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Hybrid Swarm Intelligence Energy Efficient Clustered Routing Algorithm for Wireless Sensor Networks

机译:无线传感器网络的混合群智能节能集群路由算法

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摘要

Currently, wireless sensor networks (WSNs) are used in many applications, namely, environment monitoring, disaster management, industrial automation, and medical electronics. Sensor nodes carry many limitations like low battery life, small memory space, and limited computing capability. To create a wireless sensor network more energy efficient, swarm intelligence technique has been applied to resolve many optimization issues in WSNs. In many existing clustering techniques an artificial bee colony (ABC) algorithm is utilized to collect information from the field periodically. Nevertheless, in the event based applications, an ant colony optimization (ACO) is a good solution to enhance the network lifespan. In this paper, we combine both algorithms (i.e., ABC and ACO) and propose a new hybrid ABCACO algorithm to solve a Nondeterministic Polynomial (NP) hard and finite problem of WSNs. ABCACO algorithm is divided into three main parts: (i) selection of optimal number of subregions and further subregion parts, (ii) cluster head selection using ABC algorithm, and (iii) efficient data transmission using ACO algorithm. We use a hierarchical clustering technique for data transmission; the data is transmitted from member nodes to the subcluster heads and then from subcluster heads to the elected cluster heads based on some threshold value. Cluster heads use an ACO algorithm to discover the best route for data transmission to the base station (BS). The proposed approach is very useful in designing the framework for forest fire detection and monitoring. The simulation results show that the ABCACO algorithm enhances the stability period by 60% and also improves the goodput by 31% against LEACH and WSNCABC, respectively.
机译:当前,无线传感器网络(WSN)被用于许多应用,即环境监视,灾难管理,工业自动化和医疗电子。传感器节点具有许多局限性,例如电池寿命短,存储空间小和计算能力有限。为了创建更节能的无线传感器网络,已经应用了群体智能技术来解决WSN中的许多优化问题。在许多现有的聚类技术中,人工蜂群(ABC)算法用于定期从野外收集信息。但是,在基于事件的应用程序中,蚁群优化(ACO)是提高网络寿命的良好解决方案。在本文中,我们结合了两种算法(即ABC和ACO),并提出了一种新的混合ABCACO算法来解决WSN的非确定性多项式(NP)硬性和有限性问题。 ABCACO算法分为三个主要部分:(i)选择最佳子区域数和其他子区域部分,(ii)使用ABC算法选择簇头,以及(iii)使用ACO算法进行有效的数据传输。我们使用分层聚类技术进行数据传输。数据从成员节点传输到子群集头,然后基于某个阈值从子群集头传输到选定的群集头。簇头使用ACO算法来发现最佳的路由,以将数据传输到基站(BS)。所提出的方法在设计森林火灾探测和监测框架时非常有用。仿真结果表明,针对LEACH和WSNCABC,ABCACO算法分别将稳定期延长了60%,并将吞吐量提高了31%。

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