基于Ant的MANET智能路由协议

D. Karthikeyan, M. Dharmalingam
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引用次数: 27

摘要

移动自组织网络(MANET)是一组在没有任何基础设施支持的情况下相互通信的移动节点。在manet中的路由。是极具挑战性的,因为有无线网络。动态特性,其带宽和功率能量有限。使用电池的MANET节点试图通过减少其消耗的能量来追求能源效率。文献表明,尽管它们在某些任务中保持了可接受的性能,但对于多跳路由来说,这并不是最优策略。受自然启发的算法(群体智能),如蚁群优化(ACO)算法,已被证明是开发自组网路由算法的良好技术。群体智能(Swarm intelligence)是一种计算智能技术,它涉及分布式环境中自治代理的集体行为,这些代理在局部相互作用以解决给定问题,并希望找到问题的全局解决方案。提出了一种基于蚁群算法的manet节能路由算法,以最大限度地减少节点的能量消耗,延长整个通信系统的寿命。在网络工具NS2上对该算法的性能进行了仿真,并与现有算法的性能进行了比较。
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Ant based intelligent routing protocol for MANET
Mobile ad hoc network (MANET) is a group of mobile nodes which communicates with each other without any supporting infrastructure. Routing in MANETs. is extremely challenging because of MANETs. dynamic features, its limited bandwidth and power energy. MANET nodes operating on battery try to pursue the energy efficiency heuristically by reducing the energy they consumed. Literature shows though they maintain acceptable performance of certain tasks, for multi-hop routing this is not optimal strategy. Nature-inspired algorithms (swarm intelligence) such as ant colony optimization (ACO) algorithms have shown to be a good technique for developing routing algorithms for MANETs. Swarm intelligence is a computational intelligence technique that involves collective behavior of autonomous agents that locally interact with each other in a distributed environment to solve a given problem in the hope of finding a global solution to the problem. We propose an energy efficient routing algorithm for MANETs based on ACO for minimizing energy consumption of the nodes and prolong the life of the overall communication system. The performance of the proposed algorithm is simulated on the network tool NS2 and is also compared with existing algorithm's performance.
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