Multiobjective Particle Swarm Optimization for Environmental/Economic Power Dispatch problem

Manoj Kumar.T, Saveetha University, Chennai; Vinod.V.P ,Saveetha University, Chennai; Asish John Mathew ,Karunya University, Coimbatore

Environmental/Economic (EED) dispatch, multiobjective optimization, particle swarm optimization, Pareto optimal solution, compromise factor.

By the use of fossil based fuels in power generation units requires the consideration of the environmental pollution. A multiobjective particle swarm optimization technique for the solution of environmental economic power dispatch problem is proposed in this paper. Here EED problem is formulated a nonlinear multiobjective function as objective function by considering both equality and inequality constraints. The multi-objective optimization in power systems treats economic and emission as conflicting objectives, to get an optimal solution some reasonable trade off among these objectives are required. So in this paper, the power dispatch is formulated into a two-objective optimization problem, which is to minimize the fuel cost as well as emission simultaneously.
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Paper ID: GRDJEV02I020013
Published in: Volume : 2, Issue : 2
Publication Date: 2017-02-01
Page(s): 1 - 6