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Swarm-Intelligence-Based Rendezvous Selection via Edge Computing for Mobile Sensor Networks

机译:基于群体的智能化聚会选择通过边缘计算移动传感器网络

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摘要

Mobile-edge nodes, as an efficient approach to the performance improvement of wireless sensor networks (WSNs), play an important role in edge computing. However, existing works only focus on connected networks and suffer from high calculational costs. In this article, we propose a rendezvous selection strategy for data collection of disjoint WSNs with mobile-edge nodes. The goal is to achieve full network connectivity and minimize path length. From the perspective of the application scenario, this article is distinctive in two aspects. On the one hand, it is specially designed for partitioned networks which are much more complex than conventional connected scenarios. On the other hand, this article is specially designed for delay-harsh applications rather than usual energy-oriented scenarios. From the viewpoint of the implementation method, a simplified ant colony optimization (ACO) algorithm is performed and displays two characteristics. The first one is the path segmenting mechanism, simplifying the path construction of each part and consequently reducing the computational cost. The second one is the candidate grouping mechanism, reducing the search space and accordingly speeding up the convergence speed. Simulation results demonstrate the feasibility and advantages of this approach.
机译:移动边缘节点作为无线传感器网络(WSNS)性能改进的有效方法,在边缘计算中发挥着重要作用。但是,现有的作品仅关注连接的网络并遭受高的计算成本。在本文中,我们提出了一个具有移动边缘节点的Direjoint WSN的数据收集的Rendezvous选择策略。目标是实现完整的网络连接并最大限度地减少路径长度。从应用方案的角度来看,这篇文章在两个方面是独特的。一方面,它专为分区网络设计,这些网络比传统的连接方案要复杂得多。另一方面,本文专为延迟苛刻的应用而言而不是常规的能量导向的场景。从实现方法的观点来看,执行简化的蚁群优化(ACO)算法并显示两个特征。第一个是路径分段机制,简化每个部分的路径结构,从而降低计算成本。第二个是候选分组机制,减少搜索空间并因此加速收敛速度。仿真结果表明了这种方法的可行性和优点。

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