自动驾驶汽车的锐度连续路径优化与稀疏化

Mohit Kumar, Peter Strauss, Sven Kraus, Ömer Sahin Tas, C. Stiller
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摘要

我们提出了一种路径优化方法,在考虑车辆横向动力学的同时确保驾驶性能。横向动力学是非完整的;因此,即使无限快速转向,车辆也无法沿着突然变化的路径行驶。曲率和锐度,即曲率相对于行进距离的变化率,必须是连续的,才能有效地跟踪定义的参考路径。现有的路径优化技术通常包括清晰度限制,但不包括清晰度连续性。对于重型车辆来说,锐度不连续性尤其成问题,因为它们的致动器动力学甚至比汽车还要慢。我们提出了一种算法,该算法考虑了锐度及其导数的限制,为给定的参考路径构建了稀疏的锐度连续路径,从而解决了执行器的扭矩限制。锋利的连续路径需要更少的转向努力,减少机械应力和疲劳在转向装置。我们比较并展示了三种不同类型的优化路径的结果。仿真结果表明,计算出的锐度连续路径轮廓减少了横向抖动,提高了舒适性和驾驶性能。
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Sharpness Continuous Path optimization and Sparsification for Automated Vehicles
We present a path optimization approach that ensures driveability while considering a vehicle’s lateral dynamics. The lateral dynamics are non-holonomic; therefore, a vehicle cannot follow a path with abrupt changes even with infinitely fast steering. The curvature and sharpness, i.e., the rate change of curvature with respect to the traveled distance, must be continuous to track a defined reference path efficiently. Existing path optimization techniques typically include sharpness limitations but not sharpness continuity. The sharpness discontinuity is especially problematic for heavy-duty vehicles because their actuator dynamics are even slower than cars. We propose an algorithm that constructs a sparsified sharpness continuous path for a given reference path considering the limits on sharpness and its derivative, which subsequently addresses the torque restrictions of the actuator. The sharpness continuous path needs less steering effort and reduces mechanical stress and fatigue in the steering unit. We compare and present the outcomes for each of the three different types of optimized paths. Simulation results demonstrate that computed sharpness continuous path profiles reduce lateral jerks, enhancing comfort and driveability.
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