基于AI技术的异构环境下基于区域聚类的负载均衡

K. Singh, A. K. Daniel
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引用次数: 4

摘要

无线传感器网络(WSNs)包含大量能量有限的传感器节点。数据的感知和传输涉及到大量的能源消耗。因此,聚类被认为是有效利用能量的有效途径之一。异构环境包含不同类型的传感器节点,在感知、计算、通信和功率方面。本文提出的基于区域的聚类负载均衡方法,利用倒二叉树的概念将超级节点的区域划分为级别,将级别划分为簇,利用模糊逻辑技术优化簇头的选择,从而实现超级节点区域的负载均衡。采用基于不等区域的聚类方法,在不同区域部署不同类型的传感器节点,有效利用覆盖面积。混合路由用于向基站(BS)传输数据。该协议优化了CH的选择数量,平衡了CH的负载,有效地利用了能量,提高了网络的生存期。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Load Balancing in Region Based Clustering for Heterogeneous Environment in WSNs Using AI Techniques
Wireless Sensor Networks (WSNs) contains a large number of sensor nodes with restricted energy. The sensing and transmitting of data involves a huge amount of energy consumption. Therefore, Clustering is considered as one of the powerful approaches for efficient utilization of energy. The heterogeneous environment contains different types of sensor nodes in term of sensing, computation, communication and power. The proposed Load Balancing in Region Based Clustering approach is used to balance the load of super nodes regions by dividing the region of super nodes into levels and levels into clusters using inverted binary tree concept to optimize Cluster Head (CH) selection using Fuzzy Logic Techniques. The Unequal Region Based clustering approach is used to deploy different types of sensor nodes in different region to provide efficient utilization of coverage area. Hybrid routing is used for transmitting data to Base Station (BS). The protocol optimizes the number of CH selection and balance the load of CH. The lifetime of the network is improved by efficient utilization of energy.
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