Optimizing Multiples Objectives in Dynamic Multicast Groups using a probabilistic BFS Algorithm

Generalized Multiobjective Multitree model (GMMmodel) considering multitree-multicast load balancing with splitting in a multiobjective context. To solve the GMM-model, a multiobjective evolutionary algorithm (MOEA) inspired by the Strength Pareto Evolutionary Algorithm (SPEA) was proposed. In this...

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Published inICN/ICONS/MCL 2006 : proceedings : International Conference on Networking, International Conference on Systems, International Conference on Mobile Communications and Learning Technologies : Morne, Mauritius, 23-2 April, 2006 p. 148
Main Authors Donoso, Y., Fabregat, R., Solano, F., Marzo, J.L., Baran, B.
Format Conference Proceeding
LanguageEnglish
Published IEEE 2006
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ISBN9780769525525
0769525520
DOI10.1109/ICNICONSMCL.2006.164

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Summary:Generalized Multiobjective Multitree model (GMMmodel) considering multitree-multicast load balancing with splitting in a multiobjective context. To solve the GMM-model, a multiobjective evolutionary algorithm (MOEA) inspired by the Strength Pareto Evolutionary Algorithm (SPEA) was proposed. In this paper, we extends the GMM-model to dynamic multicast groups. If a multicast tree is recomputed from scratch, it may consume a considerable amount of CPU time and all communication using the multicast tree will be temporarily interrupted. To alleviate these drawbacks we propose a Dynamic Generalized Multiobjective Multitree model (D-GMM-model) that in order to add new egress nodes makes use of a multicast tree previously computed with GMM-model. To solve the Dynamic-GMM-model, a Dynamic-GMM algorithm (D-GMM) is proposed. Experimental results considering up to 11 different objectives are presented. We compare the GMM-model performance using MOEA with the proposed Dynamic- GMM-model using D-GMM. The main contributions are the optimization model for dynamic multicast routing; and the heuristic algorithm proposed with polynomial complexity.
ISBN:9780769525525
0769525520
DOI:10.1109/ICNICONSMCL.2006.164