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首页> 外文期刊>Artificial Intelligence Review: An International Science and Engineering Journal >Improved artificial bee colony metaheuristic for energy-efficient clustering in wireless sensor networks
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Improved artificial bee colony metaheuristic for energy-efficient clustering in wireless sensor networks

机译:改进的无线传感器网络中节能聚类的人工蜂殖民地殖民地

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Energy-efficient clustering is a well known NP-hard optimization problem for complex and dynamic Wireless sensor networks (WSNs) environment. Swarm intelligence (SI) based metaheuristic like Ant colony optimization, Particle swarm optimization and more recently Artificial bee colony (ABC) has shown desirable properties of being adaptive to solve optimization problem of energy efficient clustering in WSNs. ABC arose much interest over other population-based metaheuristics for solving optimization problems in WSNs due to ease of implementation however, its search equation contributes to its insufficiency due to poor exploitation phase and storage of certain control parameters. Thus, we propose an improved Artificial bee colony (iABC) metaheuristic with an improved search equation to enhance its exploitation capabilities and in order to increase the global convergence of the proposed metaheuristic, an improved population sampling technique is introduced through Student's-t distribution, which require only one control parameter to compute and store, hence increase efficiency of proposed metaheuristic. The proposed metaheuristic maintain a good balance between exploration and exploitation search abilities with least memory requirements, moreover the use of first of its kind compact Student's-t distribution, make it suitable for limited hardware requirements of WSNs. Further, an energy efficient bee clustering protocol based on iABC metaheuristic is introduced, which inherit the capabilities of the proposed metaheuristic to obtain optimal cluster heads and improve energy efficiency in WSNs. Simulation results show that the proposed clustering protocol outperforms other well known SI based protocols on the basis of packet delivery, throughput, energy consumption and extend network lifetime.
机译:节能聚类是复杂和动态无线传感器网络(WSNS)环境的知名NP-Hard优化问题。基于蚁群优化的基于蚁群智能(SI)的蚁群综合性,粒子群优化和最近人为蜜蜂殖民地(ABC)表明了适应WSN中节能聚类优化问题的理想性质。由于易于实施,ABC对其他基于人群的成分训练提供了很多基于人群的遗传学,在WSNS中解决了优化问题,但由于缺乏剥削阶段和某些控制参数的存储,其搜索方程有助于其因其不足。因此,我们提出了一种改进的人造群菌落(IABC)成交学,改进的搜索方程来增强其利用能力,并通过学生-T分布引入改善的人口采样技术,提高了拟议的成群制的全球融合,只需要一个控制参数来计算和存储,因此提高了所提出的成群质训练效率。拟议的成群质主义在勘探和开发搜索能力之间保持良好的平衡,并且使用首先使用的紧凑型学生-T分布,使其适用于WSN的有限硬件要求。此外,介绍了基于IABC成群质培养学的节能BEE聚类协议,其继承了所提出的成式训练的能力,以获得最佳簇头,提高WSN中的能效。仿真结果表明,所提出的聚类协议基于分组传送,吞吐量,能耗和扩展网络寿命来优于其他众所周知的SI基于SI的协议。

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