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Indoor Mobile Localization in Wireless Sensor Network under Unknown NLOS Errors

机译:NLOS错误下无线传感器网络中的室内移动定位

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摘要

Localization is one of the key techniques in wireless sensor network. One of the main problems in indoor mobile localization is non-line-of-sight (NLOS) propagation. And the NLOS effects will lead to a large localization error. So the NLOS problem is the biggest challenge for accurate mobile location estimation in WSN. In this paper, we propose a likelihood matrix correction based mixed Kalman andH-infinity filter (LC-MKHF) method. A likelihood matrix based correction method is firstly proposed to correct the LOS and NLOS measurements. This method does not need the prior information about the statistical properties of the NLOS errors. So it is independent of the physical measurement ways. And then a mixed Kalman andH-infinity filter method is proposed to improve the range measurement. Simulation results show that the LC-MKHF algorithm has higher estimate accuracy in comparison with no-filter, Kalman filter, andH-infinity filter methods. And it is robust to the NLOS errors.
机译:定位是无线传感器网络中的关键技术之一。室内移动定位中的主要问题之一是非视距(NLOS)传播。 NLOS效应将导致较大的定位误差。因此,NLOS问题是WSN中准确移动位置估计的最大挑战。在本文中,我们提出了一种基于似然矩阵校正的混合卡尔曼和H-无穷大滤波器(LC-MKHF)方法。首先提出了一种基于似然矩阵的校正方法来校正LOS和NLOS测量。此方法不需要有关NLOS错误的统计属性的先验信息。因此,它与物理测量方式无关。然后提出了一种混合的卡尔曼和H-无限滤波方法来改善测距。仿真结果表明,与无滤波器,卡尔曼滤波器和H-无穷大滤波器方法相比,LC-MKHF算法具有更高的估计精度。而且它对NLOS错误具有鲁棒性。

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