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Routing in VANETs: A fuzzy constraint Q-Learning approach

机译:VANET中的路由:模糊约束Q学习方法

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摘要

Vehicular ad hoc networks (VANETs) can be used for the purpose of driving assistance, environment monitoring and entertainment. However, due to the vehicle movement, limited wireless resources and lossy feature of wireless channel, providing a reliable multi-hop communication in VANETs is particularly challenging. In this paper, we propose a VANET routing protocol which learns the optimal route by employing a fuzzy constraint Q-Learning algorithm. The protocol uses a fuzzy logic to evaluate a wireless link is whether good or not by considering multiple metrics of signal strength, available bandwidth and relative vehicle movement. Based on the evaluation of each wireless link, the proposed protocol learns the best route using the route request messages and hello messages. Upon reception of a route request message, each node maintains an evaluation value for each possible next hop node. In this way, the protocol can choose the best route, which is difficult to acquire in a typical reactive routing protocol. We show the effectiveness of the proposed protocol by using computer simulations.
机译:车辆自组织网络(VANET)可以用于驾驶辅助,环境监控和娱乐目的。但是,由于车辆的移动,有限的无线资源和无线信道的损耗特性,在VANET中提供可靠的多跳通信尤其具有挑战性。在本文中,我们提出了一种VANET路由协议,该协议通过采用模糊约束Q学习算法来学习最佳路由。该协议通过考虑信号强度,可用带宽和相对车辆运动的多个指标,使用模糊逻辑来评估无线链路是否良好。基于对每个无线链路的评估,所提出的协议使用路由请求消息和问候消息来学习最佳路由。在接收到路由请求消息时,每个节点为每个可能的下一跳节点维护一个评估值。这样,协议可以选择最佳路由,这在典型的反应式路由协议中很难获得。我们通过使用计算机仿真来展示所提出协议的有效性。

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