A Stochastic Mobility Prediction Algorithm for finding Delay and Energy Efficient Routing Paths considering Movement Patterns in Mobile IoT Networks

C. Lozano-Garzon, G. Montoya, Y. Donoso
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Abstract

In Mobile IoT Networks, the network nodes are constantly moving in a field, causing interruptions in the communication paths and, thus, generating long delays at the time of building a communication path from a source IoT node to the gateway (destination node). Communication interruptions affect the delay performance in delay-sensitive applications such as health and military scenarios. In addition, these IoT nodes are equipped with batteries, whereby it is also necessary to accomplish energy consumption requirements. In summary, a gateway node should not receive messages or packets coming from the IoT nodes with undesired delays, whereby it is pertinent to propose new algorithms or techniques for minimizing the delay and energy consumption experimented in the IoT network. Due to IoT nodes are attached to humans, animals or objects, they present a specific movement pattern that can be analyzed to improve the path-building with the aim of reducing the end-to-end delay. Therefore, we propose the usage of a mobility prediction technique based on a Stochastic Model to predict nodes’ positions in order to obtain minimum cost paths in terms of energy consumption and delay in mobile IoT networks. Our stochastic model is tuned and evaluated under the Markov-Gauss mobility model, considering different levels of movement randomness in order to test how the capability prediction of our proposal can impact the delay and energy consumption in mobile IoT networks in comparison with others routing algorithms.
考虑移动物联网网络运动模式的随机移动预测算法寻找延迟和节能路由路径
在移动物联网网络中,网络节点在一个领域内不断移动,导致通信路径中断,从而在构建从源物联网节点到网关(目的节点)的通信路径时产生较长的延迟。在医疗和军事等对延迟敏感的应用中,通信中断会影响延迟性能。此外,这些物联网节点都配备了电池,因此也需要满足能耗要求。总之,网关节点不应该接收来自具有不希望的延迟的物联网节点的消息或数据包,因此提出新的算法或技术来最小化物联网网络中的延迟和能耗是相关的。由于物联网节点附着在人类、动物或物体上,它们呈现出一种特定的运动模式,可以对其进行分析,以改善路径构建,从而减少端到端延迟。因此,我们建议使用基于随机模型的移动性预测技术来预测节点的位置,以便在移动物联网网络中获得能量消耗和延迟方面的最小成本路径。我们的随机模型在马尔可夫-高斯移动模型下进行了调整和评估,考虑了不同级别的移动随机性,以测试与其他路由算法相比,我们的提议的能力预测如何影响移动物联网网络中的延迟和能耗。
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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