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Transient chaotic neural network-based disjoint multipath routing for mobile ad-hoc networks

机译:基于临时混沌神经网络的移动自组网不相交多径路由

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Due to mobility of wireless hosts, routing in mobile ad-hoc networks (MANETs.) is a challenging task. Multipath routing is employed to provide reliable communication, load balancing, and improving quality of service of MANETs. Multiple paths are selected to be node-disjoint or link-disjoint to improve transmission reliability. However, selecting an optimal disjoint multipath set is an NP-complete problem. Neural networks are powerful tools for a wide variety of combinatorial optimization problems. In this study, a transient chaotic neural network (TCNN) is presented as multipath routing algorithm in MANETs. Each node in the network can be equipped with a neural network, and all the network nodes can be trained and used to obtain optimal or sub-optimal high reliable disjoint paths. This algorithm can find both node-disjoint and link-disjoint paths with no extra overhead. The simulation results show that the proposed method can find the high reliable disjoint path set in MANETs. In this paper, the performance of the proposed algorithm is compared to the shortest path algorithm, disjoint path set selection protocol algorithm, and Hopfield neural network (HNN)-based model. Experimental results show that the disjoint path set reliability of the proposed algorithm is up to 4.5 times more than the shortest path reliability. Also, the proposed algorithm has better performance in both reliability and the number of paths and shows up to 56% improvement in path set reliability and up to 20% improvement in the number of paths in the path set. The proposed TCNN-based algorithm also selects more reliable paths as compared to HNN-based algorithm in less number of iterations.
机译:由于无线主机的移动性,移动自组织网络(MANET)中的路由是一项艰巨的任务。采用多路径路由来提供可靠的通信,负载平衡并提高MANET的服务质量。选择多个路径为节点不相交或链路不相交以提高传输可靠性。但是,选择最佳不相交多径集是一个NP完全问题。神经网络是解决各种组合优化问题的强大工具。在这项研究中,提出了一种瞬态混沌神经网络(TCNN)作为MANET中的多路径路由算法。网络中的每个节点都可以配备一个神经网络,并且可以训练所有网络节点并将其用于获得最佳或次优的高可靠不相交路径。该算法可以找到节点不相交的路径和链接不相交的路径,而没有额外的开销。仿真结果表明,该方法能够在MANET中找到高可靠的不相交路径集。在本文中,将该算法的性能与最短路径算法,不相交路径集选择协议算法和基于Hopfield神经网络(HNN)的模型进行了比较。实验结果表明,所提出算法的不相交路径集可靠性比最短路径集可靠性高4.5倍。而且,所提出的算法在可靠性和路径数量上都具有更好的性能,并且在路径集可靠性上显示出高达56%的改善,并且在路径集合中显示出路径数上的高达20%的改善。与基于HNN的算法相比,所提出的基于TCNN的算法还选择了更少的迭代次数,从而选择了更可靠的路径。

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