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GNSS/Electronic Compass/Road Segment Information Fusion for Vehicle-to-Vehicle Collision Avoidance Application.

机译:用于车对车避碰应用的GNss /电子罗盘/路段信息融合。

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摘要

The increasing number of vehicles in modern cities brings the problem of increasing crashes. One of the applications or services of Intelligent Transportation Systems (ITS) conceived to improve safety and reduce congestion is collision avoidance. This safety critical application requires sub-meter level vehicle state estimation accuracy with very high integrity, continuity and availability, to detect an impending collision and issue a warning or intervene in the case that the warning is not heeded. Because of the challenging city environment, to date there is no approved method capable of delivering this high level of performance in vehicle state estimation. In particular, the current Global Navigation Satellite System (GNSS) based collision avoidance systems have the major limitation that the real-time accuracy of dynamic state estimation deteriorates during abrupt acceleration and deceleration situations, compromising the integrity of collision avoidance. Therefore, to provide the Required Navigation Performance (RNP) for collision avoidance, this paper proposes a novel Particle Filter (PF) based model for the integration or fusion of real-time kinematic (RTK) GNSS position solutions with electronic compass and road segment data used in conjunction with an Autoregressive (AR) motion model. The real-time vehicle state estimates are used together with distance based collision avoidance algorithms to predict potential collisions. The algorithms are tested by simulation and in the field representing a low density urban environment. The results show that the proposed algorithm meets the horizontal positioning accuracy requirement for collision avoidance and is superior to positioning accuracy of GNSS only, traditional Constant Velocity (CV) and Constant Acceleration (CA) based motion models, with a significant improvement in the prediction accuracy of potential collision.
机译:现代城市中越来越多的车辆带来了越来越多的撞车问题。旨在提高安全性并减少拥堵的智能交通系统(ITS)的应用程序或服务之一就是避免碰撞。此安全性至关重要的应用程序要求具有非常高的完整性,连续性和可用性的亚米级车辆状态估计精度,以检测即将发生的碰撞并发出警告或在不注意警告的情况下进行干预。由于城市环境充满挑战,迄今为止,尚无批准的方法能够在车辆状态估计中提供如此高的性能。尤其是,当前基于全球导航卫星系统(GNSS)的防撞系统具有以下主要局限性:动态状态估计的实时准确性在突然的加减速情况下会降低,从而损害了防撞的完整性。因此,为了提供避免碰撞所需的导航性能(RNP),本文提出了一种基于粒子滤波(PF)的新型模型,用于实时运动(RTK)GNSS位置解与电子罗盘和路段数据的集成或融合。与自回归(AR)运动模型结合使用。实时车辆状态估计与基于距离的碰撞避免算法一起使用,以预测潜在的碰撞。通过模拟测试算法,并在代表低密度城市环境的现场进行测试。结果表明,所提出的算法满足了避免碰撞的水平定位精度要求,优于仅基于GNSS,传统恒速(CV)和恒加速度(CA)运动模型的定位精度,预测精度有了显着提高。潜在的碰撞。

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