Abstract

This paper investigates various strategies for incorporating the headless chicken macromutation operator and the guaranteed convergence particle swarm optimization velocity update into a dynamic particle swarm optimization algorithm. Three different dynamic headless chicken guaranteed convergence particle swarm optimization algorithms are proposed and evaluated on a diverse set of single-objective dynamic benchmark problems. Competitive performance is demonstrated by a Von Neumann headless chicken guaranteed convergence particle swarm optimization algorithm.

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