Non-line-of-sight error mitigation for range estimation in dynamic environments

Qinghua Wang, I. Balasingham
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引用次数: 2

Abstract

Localization is an important component in many applications such as the promising Ultra-Wideband (UWB) wireless sensor network for medical treatment. For the majority of localization technologies, it is essential to measure the ranges between a target and several reference nodes before the target can be localized. Existing range estimation techniques rely on the measurements of time-of-arrival (TOA) and received-signal-strength (RSS) which suffer from environmental change. Dynamic environment such as human mobility can cause non-line-of-sight (NLOS) measurements which will significantly degrade the accuracy of range estimation. Therefore, range estimation methods are desired to be robust to NLOS measurements. In this paper, it is proposed to use hypothesis tests to identify whether there are NLOS measurements mixed in with the measurement dataset. For those NLOS corrupted measurement datasets, a new range estimation method based on a Log-normal model is found to be capable of reducing the range estimation error. Another advantage of this new range estimation method is that NLOS measurements are not required to be excluded from its analysis. However, simulation results show that the range estimation accuracy can be further improved if NLOS measurements are excluded.
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动态环境下距离估计的非视距误差缓解
定位是许多应用的重要组成部分,例如用于医疗的超宽带(UWB)无线传感器网络。对于大多数定位技术来说,在定位目标之前,必须测量目标与多个参考节点之间的距离。现有的距离估计技术依赖于对到达时间(TOA)和接收信号强度(RSS)的测量,这些测量会受到环境变化的影响。动态环境如人的移动会导致非视距(NLOS)测量,这将大大降低距离估计的准确性。因此,距离估计方法需要对NLOS测量具有鲁棒性。本文提出使用假设检验来识别是否有NLOS测量数据混入测量数据集。针对NLOS损坏的测量数据集,提出了一种新的基于对数正态模型的距离估计方法,可以减小距离估计误差。这种新的距离估计方法的另一个优点是不需要将NLOS测量排除在其分析之外。然而,仿真结果表明,如果排除NLOS测量,距离估计精度可以进一步提高。
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