Multi Objective Particle Swarm Optimization based Cooperative Agents with Automated Negotiation

27 Jan 2019Najwa KoukaRaja FdhilaAdel M. Alimi

This paper investigates a new hybridization of multi-objective particle swarm optimization (MOPSO) and cooperative agents (MOPSO-CA) to handle the problem of stagnation encounters in MOPSO, which leads solutions to trap in local optima. The proposed approach involves a new distribution strategy based on the idea of having a set of a sub-population, each of which is processed by one agent... (read more)

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