An improved PSO based on Initial selection of Particles (ISBPSO) for Economic load Dispatch

In this paper, an attempt has been made to develop an improved PSO based on Initial selection of Particles (ISBPSO) by selecting a better population of particles from the initially generated particles and this population has been generated based on function value. ISBPSO has been implemented to perform Economic load Dispatch on IEEE 5,14, and 30 bus systems and its performance has been compared to Basic Particle Swarm Optimization( BPSO) resulted in faster convergence and more accurate results. It was observed that ISBPSO resultant in faster convergence and better accuracy.

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