Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
493877 | Swarm and Evolutionary Computation | 2013 | 21 Pages |
This paper presents a model for maintenance scheduling (MS) of generators using hybrid improved binary particle swarm optimization (IBPSO) based coordinated deterministic and stochastic approach. The objective function of this paper is to reduce the loss of load probability (LOLP) and minimizing the annual supply reserve ratio deviation for a power system which are considered as a measure of power system reliability. Genetic algorithm (GA) operators are introduced in the IBPSO to acquire diversified solutions in the search space. Moreover, in this paper, the hybrid IBPSO based economic dispatch (ED) has been decomposed as a sub-problem in the maintenance model that results to a more practical maintenance schedule. A case study for the real power system model in Odisha (India) is considered. Comprehensive studies have also been carried out for the different power system consisting of 5-unit system, 21-unit system and IEEE reliability test system (RTS). It shows that the proposed algorithm can accomplish a significant levelization in the reliability indices over the planning horizon for reliable operation of the power system and demonstrates the usefulness of the proposed approach. The proposed method yields better result by means of improved search performance and better convergence characteristics which are compared to the other optimization methods and conventional method.
► We have presented hybrid improved binary particle swarm optimization based maintenance scheduling. ► Forced random outages of generators are considered in the proposed algorithm. ► Minimizations of loss of load probability, annual supply reserve ratio deviation are two major criteria. ► GA operators are introduced in IBPSO to acquire diversified solutions. ► Hybrid IBPSO based economic dispatch has been decomposed as a sub-problem.