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Self-Adaptive Trust Based ABR Protocol for MANETs UsingQ-Learning

机译:使用达克学习的舰队自适应信任的ABR协议

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Mobile ad hoc networks (MANETs) are a collection of mobile nodes with a dynamic topology. MANETs work under scalable conditions for many applications and pose different security challenges. Due to the nomadic nature of nodes, detecting misbehaviour is a complex problem. Nodes also share routing information among the neighbours in order to find the route to the destination. This requires nodes to trust each other. Thus we can state that trust is a key concept in secure routing mechanisms. A number of cryptographic protection techniques based on trust have been proposed.Q-learning is a recently used technique, to achieve adaptive trust in MANETs. In comparison to other machine learning computational intelligence techniques,Q-learning achieves optimal results. Our work focuses on computing a score usingQ-learning to weigh the trust of a particular node over associativity based routing (ABR) protocol. Thus secure and stable route is calculated as a weighted average of the trust value of the nodes in the route and associativity ticks ensure the stability of the route. Simulation results show thatQ-learning based trust ABR protocol improves packet delivery ratio by 27% and reduces the route selection time by 40% over ABR protocol without trust calculation.
机译:移动临时网络(MANET)是具有动态拓扑的移动节点的集合。 MANETS在可扩展条件下工作,以获得许多应用程序,构成不同的安全挑战。由于节点的游牧性,检测不当行为是一个复杂的问题。节点还共享邻居之间的路由信息​​,以便查找到目的地的路由。这需要节点相互信任。因此,我们可以说明信任是安全路由机制中的关键概念。已经提出了许多基于信任的加密保护技术。 - 学习是最近使用的技术,实现了船只的自适应信任。与其他机器学习计算智能技术相比,Q-Learning实现了最佳结果。我们的工作侧重于计算使用Q学习的分数来称量特定节点的信任,而不是基于相关的路由(ABR)协议。因此,将安全稳定的路线计算为路线中节点的信任值的加权平均值,并且关联距离确保路由的稳定性。仿真结果表明,基于学习的Trust ABR协议将数据包传递比率提高27%,并通过ABR协议将路径选择时间减少40%而无需信任计算。

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