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Position and Velocity Tracking in Mobile Networks Using Particle and Kalman Filtering With Comparison

机译:使用粒子和卡尔曼滤波的移动网络中位置和速度跟踪与比较

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摘要

This paper presents several methods based on signal strength and wave scattering models for tracking a user. The received-signal level method is first used in combination with maximum likelihood (ML) estimation and triangulation to obtain an estimate of the location of the mobile. Due to nonline-of-sight conditions and multipath propagation environments, this estimate lacks acceptable accuracy for demanding services, as the numerical results reveal. The 3-D wave scattering multipath channel model of Aulin is employed, together with the recursive nonlinear Bayesian estimation algorithms to obtain improved location estimates with high accuracy. Several Bayesian estimation algorithms are considered, such as the extended Kalman filter (EKF), the particle filter (PF), and the unscented PF (UPF). These algorithms cope with nonlinearities in order to estimate mobile location and velocity. Since the EKF is very sensitive to the initial state, we propose the use of the ML estimate as the initial state of the EKF. In contrast to the EKF tracking approach, the PF and UPF approaches do not rely on linearized motion models, measurement relations, and Gaussian assumptions. Numerical results are presented to evaluate the performance of the proposed algorithms when the measurement data do not correspond to the ones generated by the model. This shows the robustness of the algorithm based on modeling inaccuracies.
机译:本文提出了几种基于信号强度和波散射模型的跟踪用户的方法。首先将接收信号级方法与最大似然(ML)估计和三角测量结合使用,以获得移动台位置的估计。由于非视距条件和多径传播环境,数值结果表明,该估计值对于要求苛刻的服务缺乏可接受的准确性。使用Aulin的3-D波散射多径通道模型,结合递归非线性贝叶斯估计算法,以高精度获得改进的位置估计。考虑了几种贝叶斯估计算法,例如扩展卡尔曼滤波器(EKF),粒子滤波器(PF)和无味PF(UPF)。这些算法可以应对非线性,以便估计移动位置和速度。由于EKF对初始状态非常敏感,因此我们建议将ML估计值用作EKF的初始状态。与EKF跟踪方法相比,PF和UPF方法不依赖于线性运动模型,测量关系和高斯假设。当测量数据与模型生成的数据不对应时,将给出数值结果以评估所提出算法的性能。这显示了基于建模误差的算法的鲁棒性。

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