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Dynamic Load Balanced Clustering using Elitism based Random Immigrant Genetic Approach for Wireless Sensor Networks

机译:使用基于精英的随机移民遗传方法的无线传感器网络动态负载均衡聚类

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Wireless Sensor Network (WSN) consists of a large number of small sensors with restricted energy. Prolonged network lifespan, scalability, node mobility and load balancing are important needs for several WSN applications. Clustering the sensor nodes is an efficient technique to reach these goals. WSN have the characteristics of topology dynamics because of factors like energy conservation and node movement that leads to Dynamic Load Balanced Clustering Problem (DLBCP). In this paper, Elitism based Random Immigrant Genetic Approach (ERIGA) is proposed to solve DLBCP which adapts to topology dynamics. ERIGA uses the dynamic Genetic Algorithm (GA) components for solving the DLBCP. The performance of load balanced clustering process is enhanced with the help of this dynamic GA. As a result, the ERIGA achieves to elect suitable cluster heads which balances the network load and increases the lifespan of the network
机译:无线传感器网络(WSN)由大量能量受限的小型传感器组成。延长网络寿命,可伸缩性,节点移动性和负载平衡是一些WSN应用程序的重要需求。对传感器节点进行聚类是实现这些目标的有效技术。由于诸如节能和节点移动之类的因素导致动态负载平衡群集问题(DLBCP),WSN具有拓扑动态特性。本文提出了一种基于精英的随机移民遗传方法(ERIGA)来解决适应拓扑动力学的DLBCP问题。 ERIGA使用动态遗传算法(GA)组件来求解DLBCP。借助此动态GA,可以提高负载平衡群集过程的性能。结果,ERIGA可以选择合适的集群头,从而平衡网络负载并延长网络寿命

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