Particle filter for mobile station Positioning in a cellular network

N. Mezhoud, N. Bouzera, M. Oussalah, A. Zaatri, Z. Hammoudi
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Abstract

Global Positioning System is the most commonly employed localization technique to localize mobile devices in outdoor environments. However, this cannot be operating when the line-of-sight visibility to the satellites is lost, as in indoor, dense environments or bad weather conditions. This motivates the growing network or hybrid based positioning techniques that use signal strength and network topology. Our methodology uses TEMS Investigation software to retrieve network information including signal strength and cell-identities of various network transmitters, and a nonlinear estimation like technique to estimate the mobile position. Typically, under linearity and Gaussian additive noise constraint, the conventional Kalman filters yields optimal estimation solution, provided the noise statistics is known. However, when such constraint is violated, e.g., either the measurement or state model is non-linear, the convergence of the filter cannot be granted. In this paper, we present a suboptimal estimation method using the particle filter where the cellular network data are combined to yield a close to optimal solution. The algorithm is tested on synthetic and real word dataset, where the results are compared with conventional Kalman filtering and unscented transform, where the superiority of the particle filtering like approach is demonstrated.
用于蜂窝网络中移动站定位的粒子滤波
全球定位系统是户外环境中最常用的移动设备定位技术。然而,当卫星失去视线时,如在室内、密集环境或恶劣天气条件下,这种方法就无法运行。这激发了使用信号强度和网络拓扑的日益增长的网络或基于混合的定位技术。我们的方法使用TEMS调查软件来检索网络信息,包括各种网络发射机的信号强度和蜂窝身份,并使用非线性估计技术来估计移动位置。通常,在线性和高斯加性噪声约束下,只要噪声统计量已知,传统卡尔曼滤波器就能产生最优估计解。然而,当这种约束被违反时,例如,测量模型或状态模型是非线性的,则不能保证滤波器的收敛性。在本文中,我们提出了一种使用粒子滤波的次优估计方法,该方法将蜂窝网络数据组合在一起以产生接近最优解。在合成数据集和真实单词数据集上对算法进行了测试,并将结果与传统卡尔曼滤波和无气味变换进行了比较,证明了类粒子滤波方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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