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Toward a bio-inspired adaptive spatial clustering approach for IoT applications

机译:面向物联网应用的生物启发式自适应空间聚类方法

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Bio-inspired algorithms have demonstrated effective capabilities to solve Wireless Sensor Network (WSN) challenges. As sensors represent a main component in the emergent domain of Internet of Things (IoT), these algorithms are expected to perform also well in this field while adapting to contextual changes and optimizing the use of the limited resources. In this paper, we propose a new firefly-based clustering approach for IoT applications. Our approach includes a micro clustering phase during which Real-World Things (RWTs) compete and self-organize into clusters. These clusters are then polished during a macro-clustering phase where they compete to integrate small neighboring clusters. We extend our approach to allow the IoT clusters to self-adapt by hiring and/or firing RWTs depending on ongoing events and their expected impact on the network and its current deployment area. Initial simulations are showing promising results where the number of clusters tends to stabilize independently from the density of the network and the various communication ranges of RWTs.
机译:受生物启发的算法已展示出解决无线传感器网络(WSN)挑战的有效功能。由于传感器代表了物联网(IoT)新兴领域的主要组成部分,因此这些算法在适应上下文变化和优化有限资源的使用的同时,有望在该领域中表现出色。在本文中,我们为物联网应用提出了一种新的基于萤火虫的集群方法。我们的方法包括一个微观集群阶段,在这个阶段中,现实世界(RWT)竞争并自我组织为集群。然后,在宏观集群阶段对这些集群进行抛光,在竞争阶段它们会竞争以整合较小的相邻集群。我们扩展了我们的方法,通过根据正在发生的事件及其对网络及其当前部署区域的预期影响来雇用和/或触发RWT,从而使IoT集群能够自适应。初始模拟显示出令人鼓舞的结果,其中群集的数量趋于独立于网络的密度和RWT的各种通信范围而稳定。

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