首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >A hybrid particle swarm optimization with a variable neighborhood search for the localization enhancement in wireless sensor networks
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A hybrid particle swarm optimization with a variable neighborhood search for the localization enhancement in wireless sensor networks

机译:一种混合粒子群优化,具有可变邻域搜索无线传感器网络中的本地化增强

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摘要

Localization accuracy and development costs are key and substantial issues considered when operating and managing a wireless sensor network (WSN). This study presents a modern and high-efficiency algorithm based on a new optimization technique for localization processes in an outdoor environment. The new optimization technique combines particle swarm optimization (PSO) with variable neighborhood search (VNS) and is called hybrid particle swarm optimization with variable neighborhood search (HPSOVNS). The objective function, which utilized by HPSOVNS for optimization, is the last mean squared range error of all neighboring anchor nodes. The interior distances between WSN nodes are calculated using a received signal strength indicator (RSSI) function. HPSOVNS is a hybrid optimization technique showing elevated performance in finding the best solution that rapidly affirms the minimization of an objective function without being stuck in local optima. The proposed algorithm can increase localization accuracy because it combines the positive features and effective capabilities of PSO and VNS with RSSI. Simulation results show that HPSOVNS performs better than other algorithms based on basic PSO and even state-of-the-art localization algorithms, such as GEPM, NLLE, and RSSI-LSSVR. The performance of HPSOVNS is demonstrated in several evaluation metrics, such as localization accuracy, localization rate, and localization time.
机译:本地化准确性和开发成本是在操作和管理无线传感器网络(WSN)时考虑的关键和实质性问题。本研究介绍了一种现代和高效算法,基于新的户外环境中的本地化过程的新优化技术。新的优化技术将粒子群优化(PSO)与可变邻域搜索(VNS)组合,并称为变量邻域搜索(HPSOVN)的混合粒子群优化。 HPSOVNS用于优化的目标函数是所有相邻锚点节点的最后平均平方误差。使用接收的信号强度指示符(RSSI)功能计算WSN节点之间的内部距离。 HPSOVNS是一种混合优化技术,显示了在不陷入本地最佳优值的情况下快速肯定的最佳解决方案,在不粘在本地最佳最佳状态下迅速肯定的最佳解决方案,升高了性能。所提出的算法可以提高本地化精度,因为它将PSO和VNS与RSSI的正面特征和有效功能相结合。仿真结果表明,HPSOVNS比基于基本PSO的其他算法更好,甚至是最先进的本地化算法,例如GEPM,NLLE和RSSI-LSSVR。 HPSOVNS的性能在几个评估度量中展示,例如定位准确性,定位率和定位时间。

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