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Improved metaheuristic based energy-efficient clustering protocol for wireless sensor networks

机译:改进的基于元启发式的无线传感器网络节能协议

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摘要

Energy-efficient clustering protocols are much sought specially for low-power, multi-functional Wireless Sensor Networks (WSNs). With the application of Computational Intelligence (CI) based approaches, various metaheuristics have been developed for energy-efficient clustering in WSNs. Artificial Bee Colony (ABC) is one such metaheuristic which arose much interest over other population-based metaheuristics for solving optimization problems in WSNs due to its ease of implementation and adaptive nature. However, its solution search equation, which is poor at exploitation process, contributes to its insufficiency. Thus, we present an improved Artificial Bee Colony (iABC) metaheuristic with an improved solution search equation to improve its exploitation capabilities. Additionally, in order to increase the global convergence of the proposed metaheuristic, an improved population sampling technique is introduced through Student's-t distribution. The proposed metaheuristic maintains 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 makes it suitable for limited hardware requirements of WSNs. Further, an energy efficient clustering protocol BeeCluster based on iABC metaheuristic is introduced, which inherits the capabilities of the proposed metaheuristic to obtain optimal cluster heads (CHs) and improves energy-efficiency in WSNs. Simulation results show that the proposed clustering protocol outperforms other well known protocols on the basis of packet delivery, throughput, energy consumption, network lifetime and latency as performance metric.
机译:对于低功耗,多功能无线传感器网络(WSN),特别需要高效节能的群集协议。随着基于计算智能(CI)的方法的应用,已开发出各种元启发式方法用于WSN中的节能集群。人工蜂群(ABC)是这样的一种元启发式方法,由于其易于实施和适应性强,引起了其他针对解决WSN优化问题的基于人口的元启发式方法的极大兴趣。但是,它的解搜索方程式在开发过程中很差,这导致了它的不足。因此,我们提出了一种改进的人工蜂群(iABC)元启发式方法和改进的解决方案搜索方程,以提高其开发能力。另外,为了增加所提出的元启发式算法的全局收敛性,通过Student-t分布引入了一种改进的人口抽样技术。所提出的元启发式方法在具有最少内存需求的探索和开发搜索能力之间保持了良好的平衡,此外,使用首个紧凑型Student-t分布使其适合于WSN的有限硬件需求。此外,引入了基于iABC元启发式算法的高效节能集群协议BeeCluster,该协议继承了所提出的元启发式算法的功能,以获得最佳的簇头(CH),并提高了无线传感器网络的能量效率。仿真结果表明,基于分组传递,吞吐量,能耗,网络寿命和等待时间等性能指标,所提出的集群协议优于其他协议。

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