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A Hybrid Positioning Strategy for Vehicles in a Tunnel Based on RFID and In-Vehicle Sensors

机译:基于RFID和车载传感器的隧道车辆混合定位策略

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摘要

Many intelligent transportation system applications require accurate, reliable, and continuous vehicle positioning. How to achieve such positioning performance in extended GPS-denied environments such as tunnels is the main challenge for land vehicles. This paper proposes a hybrid multi-sensor fusion strategy for vehicle positioning in tunnels. First, the preliminary positioning algorithm is developed. The Radio Frequency Identification (RFID) technology is introduced to achieve preliminary positioning in the tunnel. The received signal strength (RSS) is used as an indicator to calculate the distances between the RFID tags and reader, and then a Least Mean Square (LMS) federated filter is designed to provide the preliminary position information for subsequent global fusion. Further, to improve the positioning performance in the tunnel, an interactive multiple model (IMM)-based global fusion algorithm is developed to fuse the data from preliminary positioning results and low-cost in-vehicle sensors, such as electronic compasses and wheel speed sensors. In the actual implementation of IMM, the strong tracking extended Kalman filter (STEKF) algorithm is designed to replace the conventional extended Kalman filter (EKF) to achieve model individual filtering. Finally, the proposed strategy is evaluated through experiments. The results validate the feasibility and effectiveness of the proposed strategy.
机译:许多智能交通系统应用要求精确,可靠和连续的车辆定位。对于陆地车辆而言,如何在诸如隧道等扩展的GPS受限环境中实现这种定位性能是主要的挑战。本文提出了一种用于隧道车辆定位的混合多传感器融合策略。首先,开发了初步定位算法。引入了射频识别(RFID)技术以实现隧道中的初步定位。接收信号强度(RSS)用作计算RFID标签与阅读器之间距离的指标,然后设计最小均方(LMS)联合滤波器以提供初步位置信息,以用于后续的全局融合。此外,为了提高隧道中的定位性能,开发了基于交互式多模型(IMM)的全局融合算法,以融合来自初步定位结果和低成本车载传感器(如电子罗盘和轮速传感器)的数据。在IMM的实际实现中,设计了强跟踪扩展卡尔曼滤波器(STEKF)算法来代替传统的扩展卡尔曼滤波器(EKF)以实现模型个体滤波。最后,通过实验对提出的策略进行了评估。结果验证了该策略的可行性和有效性。

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