Clustering for Energy Efficient and Redundancy Optimization in WSN using Fuzzy Logic and Genetic Methodologies a Review

Razan S. M. Saadaldeen, Abdalla A. Osman, Y. E. Ahmed
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引用次数: 5

Abstract

a wireless sensor network is a distributed sensing node to monitor physical or environmental conditions. Each node consists of sensors, wireless communication, limited processing capabilities and amount of energy reserved. The energy dissipation is an important problem to deal with, because of its effect on the network lifetime and availability. Recently, several clustering-based methods have been used for optimizing the redundancy and energy consumption. The low energy adaptive clustering hierarchy divided the wireless sensor network into a cluster with a cluster head. But its problem is on which parameter cluster heads are elected. This paper aims to provide a guideline for researchers whose aim to optimize data redundancy and energy consumption in the wireless sensor networks using clustering hierarchical depending on different parameters including distance to base station, node degree and node centrality to be used for electing the cluster head in addition to data redundancy. The electing is being achieved by using two techniques the Fuzzy Logic and genetic algorithm. The paper compared the techniques to provide a classification of the significant parameters that affects the lifetime of the network. Genetic Algorithm achieved by mixing the good solutions using a crossover and mutation operators while Fuzzy Logic using if-then rules and probability between 0 and 1.
基于模糊逻辑和遗传方法的WSN节能冗余聚类研究进展
无线传感器网络是一种分布式的感知节点,用于监测物理或环境状况。每个节点由传感器、无线通信、有限的处理能力和储备的能量组成。由于能量耗散对网络寿命和可用性的影响,它是一个需要解决的重要问题。近年来,一些基于聚类的方法被用于优化冗余和能耗。低能量自适应聚类层次将无线传感器网络划分为具有簇头的簇。但它的问题是在哪个参数上选出簇头。本文旨在为研究人员在数据冗余的基础上,根据与基站的距离、节点度和节点中心性等不同参数,利用聚类分层优化无线传感器网络中的数据冗余和能耗提供指导。采用模糊逻辑和遗传算法两种技术实现了系统的选择。本文对这些技术进行了比较,对影响网络寿命的重要参数进行了分类。遗传算法采用交叉和变异算子混合好解,模糊逻辑采用if-then规则和0 ~ 1之间的概率。
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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