these renewable energy resources cannot be dispatched in the same manner as conventional plants, because they involve climatic factors such as wind velocity and solar irradiation. This paper proposes the optimal scheduling strategy taking into account the impact of uncertainties in wind, solar PV, and load forecasts, and provides the best-fit DA schedule by minimizing both DA and real-time adjustment costs including the revenue from renewable energy certificates. This strategy consists of a genetic algorithm (GA)-based scheduling and a two-point estimate-based probabilistic real-time optimal power flow. The simulation for the IEEE 30-bus system with the GA and two-point estimate method, and the GA and Monte Carlo simulation have been obtained to test the effectiveness of the proposed scheduling strategy.
Keywords :
estimation theory; genetic algorithms; hybrid power systems; load flow; load forecasting; power generation scheduling; renewable energy sources; GA-based scheduling; IEEE 30-bus system simulation; Monte Carlo simulation; battery storage; genetic algorithm; hybrid power system; load forecasts; optimum day-ahead scheduling strategy; probabilistic real-time optimal power flow; real-time adjustment costs; renewable energy certificates; solar energy; two-point estimate method; wind energy; Hybrid power systems; Optimal scheduling; Real-time systems; Scheduling; Solar power generation; Wind forecasting; Wind power generation; Battery storage; day-ahead (DA) scheduling; hybrid power system; real-time (RT) adjustment price; renewable energy certificates (RECs); solar energy; wind energy;
Journal_Title :
Smart Grid, IEEE Transactions on
DOI :
10.1109/TSG.2015.2406879