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Mobility-based multicast routing algorithm for wireless mobile Ad-hoc networks: A learning automata approach

机译:无线移动自组织网络中基于移动性的多播路由算法:一种学习自动机方法

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During the last decades, many studies have been conducted on multicast routing in mobile ad hoc networks (MANET) and a host of algorithms have been proposed. In existing algorithms, the mobility characteristics are assumed to be constant, and so they do not scale well when the mobility parameters are not deterministic. To the best of our knowledge no work has been done on multicast routing when the mobility parameters are stochastic, while in realistic applications these parameters vary with time. In this paper, we propose a mobility-based multicast routing algorithm for wireless MANETs wherein the mobility characteristics are stochastic and unknown. The proposed algorithm estimates the expected relative mobility of each host, by sampling its movement parameters in various epochs, to realistically predict its motion behavior, and takes advantage of the Steiner connected dominating set to form the virtual multicast backbone. To do this, in this paper, a stochastic version of the minimum Steiner connected dominating set problem in weighted network graphs, where the relative mobility of each host is considered as its weight is initially introduced. Then, a distributed learning automata-based algorithm is designed to solve this problem. The designed algorithm is proposed for multicast routing in wireless mobile Ad-hoc networks. The experiments show the superiority of the proposed multicast routing algorithm over the existing methods in terms of the packet delivery ratio, multicast route lifetime, and end-to-end delay. We present a strong convergence theorem in which the convergence of the proposed distributed learning automata-based algorithm to the optimal solution is proved. It is shown that the most stable multicast route is found with a probability as close as to unity by the proper choice of the parameters of the distributed learning automata.
机译:在过去的几十年中,对移动自组织网络(MANET)中的多播路由进行了许多研究,并提出了许多算法。在现有算法中,假设迁移率特性是恒定的,因此当迁移率参数不确定时,它们不能很好地扩展。据我们所知,当移动性参数是随机的时,尚未在多播路由上进行任何工作,而在实际应用中,这些参数会随时间变化。在本文中,我们提出了一种用于无线MANET的基于移动性的多播路由算法,其中移动性是随机的并且是未知的。所提出的算法通过在各个时期中采样其主机的运动参数来估计每个主机的预期相对移动性,以实际地预测其主机的运动行为,并利用Steiner连接的主导集来形成虚拟多播骨干网。为此,在本文中,首先引入了加权网络图中最小Steiner连接控制集问题的随机版本,其中最初将每个主机的相对移动性视为其权重。然后,设计了一种基于分布式学习自动机的算法来解决该问题。提出了所设计的算法用于无线移动自组织网络中的组播路由。实验表明,在包传送率,组播路由寿命和端到端延迟方面,所提出的组播路由算法优于现有方法。我们提出了一个强收敛定理,证明了所提出的基于分布式学习自动机算法的最优解的收敛性。结果表明,通过正确选择分布式学习自动机的参数,可以找到最稳定的多播路由,其概率接近于1。

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