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Dynamic Multidimensional Scaling Algorithm for 3-D Mobile Localization

机译:用于3-D移动定位的动态多维缩放算法

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摘要

Localization in wireless sensor networks has attracted much attention in recent years. Existing 3-D localization methods suffer from low accuracy and low stability, especially for moving target localization and tracking. The main objective of this paper is to design a novel 3-D localization algorithm for GPS-denied environments that can achieve higher stability and accuracy of mobile localization without knowledge of both measurement noise statistics and target motion information. One of the key contributions is that in the proposed method, particle swarm optimization is combined with multidimensional scaling to improve the localization accuracy. Furthermore, a polynomial data fitting method is employed for location correction, which is applied especially to moving target scenarios to enhance adaptability to different movement patterns. The proposed method is evaluated by using our 3-D ultrawideband measurement-based indoor localization test bed. The experimental results evince that the algorithm proposed can achieve better performance in terms of higher stability and higher localization accuracy by comparing with existing approaches.
机译:近年来,无线传感器网络中的本地化引起了很多关注。现有的3-D定位方法存在精度低和稳定性差的问题,特别是对于移动目标的定位和跟踪。本文的主要目的是为GPS受限的环境设计一种新颖的3-D定位算法,该算法无需了解测量噪声统计信息和目标运动信息,即可实现更高的稳定性和移动定位精度。关键贡献之一是在该方法中,粒子群优化与多维缩放相结合以提高定位精度。此外,多项式数据拟合方法用于位置校正,该方法特别应用于移动目标场景,以增强对不同运动模式的适应性。通过使用我们的基于3-D超宽带测量的室内定位测试台,对所提出的方法进行了评估。实验结果表明,与现有方法相比,本文提出的算法在更高的稳定性和更高的定位精度上可以取得更好的性能。

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