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Location Prediction-Based Data Dissemination Using Swarm Intelligence in Opportunistic Cognitive Networks

机译:机会认知网络中基于群智能的基于位置预测的数据分发

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Swarm intelligence is widely used in the application of communication networks. In this paper we adopt a biologically inspired strategy to investigate the data dissemination problem in the opportunistic cognitive networks (OCNs). We model the system as a centralized and distributed hybrid system including a location prediction server and a pervasive environment deploying the large-scale human-centric devices. To exploit such environment, data gathering and dissemination are fundamentally based on the contact opportunities. To tackle the lack of contemporaneous end-to-end connectivity in opportunistic networks, we apply ant colony optimization as a cognitive heuristic technology to formulate a self-adaptive dissemination-based routing scheme in opportunistic cognitive networks. This routing strategy has attempted to find the most appropriate nodes conveying messages to the destination node based on the location prediction information and intimacy between nodes, which uses the online unsupervised learning on geographical locations and the biologically inspired algorithm on the relationship of nodes to estimate the delivery probability. Extensive simulation is carried out on the real-world traces to evaluate the accuracy of the location prediction and the proposed scheme in terms of transmission cost, delivery ratio, average hops, and delivery latency, which achieves better routing performances compared to the typical routing schemes in OCNs.
机译:群智能被广泛应用于通信网络的应用中。在本文中,我们采用生物学启发的策略来研究机会认知网络(OCN)中的数据分发问题。我们将系统建模为集中式和分布式的混合系统,包括位置预测服务器和部署大规模以人为本的设备的普适环境。为了开发这样的环境,数据收集和分发基本上基于联系机会。为了解决机会网络中同时存在的端到端连通性问题,我们将蚁群优化技术用作一种认知启发式技术,以在机会认知网络中制定基于自适应传播的路由方案。这种路由策略已尝试根据位置预测信息和节点之间的亲密关系找到最合适的节点,以将消息传送到目标节点,该节点使用在线无监督的地理位置学习和基于节点关系的生物学启发算法来估计节点之间的关系。交付概率。在真实世界的轨迹上进行了广泛的仿真,以评估位置预测和提议的方案在传输成本,传递比率,平均跳数和传递延迟方面的准确性,与典型的路由方案相比,它可以获得更好的路由性能在OCN中。

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