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Vehicle Delay-tolerant Network Routing Algorithm based on Multi-period Bayesian Network

机译:基于多周期贝叶斯网络的车辆延迟耐受网络路由算法

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Delay-tolerant networks (DTNs) are wireless mobile networks where constant end-to-end connections may not exist among nodes. In real-life vehicle DTNs, most nodes have repetitive movement patterns. However, due to the change of time and different activity scenarios, the movement patterns cannot be described consistently with a single model. Considering this issue, the Multi-period Bayesian Network (MBN) is proposed to build multiple prediction models, which intends to predict the regular movement patterns of nodes in the real world. The Bayesian network model is constructed by using several network parameters (e.g. spatial and temporal information at the time of message forwarding) to describe the movement patterns of DTN nodes. Additionally, a novel classification method called Dynamic Multiple-Level Classification (DMLC), is proposed where nodes are classified into multiple levels according to the dynamic parameters. Followed by that, a routing algorithm based on MBN is presented, which can make routing decisions based on the classification results of DMLC. The simulation results show that MBN algorithm and DMLC method can improve the delivery ratio with a minor forwarding overhead.
机译:延迟宽容网络(DTN)是无线移动网络,其中节点之间可能不存在恒定的端到端连接。在现实生活中,大多数节点具有重复的运动模式。然而,由于时间和不同的活动场景的变化,不能用单个模型一致地描述运动模式。考虑到这个问题,提出了多个贝叶斯网络(MBN)来构建多个预测模型,该模型打算预测现实世界中的节点的常规运动模式。贝叶斯网络模型是通过使用多个网络参数(例如,在消息转发时的空间和时间信息)来构造,以描述DTN节点的移动模式。另外,提出了一种名为动态多级分类(DMLC)的新型分类方法,其中节点根据动态参数分类为多个级别。其次是,提出了一种基于MBN的路由算法,其可以基于DMLC的分类结果来进行路由决策。仿真结果表明,MBN算法和DMLC方法可以提高与次要转发开销的传递比率。

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