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首页> 外文期刊>International Journal of Computer Networks & Communications >Enhanced Particle Swarm Optimization for Effective Relay Nodes Deployment in Wireless Sensor Networks
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Enhanced Particle Swarm Optimization for Effective Relay Nodes Deployment in Wireless Sensor Networks

机译:增强的粒子群优化无线传感器网络中有效继电器节点部署

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摘要

One of the critical design problems in Wireless Sensor Networks (WSNs) is the Relay Node Placement (RNP) problem. Inefficient deployment of RNs would have adverse effects on the overall performance and energy efficiency of WSNs. The RNP problem is a typical example of an NP-hard optimization problem which can be addressed using metaheuristics with multi-objective formulation. In this paper, we aimed to provide an efficient optimization approach considering the unconstrained deployment of energy-harvesting RNs into a pre-established stationary WSN. The optimization was carried out for three different objectives: energy consumption, network coverage, and deployment cost. This was approached using a novel optimization approach based on the integration of the Particle Swarm Optimization (PSO) algorithm and a greedy technique. In the optimization process, the greedy algorithm is an essential component to provide effective guidance during PSO convergence. It supports the PSO algorithm with the required information to efficiently alleviate the complexity of the PSO search space and locate RNs in the spots of critical significance. The evaluation of the proposed greedy-based PSO algorithm was carried out with different WSN scenarios of varying complexity levels. A comparison was established with two PSO variants: the classical PSO and a PSO hybridized with the pattern search optimizer. The experimental results demonstrated the significance of the greedy algorithm in enhancing the optimization process for all the considered PSO variants. The results also showed how the solution quality and time efficiency were considerably improved by the proposed optimization approach. Such improvements were achieved using a simple integration technique without adding to the complexity of the system and introducing additional optimization stages. This was more evident in the RNP scenarios of considerably large search spaces, even with highly complex and challenging setups.
机译:无线传感器网络(WSNS)中的关键设计问题之一是中继节点放置(RNP)问题。 RNS的低效部署将对WSN的整体性能和能源效率产生不利影响。 RNP问题是NP-HARD优化问题的典型示例,可以使用具有多目标配方的陨素测验来解决。在本文中,我们旨在提供一种有效的优化方法,将无法定义的能量收集RNS的未被定义部署到预先建立的固定WSN。为三种不同的目标进行了优化:能源消耗,网络覆盖和部署成本。基于粒子群优化(PSO)算法的集成和贪婪技术,使用新颖的优化方法来实现这一点。在优化过程中,贪婪算法是在PSO收敛过程中提供有效指导的基本组件。它支持PSO算法,具有所需信息,以有效地减轻PSO搜索空间的复杂性,并在批判意义的斑点中定位RN。基于贪婪的PSO算法的评估是用不同的复杂度水平的不同WSN场景进行。使用两个PSO变体建立了比较:经典PSO和与模式搜索优化器杂交的PSO。实验结果表明了贪婪算法在增强所有考虑的PSO变体的优化过程方面的意义。结果还通过所提出的优化方法显示如何提高解决方案质量和时间效率。使用简单的集成技术实现了这种改进,而不会增加系统的复杂性并引入额外的优化阶段。即使具有高度复杂和具有挑战性的设置,在大型搜索空间的RNP方案中也更加明显。

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