论文标题
在处理极限的自动驾驶电动汽车的实时自适应速度优化
Real-Time Adaptive Velocity Optimization for Autonomous Electric Cars at the Limits of Handling
论文作者
论文摘要
随着自动驾驶汽车的发展,Roborace和Indy自主挑战等自主赛车系列正在迅速引起人们的关注。参加这些比赛的研究人员希望随后将其发达功能转移到乘用车上,以便出于安全原因以及由于环境和社会利益而改善自动驾驶技术。赛道的优势是成为一个安全的环境,在这种环境中,算法的具有挑战性的情况是永久创建的。为了在赛道上达到最低圈时间,重要的是要收集和处理有关外部影响的信息,例如其他汽车的位置以及道路和轮胎之间的摩擦潜力。此外,自我推进系统的预测行为对于尽可能高效地利用可用能量至关重要。因此,在本文中,我们提出了一个基于优化的速度策划者,该速度规划师在数学上以多参数顺序二次问题(MPSQP)形式提出。该计划者可以在空间和时间上处理变化的摩擦系数,并将种族能量策略(ES)转移到道路上。它进一步处理了车辆电子控制单元(ECU)实时的速度profile生成任务,以实时进行性能和紧急轨迹。
With the evolution of self-driving cars, autonomous racing series like Roborace and the Indy Autonomous Challenge are rapidly attracting growing attention. Researchers participating in these competitions hope to subsequently transfer their developed functionality to passenger vehicles, in order to improve self-driving technology for reasons of safety, and due to environmental and social benefits. The race track has the advantage of being a safe environment where challenging situations for the algorithms are permanently created. To achieve minimum lap times on the race track, it is important to gather and process information about external influences including, e.g., the position of other cars and the friction potential between the road and the tires. Furthermore, the predicted behavior of the ego-car's propulsion system is crucial for leveraging the available energy as efficiently as possible. In this paper, we therefore present an optimization-based velocity planner, mathematically formulated as a multi-parametric Sequential Quadratic Problem (mpSQP). This planner can handle a spatially and temporally varying friction coefficient, and transfer a race Energy Strategy (ES) to the road. It further handles the velocity-profile-generation task for performance and emergency trajectories in real time on the vehicle's Electronic Control Unit (ECU).