A Biologically Inspired Low Energy Clustering Method for Large Scale Wireless Sensor Networks

Yi Lu, Jie Zhou, Mengying Xu
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引用次数: 2

Abstract

Recently, the low energy clustering problem has been studied by numerous researchers and engineers. Such a problem is important in improving low energy consumption. In this paper, we propose an improved chaotic parallel monkey algorithm (ICPMA), a randomized swarm optimization algorithm for low energy clustering in large scale wireless sensor network, motivated by chaotic theory and parallel theory. We first establish a mathematical model for the low energy clustering problem. Based on the monkey algorithm, the new optimization method has many advantages due to blend both the chaotic theory as well as parallel theory. Simulations are conducted to compare and evaluate the energy efficiency of ICPMA with shuffled frog leaping algorithm (SFLA), artificial fish swarm algorithm (AFSA) as well as particle swarm optimization (PSO). In our experiments, we obtain that the novel ICPMA approach, when implemented into LSWSNs, is able to offer better performance and an improving energy efficiency compared to SFLA, AFSA and PSO approach.
基于生物启发的大规模无线传感器网络低能量聚类方法
近年来,低能聚类问题得到了众多研究者和工程师的研究。这一问题对提高低能耗具有重要意义。本文提出了一种改进的混沌并行猴子算法(ICPMA),这是一种基于混沌理论和并行理论的大规模无线传感器网络低能聚类的随机群优化算法。首先建立了低能聚类问题的数学模型。该优化方法基于猴子算法,融合了混沌理论和并行理论,具有许多优点。通过仿真比较和评价了ICPMA与洗牌蛙跳算法(SFLA)、人工鱼群算法(AFSA)和粒子群算法(PSO)的能量效率。在我们的实验中,我们得到了新的ICPMA方法,当实施到lswsn时,与SFLA, AFSA和PSO方法相比,能够提供更好的性能和提高的能源效率。
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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