A Model-Free Algorithm to Safely Approach the Handling Limit of an Autonomous Racecar

A. Wischnewski, Johannes Betz, B. Lohmann
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引用次数: 15

Abstract

One of the key aspects in racing is the ability of the driver to find the handling limits of the vehicle to minimize the resulting lap time. Many approaches for raceline optimization assume the tire-road friction coefficient to be known. However, this neglects the fact that the ability of the system to realize such a race trajectory depends on complex interdependencies between the online trajectory planner, the control systems and the non-modelled uncertainties. In general, a high quality control system can approach the physical limit more reliable, as it applies less corrective actions. We present a model-free learning method to find the minimum achievable lap-time for a given controller using online adaption of a scale factor for the maximum longitudinal and lateral accelerations in the online trajectory planner. In contrast to existing concepts, our approach can be applied as an extension to already available planning and control algorithms instead of replacing them. We demonstrate reliable and safe operation for different vehicle setups in simulation and demonstrate that the algorithm works successfully on a full-size racecar.
一种安全逼近自主赛车操纵极限的无模型算法
赛车的一个关键方面是驾驶员找到车辆操控极限的能力,以尽量减少由此产生的单圈时间。许多赛道优化方法都假定轮胎-路面摩擦系数是已知的。然而,这忽略了一个事实,即系统实现这种竞赛轨迹的能力取决于在线轨迹规划器、控制系统和非建模不确定性之间复杂的相互依赖关系。一般来说,一个高质量的控制系统可以更可靠地接近物理极限,因为它应用较少的纠正措施。我们提出了一种无模型学习方法,通过在线自适应在线轨迹规划器中最大纵向和横向加速度的比例因子,找到给定控制器的最小可实现单圈时间。与现有的概念相比,我们的方法可以作为现有计划和控制算法的扩展而不是替代它们。我们在模拟中验证了不同车辆设置的可靠和安全运行,并证明该算法在全尺寸赛车上成功运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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