Switched model sets-based estimators for mobile localization in rough NLOS conditions

Tan-Jan Ho
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引用次数: 1

Abstract

In this paper, we first present a novel switched model sets-based interacting multiple-model (SMS-IMM) algorithm for urban mobile location estimation. Two state-space model sets are considered. The model set 1 only covers the dynamics of a mobile station without taking the non-line-of-sight (NLOS) bias variation into account. The model set 2 consists of the modeling of the MS dynamics and the NLOS bias variation expressed as a random walk process. The IMM using the model set 1 can perform better than the IMM using the model set 2 when the line-of-sight (LOS) condition takes place. This phenomenon can be reversed when the NLOS condition occurs. The proposed SMS-IMM algorithm takes the advantage of the switching between the two model sets so that the sight conditions and the MS locations can be estimated more accurately. Next, we extend the SMS-IMM to a SMS-fuzzy-tuned-IMM for further performance improvement. Simulation results demonstrate the superior performance of the proposed algorithms.
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粗糙NLOS条件下基于交换模型集的移动定位估计
本文首先提出了一种基于交换模型集的交互式多模型(SMS-IMM)城市移动定位估计算法。考虑了两个状态空间模型集。模型集1只涵盖了移动站的动态,没有考虑非视距(NLOS)偏差变化。模型集2由MS动力学建模和以随机游走过程表示的NLOS偏差变化组成。当视距(LOS)条件发生时,使用模型集1的IMM比使用模型集2的IMM性能更好。当NLOS条件发生时,这种现象可以逆转。本文提出的SMS-IMM算法利用了两种模型集之间的切换,可以更准确地估计出视觉条件和MS位置。接下来,我们将SMS-IMM扩展为sms -fuzzy调优的imm,以进一步提高性能。仿真结果证明了所提算法的优越性能。
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