Title :
Pumped-Storage Scheduling Using Evolutionary Particle Swarm Optimization
Author_Institution :
St. John´´s Univ., Taipei
fDate :
3/1/2008 12:00:00 AM
Abstract :
This paper presents new solution algorithms based on an evolutionary particle swarm optimization (EPSO) for solving the pumped-storage (P/S) scheduling problem. The proposed EPSO approach combines a basic particle swarm optimization (PSO) with binary encoding/decoding techniques as well as a mutation operation. The binary encoding/decoding techniques are adopted to model the discrete characteristics of a P/S plant. The mutation operation is applied to accelerate convergence and escape local optimums. The optimal generation schedules for both P/S and thermal units are concurrently obtained within the evolutionary process of a scoring function. Therefore, hydrothermal iteration is no longer needed. The proposed approach is applied with great success to an actual utility system consisting of four P/S units and 34 thermal units. Experimental results indicate the attractive properties of the EPSO approach in a practical application, namely, a highly optimal solution and robust convergence behavior.
Keywords :
decoding; encoding; evolutionary computation; hydrothermal power systems; particle swarm optimisation; pumped-storage power stations; scheduling; EPSO; binary decoding techniques; binary encoding techniques; evolutionary particle swarm optimization; mutation operation; optimal generation schedules; pumped-storage scheduling; Convergence; Costs; Decoding; Encoding; Genetic mutations; Particle swarm optimization; Production; Reservoirs; Scheduling algorithm; Spinning; Evolutionary particle swarm optimization (EPSO); hydrothermal coordination; pumped storage (P/S);
Journal_Title :
Energy Conversion, IEEE Transactions on
DOI :
10.1109/TEC.2007.914312