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Multiobjective Multicast Routing with Ant Colony Optimization

机译:蚁群优化的多目标组播路由

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摘要

This work presents a multiobjective algorithm for multicast traffic engineering. The proposed algorithm is a new version of Multiobjective Ant Colony System (MOACS), based on Ant Colony Optimization (ACO). The proposed MOACS simultaneously optimizes the maximum link utilization, the cost of the multicast tree, the averages delay and the maximum end-to-end delay. In this way, a set of optimal solutions, known as Pareto set is calculated in only one run of the algorithm, without a priori restrictions. Experimental results obtained with the proposed MOACS were compared to a recently published Multiobjective Multicast Algorithm (MMA), showing a promising performance advantage for multicast traffic engineering.
机译:这项工作提出了一种用于多播流量工程的多目标算法。该算法是基于蚁群优化算法(ACO)的多目标蚁群系统(MOACS)的新版本。提出的MOACS同时优化了最大链路利用率,多播树的成本,平均延迟和最大端到端延迟。以此方式,仅在算法的一次运行中计算了一组最优解,称为Pareto集,而没有先验限制。用提议的MOACS获得的实验结果与最近发布的多目标组播算法(MMA)进行了比较,显示了组播流量工程的有希望的性能优势。

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