Motorsport has always been an enabler for technological advancement, and the same applies to the autonomous driving industry. The team TUM Auton-omous Motorsports will participate in the Indy Autonomous Challenge in Octo-ber 2021 to benchmark its self-driving software-stack by racing one out of ten autonomous Dallara AV-21 racecars at the Indianapolis Motor Speedway. The first part of this paper explains the reasons for entering an autonomous vehicle race from an academic perspective: It allows focusing on several edge cases en-countered by autonomous vehicles, such as challenging evasion maneuvers and unstructured scenarios. At the same time, it is inherently safe due to the motor-sport related track safety precautions. It is therefore an ideal testing ground for the development of autonomous driving algorithms capable of mastering the most challenging and rare situations. In addition, we provide insight into our soft-ware development workflow and present our Hardware-in-the-Loop simulation setup. It is capable of running simulations of up to eight autonomous vehicles in real time. The second part of the paper gives a high-level overview of the soft-ware architecture and covers our development priorities in building a high-per-formance autonomous racing software: maximum sensor detection range, relia-ble handling of multi-vehicle situations, as well as reliable motion control under uncertainty.
翻译:汽车运动队TUM Autom-lomo Motorportsport将参加2021年奥克托伯的印地自治挑战赛,通过在印第安纳波利斯汽车高速公路上10辆自治Dallara AV-21赛车中赛跑1辆赛车赛跑,衡量自己的自动驾驶软件堆积。本文第一部分从学术角度解释了进入自主车辆竞赛的原因:它允许关注由自治车辆引发的若干突出案例,如挑战性的规避操作和无结构的场景。与此同时,由于与汽车运动相关的轨道安全防范措施,它具有内在的安全性。因此,它是开发自主驾驶算法的理想测试场,能够掌握最困难和最罕见的情况。此外,我们介绍了我们的软软件开发工作流程,并介绍了我们的硬软件在卢博模拟设置。它能够实时模拟到8辆自治车辆的模拟。在本文第二部分中,由于与汽车运动相关的轨道安全防范措施,它具有内在固有的安全性。因此,它是发展自主驾驶自动驾驶的自动驾驶算法的理想测试场,能够掌握最困难和最罕见的情况。