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Optimal relay node selection in time-varying IoT networks using apriori contact pattern information

机译:使用先验联系模式信息的时变IoT网络中的最佳中继节点选择

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摘要

Mobility of computing devices in Internet of Things brings the challenge of robust data forwarding over time-varying networks. To realize robust data forwarding methods in time-varying IoT networks, relay nodes need to be selected at every instant in time to improve the QoS in such networks. In this work, we propose a method for online relay node selection by utilizing the partial knowledge of apriori network contact patterns. The network contact pattern information is generally obtained by various machine learning and prediction methods. The proposed method selects a relay node based on joint optimization of two network parameters namely, data latency and link reliability. A heuristic cost function is modelled to jointly optimize the data latency and link reliability utilizing the apriori contact pattern information. By minimizing the cost function, an optimal relay node is chosen at every instant in time. During performance evaluation, network contact patterns of IoT devices are modelled using the homogeneous Poisson point processes. The contact period information of all the IoT devices with their neighbours is updated continuously and a relay node is found in an online manner. Simulation results indicate that the proposed method significantly improves data latency and the reliability of links when the knowledge of apriori contact patterns of IoT devices is utilized. Performance of the proposed data forwarding method is analysed in terms of transmission range, mobility tolerance, and connectivity parameters of time-varying IoT networks. The proposed method indicates additional gain in terms of packet replication cost when compared to the conventional methods. (C) 2019 Elsevier B.V. All rights reserved.
机译:物联网中计算设备的移动性带来了通过时变网络进行可靠数据转发的挑战。为了在时变IoT网络中实现可靠的数据转发方法,需要在每个时刻都选择中继节点,以改善此类网络中的QoS。在这项工作中,我们提出了一种利用先验网络联系方式的部分知识进行在线中继节点选择的方法。通常通过各种机器学习和预测方法来获得网络联系模式信息。所提出的方法基于数​​据延迟和链路可靠性两个网络参数的联合优化选择中继节点。对启发式成本函数进行建模,以利用先验联系模式信息共同优化数据等待时间和链接可靠性。通过最小化成本函数,可以在每个时间点选择一个最佳的中继节点。在性能评估期间,使用同类泊松点过程对物联网设备的网络联系模式进行建模。持续更新所有IoT设备与其邻居的联系时间信息,并以在线方式找到中继节点。仿真结果表明,该方法在利用物联网设备先验联系方式知识的基础上,大大提高了数据时延和链路的可靠性。从传输范围,移动性容限和时变物联网网络的连接参数方面分析了所提出的数据转发方法的性能。与常规方法相比,所提出的方法在分组复制成本方面指示出额外的收益。 (C)2019 Elsevier B.V.保留所有权利。

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