一种解决聚合组播问题的蚁群算法

Fangjin Zhu, Hua Wang
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引用次数: 1

摘要

当网络中存在大量并发组时,传统的组播技术面临着严重的状态可扩展性问题。聚合组播强制多个组播组共享一个公共的分布树,作为解决可扩展性问题的一种新方法。这可以定义为最小分组问题,并被证明是一个NPC问题。提出了一种蚁群优化算法来解决这一问题。在设计多播组间的适应度函数时,将聚合树中的组数作为一个重要的组成部分。基于适应度函数设计信息素更新规则。并将多播组与聚合树之间的共同邻居数定义为选择启发式信息。仿真结果表明,该算法在各种带宽浪费率下都具有良好的性能。与贪婪算法相比,该算法具有更好的优化性能,特别是在带宽浪费率较大的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An ACO algorithm to tackle aggregated multicast problem
Traditional multicast technology faces a serious state scalability problem when there are large numbers of concurrent groups in the network. As a new approach to solve this scalability problem, aggregated multicast forces multiple multicast groups to share a common distribution tree. This can be defined as a minimum grouping problem and is proved to be an NPC problem. An ant colony optimization algorithm to tackle this problem is proposed. The number of groups in each aggregated tree is used as an important component when designing the fitness function between two multicast groups. Pheromone update rules are designed based on the fitness function. And the number of common neighbors between a multicast group and an aggregated tree is defined as the selection heuristic information. Simulation results show that this algorithm performs well with various bandwidth waste rates. Compared with a greedy algorithm, this algorithm has better optimization performance, especially when bandwidth waste rate is relatively big.
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