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An Indoor Mobile Location Estimator in Mixed Line of Sight/Non-Line of Sight Environments Using Replacement Modified Hidden Markov Models and an Interacting Multiple Model

机译:使用替换修正的隐马尔可夫模型和交互式多重模型的混合视线/非视线环境中的室内移动位置估计器

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摘要

Localization as a technique to solve the complex and challenging problems besetting line-of-sight (LOS) and non-line-of-sight (NLOS) transmissions has recently attracted considerable attention in the wireless sensor network field. This paper proposes a strategy for eliminating NLOS localization errors during calculation of the location of mobile terminals (MTs) in unfamiliar indoor environments. In order to improve the hidden Markov model (HMM), we propose two modified algorithms, namely, modified HMM (M-HMM) and replacement modified HMM (RM-HMM). Further, a hybrid localization algorithm that combines HMM with an interacting multiple model (IMM) is proposed to represent the velocity of mobile nodes. This velocity model is divided into a high-speed and a low-speed model, which means the nodes move at different speeds following the same mobility pattern. Each moving node continually switches its state based on its probability. Consequently, to improve precision, each moving node uses the IMM model to integrate the results from the HMM and its modified forms. Simulation experiments conducted show that our proposed algorithms perform well in both distance estimation and coordinate calculation, with increasing accuracy of localization of the proposed algorithms in the order M-HMM, RM-HMM, and HMM + IMM. The simulations also show that the three algorithms are accurate, stable, and robust.
机译:定位技术是解决视距(LOS)和非视距(NLOS)传输难题的技术,最近在无线传感器网络领域引起了相当大的关注。本文提出了一种在不熟悉的室内环境中计算移动终端(MT)位置时消除NLOS定位误差的策略。为了改进隐马尔可夫模型(HMM),我们提出了两种改进的算法,即改进的HMM(M-HMM)和替代的改进的HMM(RM-HMM)。此外,提出了一种混合定位算法,将HMM与交互多模型(IMM)结合起来以表示移动节点的速度。该速度模型分为高速模型和低速模型,这意味着节点遵循相同的移动性模式以不同的速度运动。每个移动节点根据其概率连续切换其状态。因此,为了提高精度,每个运动节点都使用IMM模型来集成HMM及其修改形式的结果。进行的仿真实验表明,我们提出的算法在距离估计和坐标计算方面均表现良好,并且以M-HMM,RM-HMM和HMM + IMM的顺序提高了定位算法的定位精度。仿真还表明,这三种算法是准确,稳定和健壮的。

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