Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
385396 | Expert Systems with Applications | 2011 | 9 Pages |
This paper presents a new multi-objective optimization algorithm in which multi-swarm cooperative strategy is incorporated into particle swarm optimization algorithm, called multi-swarm cooperative multi-objective particle swarm optimizer (MC-MOPSO). This algorithm consists of multiple slave swarms and one master swarm. Each slave swarm is designed to optimize one objective function of the multi-objective problem in order to find out all the non-dominated optima of this objective function. In order to produce a well distributed Pareto front, the master swarm is developed to cover gaps among non-dominated optima by using a local MOPSO algorithm. Moreover, in order to strengthen the capability locating multiple optima of the PSO, several improved techniques such as the Pareto dominance-based species technique and the escape strategy of mature species are introduced. The simulation results indicate that our algorithm is highly competitive to solving the multi-objective optimization problems.
► A MOPSO algorithm based on multi-swarms cooperative strategy is presented. ► This algorithm consists of multiple slave swarms and one master swarm. ► Non-dominated optima of each objective function will be found by the slave swarms. ► Gaps among non-dominated optima will be covered by the master swarm. ► The proposed algorithm shows good performance to solving the MOPs.