Article ID Journal Published Year Pages File Type
429398 Journal of Computational Science 2014 11 Pages PDF
Abstract

This paper proposes a new co-swarm PSO (CSHPSO) for constrained optimization problems, which is obtained by hybridizing the recently proposed shrinking hypersphere PSO (SHPSO) with the differential evolution (DE) approach. The total swarm is subdivided into two sub swarms in such a way that the first sub swarms uses SHPSO and second sub swarms uses DE. Experiments are performed on a state-of-the-art problems proposed in IEEE CEC 2006. The results of the CSHPSO is compared with SHPSO and DE in a variety of fashions. A statistical approach is applied to provide the significance of the numerical experiments. In order to further test the efficacy of the proposed CSHPSO, an economic dispatch (ED) problem with valve points effects for 40 generating units is solved. The results of the problem using CSHPSO is compared with SHPSO, DE and the existing solutions in the literature. It is concluded that CSHPSO is able to give the minimal cost for the ED problem in comparison with the other algorithms considered. Hence, CSHPSO is a promising new co-swarm PSO which can be used to solve any real constrained optimization problem.

•An efficient co-swarm PSO (CSHPSO) is proposed for non-linear constrained optimization.•The developed algorithm is tested over 24 benchmark problems proposed in IEEE CEC 2006.•The results are validated numerically as well as statistically.•A real life application of power optimization in economic dispatch problem is solved using the developed algorithms and results are compared with its contemporary algorithms.•Applicability of the CSHPSO is justified for real life constrained optimization problems.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
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