Autonomous racing is a challenging problem, as the vehicle needs to operate at the friction or handling limits in order to achieve minimum lap times. Autonomous race cars require highly accurate perception, state estimation, planning and precise application of controls. What makes it even more challenging is the accurate identification of vehicle model parameters that dictate the effects of the lateral tire slip, which may change over time, for example, due to wear and tear of the tires. Current works either propose model identification offline or need good parameters to start with (within 15-20\% of actual value), which is not enough to account for major changes in tire model that occur during actual races when driving at the control limits. We propose a unified framework which learns the tire model online from the collected data, as well as adjusts the model based on environmental changes even if the model parameters change by a higher margin. We demonstrate our approach in numeric and high-fidelity simulators for a 1:43 scale race car and a full-size car.
翻译:自主赛是一个具有挑战性的问题,因为车辆需要以摩擦或操作极限运作,以达到最小的驾驶时间。自主赛车需要高度精确的观念、状态估计、规划和精确的控制措施应用。更具有挑战性的是准确确定车辆模型参数,这些参数决定了横向轮胎滑坡的影响,这些影响可能会随着时间而变化,例如轮胎磨损。目前的工作要么提出脱机模型识别,要么需要良好的参数(在实际价值的15-20英寸以内),这不足以说明轮胎模型在实际赛跑期间在控制极限时发生的重大变化。我们提出了一个统一框架,从所收集的数据中在线学习轮胎模型,并调整基于环境变化的模型,即使模型参数改变幅度更大。我们用数字和高纤维模拟器对1点43级的赛车和全尺寸的汽车展示了我们的做法。</s>