Neural based Energy-Efficient Stable Clustering for Multilevel Heterogeneous WSNs

Akshay Verma, Rajkrishna Mondal, Prateek Gupta, Arvind Kumar
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引用次数: 2

Abstract

This paper presents a Neural based Energy-Efficient Stable Clustering (NESC) for Multilevel Heterogeneous wireless sensor networks (MHWSNs). In NESC protocol, the sensor nodes are selected as cluster heads (CHs) by employing the multi-layer back propagation model of neural network. The training of neurons is done on the basis of normalized energy and distance factors which helps in the selection of proper CHs which increases the network lifetime, throughput and reliability. Simulation results justified that NESC protocol achieves better network performance in terms of network lifetime, energy consumption, and throughput than existing routing protocols (i.e., LEACH, SEP, DEEC, and EDCS) for MHWSNs.
基于神经网络的多级异构wsn节能稳定聚类
提出了一种基于神经网络的多级异构无线传感器网络节能稳定聚类算法。在NESC协议中,利用神经网络的多层反向传播模型选择传感器节点作为簇头。神经元的训练是在归一化能量和距离因子的基础上进行的,这有助于选择合适的CHs,从而提高网络的生存期、吞吐量和可靠性。仿真结果表明,NESC协议在网络寿命、能耗和吞吐量方面都优于现有的MHWSNs路由协议(LEACH、SEP、DEEC和EDCS)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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