Dipayan De, Debalina Saha, T. Samanta, D. Jana, Debapriya Palai, Aruni Maji, Syed Wakash Ahmad, Aishwarya Poddar, P. Das
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Economic load dispatch by optimal scheduling of generating units using improved real coded genetic algorithm
This paper elucidatesa new improved optimization algorithm for economic Load dispatch (ELD) problem using self-adaptive real coded genetic algorithm. The ELD dilemma is formulated as a single-objective on-linear constrained optimization problem gratifying both equality and inequality constraints. The regeneration of population practice is integrated to the conventional real coded genetic algorithm (RCGA) in order to improve dodging the neighboring minimum solution by self-adaptation followed by polynomial mutation impact with arithmetic crossover. To test the outfitted performance and compatibility among genetic operators, a six unit's scheme is projected for a standard load model and the better simulation results produce improved solution by the proposed method.