Study of Clustering Technique Algorithms in IoT Networks

Ahmed Soliman Soliman Deabes, Michael Mikheal, Esraa Ibraheem Eid, Hala Mohamed
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Abstract

: The Internet of Things (IoT) refers to a network of interconnected devices that operate on the internet facilitating seamless and efficient data exchange to improve human life. Energy consumption in the IoT network nodes is a major challenge. To overcome this challenge, clustering became a powerful data gathering in IoT applications that saves energy by organizing IoT nodes into clusters. The Cluster Head (CH) oversees all Cluster Member (CM) nodes in each group allowing for the creation of both intra-cluster and inter-cluster connections. There are many algorithms to improve the lifespan of the network, increase the number of active nodes, and extend the remaining energy time in IoT. These algorithms employ techniques such as clustering and optimization to enhance both the energy efficiency and overall performance of the network. In this paper, Low Energy Adaptive Clustering Hierarchy (LEACH), Genetic Algorithm (GA), Artificial Fish Swarm Algorithm (AFSA), Energy-Efficient Routing using Reinforcement Learning (EER-RL), and Modified Low Energy Adaptive Clustering Hierarchy (MODLEACH) algorithms will be studied and MATLAB code will be implemented, tested, and the results will be validated.
物联网网络中的聚类技术算法研究
:物联网(IoT)是指在互联网上运行的互联设备网络,可促进无缝、高效的数据交换,从而改善人类生活。物联网网络节点的能耗是一大挑战。为了克服这一挑战,集群成为物联网应用中一种强大的数据收集方式,它通过将物联网节点组织成群来节约能源。簇首(CH)负责监督每个簇中的所有簇成员(CM)节点,从而建立簇内和簇间的连接。在物联网中,有许多算法可以提高网络寿命、增加活跃节点数量和延长剩余能量时间。这些算法采用聚类和优化等技术来提高网络的能效和整体性能。本文将研究低能耗自适应聚类分层(LEACH)、遗传算法(GA)、人工鱼群算法(AFSA)、使用强化学习的高能效路由(EER-RL)和修正的低能耗自适应聚类分层(MODLEACH)算法,并将实施、测试和验证 MATLAB 代码。
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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