基于节能聚类模型的人工蝴蝶优化簇头选择

S. Venkatasubramanian, R. Vijay, S. Hariprasath
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摘要

无线传感器网络是一项新兴的、急需发展的技术,具有广泛的应用前景,包括但不限于健康安全、环境监测等领域。由于电池容量较小,无线传感器网络的能量资源有限。为了解决节点间能量消耗不均匀的问题,需要在集群中选择一个功率较强的传感器节点来弥补较弱的节点。本文提出了异构WSN (H-WSN)的思想,为异构网络提供补充能量。一种有希望克服这一困难的方法是聚类技术,它可以优化能量消耗并延长传感器网络的使用寿命。即使现有的方法运行良好,由于在他们的研究中使用单个移动接收器,计算复杂性可能会增加。作为每个CH和sink之间通过单独一跳通信的替代方案,网络使用多移动sink (mss)。将数据收集和聚合机制(DCA)与基于CH选择的人工蝴蝶优化(ABO)相结合,实现了H-WSN中mss的高效数据传输。CH分类使用距离参数、剩余能量和常规能量作为建议的能源效率模型。NS2平台承载了H- WSN的最终产品。建议的ABO-CH-DCA方法在吞吐量、网络寿命、剩余能量、死节点和活节点等各种指标的模拟中优于基线协议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Butterfly Optimization based Cluster Head Selection with Energy Efficient Data Aggregation model for Heterogeneous WSN Environment
The WSN is a new and urgent technology with many potential uses, including but not limited to health security, environmental monitoring, etc. Due to lower battery capacity, WSN has a restricted-energy resource. In order to solve the issue of unequal energy consumption among nodes, it is necessary to choose a sensor node from a cluster with more than enough power to make up for the weaker nodes. This paper develops the idea of heterogeneous WSN (H-WSN), which provides supplementary energy to the heterogeneity network. One method that has shown promise in overcoming this difficulty is the clustering technique, which optimizes energy consumption and extends the useful life of a sensor network. Even if the existing approaches function well, the computational complexity may rise due to the usage of a single mobile sink in their studies. As an alternative to communication among each CH and sink through a separate hop, the network uses Multiple Mobile Sinks (MMSs). The combination of the data collection and aggregation mechanism (DCA) and artificial butterfly optimization (ABO) based on CH selection allows for energy-efficient data transfer using MMSs in H-WSN. The CH assortment uses the distance parameter, remaining energy, and regular energy for the suggested energy efficiency model. The NS2 platform hosts the final product of the projected H- WSN. The suggested ABO-CH-DCA approach is superior to the baseline protocols in simulations on various measures, including throughput, network lifespan, remaining energy, dead nodes, and live nodes.
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