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Localization Based on MAP and PSO for Drifting-Restricted Underwater Acoustic Sensor Networks

机译:基于MAP和PSO的漂移受限水下声传感器网络定位

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摘要

Localization is a critical issue for Underwater Acoustic Sensor Networks (UASNs). Existing localization algorithms mainly focus on localizing unknown nodes (location-unaware) by measuring their distances to beacon nodes (location-aware), whereas ignoring additional challenges posed by harsh underwater environments. Especially, underwater nodes move constantly with ocean currents and measurement noises vary with distances. In this paper, we consider a special drifting-restricted UASN and propose a novel beacon-free algorithm, called MAP-PSO. It consists of two steps: MAP estimation and PSO localization. In MAP estimation, we analyze nodes’ mobility patterns, which provide the priori knowledge for localization, and characterize distance measurements under the assumption of additive and multiplicative noises, which serve as the likelihood information for localization. Then the priori and likelihood information are fused to derive the localization objective function. In PSO localization, a swarm of particles are used to search the best location solution from local and global views simultaneously. Moreover, we eliminate the localization ambiguity using a novel reference selection mechanism and improve the convergence speed using a bound constraint mechanism. In the simulations, we evaluate the performance of the proposed algorithm under different settings and determine the optimal values for tunable parameters. The results show that our algorithm outperforms the benchmark method with high localization accuracy and low energy consumption.
机译:本地化是水下声传感器网络(UASN)的关键问题。现有的定位算法主要集中在通过测量未知节点到信标节点的距离(位置感知)来定位未知节点(位置未知),而忽略了恶劣的水下环境带来的其他挑战。特别是,水下节点随着洋流而不断移动,并且测量噪声随距离而变化。在本文中,我们考虑了一种特殊的漂移受限UASN,并提出了一种新颖的无信标算法,称为MAP-PSO。它包括两个步骤:MAP估计和PSO定位。在MAP估计中,我们分析节点的移动性模式,这些模式可提供定位的先验知识,并在假设加性和乘性噪声(作为定位的可能性信息)的情况下表征距离测量。然后将先验信息和似然信息融合,以得出定位目标函数。在PSO本地化中,大量粒子用于同时从局部和全局视图中搜索最佳位置解决方案。此外,我们使用新颖的参考选择机制消除了定位的歧义,并使用绑定约束机制提高了收敛速度。在仿真中,我们评估了在不同设置下所提出算法的性能,并确定了可调参数的最佳值。结果表明,该算法具有较高的定位精度和较低的能耗,优于标准方法。

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