基于遗传算法的无线传感器网络聚类技术研究

A. Sharaf, Shameem Ansar A, Manu J. Pillai
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引用次数: 3

摘要

无线传感器网络由小型传感设备(也称为节点)组成,这些设备能够感知环境和物理参数(如温度、湿度等),并将信息发送到称为sink或基站的中心节点。由于传感器的能量有限,因此最小化能量损耗和延长网络寿命是无线传感器网络面临的关键挑战。在无线传感器网络中,为了减少中间节点的数据聚合所消耗的能量,采用了基于集群的路由方案。各种传统的和元启发式的聚类方法已经实现。但是找到最优的聚类和路由路径是一个np困难问题。遗传算法等元启发式算法可用于大规模无线传感器网络中寻找最优的聚类和路由方案。本文对无线传感器网络中基于遗传算法的聚类技术及其目标、特点等进行了详细的研究。分析了构建适应度函数所使用的不同参数。
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Genetic Algorithm Based Clustering Techniques in Wireless Sensor Networks: A Comprehensive Study
Wireless sensor network consist of small sensing devices also known as nodes capable of sensing environmental and physical parameters like temperature, humidity etc. and send the information to a central node known as sink or base station. Since the sensors are limited in energy, minimizing the energy dissipation and increasing the network lifetime is the key challenge faced by wireless sensor networks. In WSN, cluster based routing schemes are used for reducing energy consumption by data aggregation at intermediate nodes. Various traditional and meta-heuristic approaches for clustering are already implemented. But finding an optimal clustering and routing path is an NP-hard problem. Meta-heuristic algorithms such as genetic algorithm can be used in large scale wireless sensor networks to find the optimal clustering and routing scheme. In this paper a detailed study of state-of-the art genetic algorithm based clustering techniques in wireless sensor networks with their objective, characteristics etc. are presented. Different parameters used for the construction of the fitness function are also analyzed.
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