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首页> 外文期刊>International Journal of Distributed Sensor Networks >Spatial and Temporal Correlations-Based Routing Algorithm in Intermittent Connectivity Human Social Network
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Spatial and Temporal Correlations-Based Routing Algorithm in Intermittent Connectivity Human Social Network

机译:间歇连接人类社交网络中基于时空相关的路由算法

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摘要

The social network formed by people is one of the key applications of Delay-Tolerant Network (DTN). Owing to its intermittent connectivity and unique human mobility patterns, how to transmit data in an effective way is a challenging problem for the social network. In this paper, we propose the idea of Trip History Model (THM) which establishes a model on a single person's mobility, and then a Spatial and Temporal Correlations-Based Routing Algorithm (STC) is proposed. In STC, the node delivery probability is calculated according to both a node's current moving prediction and its history record to give guidance for message transmission. Our simulation results show that, compared with LABEL and PROPHET algorithms, STC effectively improves the routing performance of the network.
机译:由人组成的社交网络是耐延迟网络(DTN)的关键应用之一。由于其间歇性的连接性和独特的人类移动性模式,如何以有效的方式传输数据对于社交网络而言是一个具有挑战性的问题。在本文中,我们提出了行程历史模型(THM)的思想,该模型建立了一个人的移动性模型,然后提出了一种基于时空相关性的路由算法(STC)。在STC中,将根据节点的当前移动预测及其历史记录来计算节点传递概率,从而为消息传输提供指导。仿真结果表明,与LABEL和PROPHET算法相比,STC有效地提高了网络的路由性能。

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