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首页> 外文期刊>Vehicular Technology, IEEE Transactions on >Adaptive Range-Based Nonlinear Filters for Wireless Indoor Positioning System Using Dynamic Gaussian Model
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Adaptive Range-Based Nonlinear Filters for Wireless Indoor Positioning System Using Dynamic Gaussian Model

机译:基于动态高斯模型的无线室内定位系统基于范围的自适应非线性滤波器

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摘要

It is hard to obtain a general error model for the range-based wireless indoor positioning system due to the complicated hybrid line-of-sighton-line-of-sight (LOS/NLOS) environment. The performance of the conventional Gaussian-based nonlinear filters is degraded in the indoor scenario. In this paper, we employ a dynamic Gaussian model (DGM) to describe the indoor ranging error. A general Gaussian approximated model is constructed first to fit the potential distribution. The instantaneous LOS or NLOS error at a typical time is considered as the drift from this general distribution dynamically. The relationship between the instantaneous error of the DGM and the estimation accuracy of nonlinear filters is analyzed. Based on our analysis, we propose a measurement adaptation method to further reduce the error according to the DGM. Then, the nonlinear filters based on the Gaussian model, which are simple and accurate, can be applied. A biased extended Kalman filter (EKF) and an adaptive Gaussian particle filter (PF) integrated with the measurement adaptation method are designed. The real indoor experiment demonstrates that the estimation accuracy of our algorithms is greatly improved without imposing complexity and that our algorithms are suitable for the dynamic indoor environment.
机译:由于复杂的视线/非视线(LOS / NLOS)环境,很难为基于距离的无线室内定位系统获得通用的误差模型。在室内场景中,传统的基于高斯的非线性滤波器的性能会下降。在本文中,我们采用动态高斯模型(DGM)来描述室内测距误差。首先构造一个通用的高斯近似模型以拟合势分布。典型时间的瞬时LOS或NLOS误差被视为动态偏离此一般分布。分析了DGM的瞬时误差与非线性滤波器估计精度之间的关系。根据我们的分析,我们提出了一种根据DGM进一步减小误差的测量自适应方法。然后,可以应用基于高斯模型的非线性滤波器,其简单而准确。设计了与测量自适应方法集成的偏置扩展卡尔曼滤波器(EKF)和自适应高斯粒子滤波器(PF)。真实的室内实验表明,在不增加复杂性的情况下,我们的算法的估计精度得到了极大的提高,并且我们的算法适用于动态的室内环境。

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