Energy Efficiency in Wireless Sensor Networks using Advanced LEACH Protocol

Saravana G, Jegadeeswari J S, Naveenkumar V, PushpaValli M
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Abstract

The wireless sensor network is the best research subject matter with huge applications in various domains. By and large, a wireless sensor network involves hundreds to thousands of sensor nodes, which transmit and communicate with each other by the utilization of radio transmissions or signals. A portion of the difficulties that exist in the sketch of wireless sensor networks are confined computation power, storage capacity, battery, and transmission transfer speed or bandwidth. To determine these issues, clustering and routing algorithm have been introduced. Clustering and routing processes are viewed as an optimization issue in wireless sensor networks which can be settled by the utilization of swarm intelligence-based approaches. This article presents an original multitude of insight-based grouping and multihop routing protocol for wireless sensor report giving a new swarm optimization technique applied for picking the cluster heads and organizing the cluster capably. Then, at that point, the grey wolf optimization algorithm-based routing process takes place to choose the ideal ways in the network. The introduced better particle swarm optimization-grey wolf optimization approach consolidates the advantages of both the clustering and routing processes which prompts the greatest energy efficiency and network lifetime. The proposed model is reproduced under a broad arrangement of experiments, and the outcomes are approved under a few measures. The acquired trial result exhibited the predominant qualities of the improved particle swarm optimization–grey wolf optimization method under all the test cases. It enhances LEACH protocols in terms of energy efficiency, network Lifetime, and throughput. Maintaining the Energy Efficiency of a wireless sensor network has been a great concern nowadays. The main aim is to overcome the drawback of Improvement of the energy efficiency of a wireless sensor network. It may be improved with the performance of an optimization algorithm using swarm Intelligence. The novelty of the project is Network lifetime and Energy Consumption. The future of this project is to share the complete information which is present in the cluster head without any interruption
采用先进LEACH协议的无线传感器网络的能源效率
无线传感器网络是目前最好的研究课题,在各个领域有着广泛的应用。总的来说,无线传感器网络包含数百到数千个传感器节点,它们通过无线电传输或信号相互传输和通信。无线传感器网络草图中存在的部分困难是有限的计算能力、存储容量、电池和传输传输速度或带宽。为了解决这些问题,引入了聚类和路由算法。聚类和路由过程被视为无线传感器网络中的优化问题,可以利用基于群体智能的方法来解决。本文提出了一种新颖的基于洞察力的无线传感器分组和多跳路由协议,给出了一种新的集群优化技术,用于选择簇头和组织簇的能力。然后,在这个点上,进行基于灰狼优化算法的路由过程,在网络中选择理想的路径。引入的粒子群优化-灰狼优化方法综合了聚类算法和路由算法的优点,使网络具有最大的能量效率和网络寿命。所提出的模型是在广泛的实验安排下再现的,结果在一些措施下得到了批准。所获得的试验结果在所有测试用例中都表现出改进的粒子群优化-灰狼优化方法的优势。它在能源效率、网络生命周期和吞吐量方面增强了LEACH协议。保持无线传感器网络的能量效率一直是人们关注的问题。主要目的是克服无线传感器网络能量效率提高的缺点。这可以通过使用群体智能的优化算法的性能来改进。该项目的新颖之处在于网络寿命和能耗。这个项目的未来是在没有任何中断的情况下共享集群头中存在的完整信息
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