PSO Based Clustering Approach for Mobile Wireless Sensor Network

G. Kadiravan, P. Sujatha
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引用次数: 1

Abstract

In several domains like disaster hit areas, agriculture, military, health care, defense, etc., Mobile Wireless Sensor Networks (MWSNs) have been employed. When the sensor nodes are resource limited, the main attribute which act as a key role in modeling MWSNs protocol are its computational feasibility and energy efficiency. The Sensor nodes distance variation from inter node distances and base station (BS) initially leads to unequivalent energy utilization between the sensor nodes. The utilization of energy differs with period and cause system performance deprivation. LEACH is the primarily clustered depended routing protocol that gives fine solutions, endures from the disadvantages in order to the cluster head (CH) selection that are randomized. With the conventional clustering algorithm, considering severe energy rebalancing, a Particle Swarm Optimization (PSO) based clustering method that examines the fitness function through assuming the two main attributes (distance and energy) is projected in this paper. PSO is a search depended method which is probabilistic method depends on the natural selection principle and evolution. Experimental outcomes verifies that the projected protocol performs well when compared LEACH protocol with better network lifetime.
基于粒子群算法的移动无线传感器网络聚类方法
在灾区、农业、军事、医疗、国防等多个领域,移动无线传感器网络(MWSNs)已经得到应用。当传感器节点资源有限时,其计算可行性和能量效率是mwsn协议建模的关键属性。传感器节点间距离和基站(BS)之间的距离变化最初导致传感器节点之间的能量利用不相等。能量利用随周期的变化而变化,导致系统性能下降。LEACH是主要的依赖于集群的路由协议,它提供了很好的解决方案,克服了随机选择簇头(CH)的缺点。在传统聚类算法的基础上,考虑到严重的能量再平衡,提出了一种基于粒子群优化(PSO)的聚类方法,该方法通过假设两个主要属性(距离和能量)来检验适应度函数。粒子群算法是一种依赖于搜索的方法,是一种依赖于自然选择原理和进化的概率方法。实验结果表明,与LEACH协议相比,该协议具有较好的网络生存期。
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