基于机器学习的无线传感器网络簇头选择算法

Samkit Mody, Sulalah Mirkar, Rutwik Ghag, Priyanka Kotecha
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引用次数: 3

摘要

无线传感器网络(WSN)是一组通过无线网络连接在一起的硬件传感器。传感器被划分成集群,每个集群都有一个集群头,其工作是收集数据并将数据传输回汇聚节点(基站)。传感器节点执行数据捕获、处理和传输等活动,这些活动消耗能量。由于这些节点通常部署在人类不容易到达的区域,因此电池寿命是wsn工作的关键方面之一。选择合适的节点作为簇头可以提高网络的能量效率。本文提出了一种基于k均值的高效簇头选择算法(KE-CHSA),该算法将机器学习应用于WSN簇的形成和簇头的选择。我们提出了一个基于传感器节点数量和密度参数,每轮动态改变簇数的方程。我们的算法考虑剩余能量和与其他节点的距离,选择最适合的节点作为簇头。KE-CHSA通过提高无线传感器网络的寿命,优于传统的LEACH[21]和C-LEACH[22]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cluster Head Selection Algorithm For Wireless Sensor Networks Using Machine Learning
A Wireless Sensor Network (WSN) is a group of hardware sensors linked together over a wireless network. The sensors are segregated into clusters where every cluster has a cluster head whose job is to collect and transmit data back to the sink node (base station). A sensor node performs activities like data capturing, processing and transfer, which consumes energy. Since these nodes are usually deployed in areas not easily accessible by humans, battery life is one of the key aspects to work on in WSNs. Choosing the appropriate node as a cluster head improves the energy efficiency of the network. This paper proposes a K-Means Energy Efficient Cluster Head Selection Algorithm (KE-CHSA) for WSN where machine learning is applied to form clusters and elect cluster heads. We propose an equation which dynamically changes the number of clusters every round, based on the number of sensor nodes alive and a density parameter. Our algorithm elects the best-suited node as the cluster head considering the energy remaining and its distance from the other nodes. KE-CHSA outperforms the traditional LEACH [21] and C-LEACH [22] by improving the lifetime of WSNs.
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