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A data fusion system of GNSS data and on-vehicle sensors data for improving car positioning precision in urban environments

机译:GNSS数据和车载传感器数据的数据融合系统,可提高城市环境中汽车的定位精度

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摘要

Accurate car positioning on the Earth's surface is a requirement for many state-of-the-art automotive applications, but current low-cost Global Navigation Satellite System (GNSS) receivers can suffer from poor precision and transient unavailability in urban areas. In this article, a real-time data fusion system of absolute and relative positioning data is proposed with the aim of increasing car positioning precision. To achieve this goal, a system based on the Extended Kalman Filter (EKF) was employed to fuse absolute positioning data coming from a low-cost GNSS receiver with data coming from four wheel speed sensors, a lateral acceleration sensor, and a steering wheel angle sensor. The bicycle kinematic model and the Ackerman steering geometry were employed to particularize the EKF. The proposed system was evaluated through experimental tests. The results showed precision improvements of up to 50% in terms of the Root Mean Square Error (RMSE), 50% in terms of the 95th-percentile of the distance error distribution, and 75% in terms of the maximum distance error, with respect to using a stand-alone, low-cost GNSS receiver. These results suggest that the proposed data fusion system for car vehicles can significantly reduce the positioning error with respect to the positioning error of a low-cost GNSS receiver. The best precision improvements of the system are expected to be achieved in urban areas, where tall buildings hinder the effectiveness of GNSS systems. The main contribution of this work is the proposal of a novel system that enables accurate car positioning during short GNSS signal outages. This advance could be integrated in larger expert and intelligent systems such as autonomous cars, helping to make self-driving easier and safer. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在许多最先进的汽车应用中,精确地将汽车定位在地球表面是必需的,但是当前的低成本全球导航卫星系统(GNSS)接收器可能会遭受较差的精度和市区瞬态不可用的困扰。本文提出了一种绝对和相对定位数据的实时数据融合系统,旨在提高汽车的定位精度。为了实现此目标,采用了基于扩展卡尔曼滤波器(EKF)的系统,将来自低成本GNSS接收器的绝对定位数据与来自四个轮速传感器,横向加速度传感器和方向盘角度的数据融合在一起传感器。自行车运动学模型和Ackerman转向几何用于确定EKF。通过实验测试对提出的系统进行了评估。结果表明,相对于均方根误差(RMSE),精度最高可提高50%,距离误差分布的第95个百分位数可提高50%,最大距离误差则可提高75%使用独立的低成本GNSS接收器。这些结果表明,相对于低成本GNSS接收器的定位误差,所提出的用于汽车的数据融合系统可以显着减小定位误差。该系统的最佳精度改进有望在城市地区实现,而高层建筑阻碍了GNSS系统的有效性。这项工作的主要贡献是提出了一种新颖的系统,该系统能够在短GNSS信号中断期间实现精确的汽车定位。这一进步可以集成到更大的专家和智能系统(如自动驾驶汽车)中,从而使自动驾驶更加轻松和安全。 (C)2017 Elsevier Ltd.保留所有权利。

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