TMODF: Trajectory-based multi-objective optimal data forwarding in vehicular networks

Mao-Bao Fu, Xin Li, Fan Li, Xinyu Guo, Zhi-Li Wu
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引用次数: 3

Abstract

Vehicular networks have been increasingly used for applications like road infrastructure monitoring and traffic jam detection, etc. Data forwarding is a well-known challenging problem in vehicular networks, which suffers from delay and error due to the frequent network disruption and fast topological change. The minimizations of the delivery delay and network cost are both central to data forwarding in vehicular networks. However, previous works usually focus on only one of the two objectives and most of them do not make good use of vehicle trajectory information. In this paper, we formulate the V2V (vehicle to vehicle) data forwarding problem as a novel multi-objective Markov Decision Process (MDP). We exploit the vehicle trajectory information and traffic statistics to estimate the parameters of the MDP (i.e., transition probabilities, rewards). The optimal routing policy is then developed by solving the multi-objective MDP. We conduct extensive simulations on a taxi network in a mega-city, the experimental results validate the effectiveness of our proposed mechanism.
基于轨迹的车辆网络多目标最优数据转发
车辆网络越来越多地应用于道路基础设施监控和交通堵塞检测等领域。数据转发是车用网络中一个非常具有挑战性的问题,由于网络频繁中断和拓扑变化快,导致数据转发存在延迟和错误。在车载网络中,传输延迟和网络成本的最小化是数据转发的核心。然而,以往的工作通常只关注两个目标中的一个,并且大多数没有很好地利用车辆轨迹信息。本文将车对车数据转发问题表述为一种新的多目标马尔可夫决策过程(MDP)。我们利用车辆轨迹信息和交通统计来估计MDP的参数(即转移概率,奖励)。通过求解多目标MDP,得到最优路由策略。我们在一个特大城市的出租车网络上进行了大量的模拟,实验结果验证了我们提出的机制的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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