PARALLEL EVOLUTIONARY MULTI-CRITERION OPTIMIZATION FOR MOBILE TELECOMMUNICATION NETWORKS OPTIMIZATION

In this paper, we propose a new type of parallel genetic algorithm model for multi objective optimization problems. That is called a ”Master-Slave model with Local Cultivation model (MSLC)”. To clarify the characteristics and effectiveness of this model, the proposed model and the various EAs are applied to solve an antenna arrangement problem of mobile telecommunication. Thorough this problem, advantages and disadvantages of these models are made clarified.

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