Metaheuristic Multi-Hop Clustering Optimization for Energy-Efficient Wireless Sensor Network

Vincent Chung, N. Tuah, Kit Guan Lim, M. K. Tan, I. Saad, K. Teo
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引用次数: 2

Abstract

Energy-efficient optimization algorithm in wireless sensor network (WSN) is often based on solely cluster routing or multi-hop routing. The cluster optimization algorithm will form a cluster network by dividing the sensor nodes into few clusters where each cluster has a cluster head (CH) for data collection. On the other hand, multi-hop optimization algorithm will form a multi-hop network by transmitting data to base station (BS) through data multi-hopping between sensor nodes. However, cluster optimization algorithm suffers from the overburdens of CH nodes, while multi-hop optimization algorithm suffers from the overburdens of nodes which are near to the BS. Therefore, Genetic Algorithm-Cuckoo Search (GACS) is proposed and developed based on the multi-hop clustering model in this paper. GACS optimizes both intra-cluster and inter-cluster communications to enhance energy efficiency in WSN, extending the network lifetime. Based on the performance evaluation, GACS outperforms both Genetic Algorithm (GA)-based cluster optimization algorithm and Cuckoo Search (CS)-based multi-hop optimization algorithm.
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节能无线传感器网络的元启发式多跳聚类优化
无线传感器网络中的节能优化算法通常基于单簇路由或多跳路由。聚类优化算法将传感器节点分成几个簇,每个簇有一个簇头(CH)来收集数据,从而形成一个聚类网络。另一方面,多跳优化算法将通过传感器节点之间的数据多跳向基站(BS)传输数据,形成多跳网络。但聚类优化算法存在CH节点的过载问题,而多跳优化算法存在靠近BS节点的过载问题。为此,本文提出并发展了基于多跳聚类模型的遗传算法-布谷鸟搜索(GACS)。GACS优化了集群内和集群间的通信,提高了WSN的能源效率,延长了网络寿命。基于性能评价,GACS优于基于遗传算法(GA)的聚类优化算法和基于布谷鸟搜索(CS)的多跳优化算法。
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