论文标题
多路径非视线频道中的车辆定位和跟踪
Vehicular Positioning and Tracking in Multipath Non-Line-of-Sight Channels
论文作者
论文摘要
我们考虑单个单元格多输出系统中的下行链路传输,其中用户设备对应于沿给定轨迹移动的车辆。该系统利用以多个非视线(NLOS)组件为特征的毫米波通道。正如在几项相关工作中指出的那样,在这样的系统无线电访问网络(RAN)的定位中,可以有效地提高全球导航卫星系统实现的定位精度。但是,基于RAN的定位精度高度取决于通道估计的质量,尤其是在利用多径传播的情况下。认识到服务基站与车辆之间的通信通道以及车辆的地理位置可以有利地建模为相互关联的自动回归过程,我们提出了一种两阶段的卡尔曼滤波器算法,该算法采用两个相互键入的滤镜,该算法使用两个相互键入的滤镜来进行通道跟踪,位置跟踪,位置跟踪和突然的通道变化检测。第一个Kalman滤波器跟踪与通信通道相关的dep绕角度和到达的角度,这些角度用于进行粗糙的位置估计。第二个卡尔曼滤波器使用车辆的运动学参数跟踪车辆的位置。仿真结果清楚地表明了使用所提出的方案的优点,该方案利用了通信通道和地理位置的记忆属性,与在NLOS环境中使用先前提出的单级或未正确组合的过滤器相比。
We consider the downlink transmission in a single cell multiple-input multiple-output system, in which the user equipment correspond to a vehicle moving along a given trajectory. This system utilizes millimeter wave channels characterized by multiple non-line-of-sight (NLoS) components. As it has been pointed out in several related works, in such systems radio access network (RAN)-based positioning can effectively improve the positioning accuracy achieved by Global Navigation Satellite Systems. However, the RAN-based positioning accuracy is highly dependent on the quality of the channel estimates, especially if multipath propagation is exploited. Recognizing that the communication channels between the serving base station and the vehicle as well as the geographical position of the vehicle can be advantageously modeled as inter-related autoregressive processes, we propose a two-stage Kalman filter algorithm employing two intertwined filters for channel tracking, position tracking and abrupt channel change detection. The first Kalman filter tracks angles-of-departure and angles-of-arrival associated with the communication channels, which are used to make a coarse position estimation. The second Kalman filter tracks the position of the vehicle utilizing the kinematic parameters of the vehicle. Simulation results clearly show the advantages of using the proposed scheme, which exploits the memoryful property of both the communication channels and the geographical positions, as compared to employing previously proposed single-stage or not properly combined filters in NLoS environments.