TY - JOUR
T1 - TUM autonomous motorsport
T2 - An autonomous racing software for the Indy Autonomous Challenge
AU - Betz, Johannes
AU - Betz, Tobias
AU - Fent, Felix
AU - Geisslinger, Maximilian
AU - Heilmeier, Alexander
AU - Hermansdorfer, Leonhard
AU - Herrmann, Thomas
AU - Huch, Sebastian
AU - Karle, Phillip
AU - Lienkamp, Markus
AU - Lohmann, Boris
AU - Nobis, Felix
AU - Ögretmen, Levent
AU - Rowold, Matthias
AU - Sauerbeck, Florian
AU - Stahl, Tim
AU - Trauth, Rainer
AU - Werner, Frederik
AU - Wischnewski, Alexander
N1 - Publisher Copyright:
© 2023 The Authors. Journal of Field Robotics published by Wiley Periodicals LLC.
PY - 2023/6
Y1 - 2023/6
N2 - For decades, motorsport has been an incubator for innovations in the automotive sector and brought forth systems, like, disk brakes or rearview mirrors. Autonomous racing series such as Roborace, F1Tenth, or the Indy Autonomous Challenge (IAC) are envisioned as playing a similar role within the autonomous vehicle sector, serving as a proving ground for new technology at the limits of the autonomous systems capabilities. This paper outlines the software stack and approach of the TUM Autonomous Motorsport team for their participation in the IAC, which holds two competitions: A single-vehicle competition on the Indianapolis Motor Speedway and a passing competition at the Las Vegas Motor Speedway. Nine university teams used an identical vehicle platform: A modified Indy Lights chassis equipped with sensors, a computing platform, and actuators. All the teams developed different algorithms for object detection, localization, planning, prediction, and control of the race cars. The team from Technical University of Munich (TUM) placed first in Indianapolis and secured second place in Las Vegas. During the final of the passing competition, the TUM team reached speeds and accelerations close to the limit of the vehicle, peaking at around (Formula presented.) and (Formula presented.). This paper will present details of the vehicle hardware platform, the developed algorithms, and the workflow to test and enhance the software applied during the 2-year project. We derive deep insights into the autonomous vehicle's behavior at high speed and high acceleration by providing a detailed competition analysis. On the basis of this, we deduce a list of lessons learned and provide insights on promising areas of future work based on the real-world evaluation of the displayed concepts.
AB - For decades, motorsport has been an incubator for innovations in the automotive sector and brought forth systems, like, disk brakes or rearview mirrors. Autonomous racing series such as Roborace, F1Tenth, or the Indy Autonomous Challenge (IAC) are envisioned as playing a similar role within the autonomous vehicle sector, serving as a proving ground for new technology at the limits of the autonomous systems capabilities. This paper outlines the software stack and approach of the TUM Autonomous Motorsport team for their participation in the IAC, which holds two competitions: A single-vehicle competition on the Indianapolis Motor Speedway and a passing competition at the Las Vegas Motor Speedway. Nine university teams used an identical vehicle platform: A modified Indy Lights chassis equipped with sensors, a computing platform, and actuators. All the teams developed different algorithms for object detection, localization, planning, prediction, and control of the race cars. The team from Technical University of Munich (TUM) placed first in Indianapolis and secured second place in Las Vegas. During the final of the passing competition, the TUM team reached speeds and accelerations close to the limit of the vehicle, peaking at around (Formula presented.) and (Formula presented.). This paper will present details of the vehicle hardware platform, the developed algorithms, and the workflow to test and enhance the software applied during the 2-year project. We derive deep insights into the autonomous vehicle's behavior at high speed and high acceleration by providing a detailed competition analysis. On the basis of this, we deduce a list of lessons learned and provide insights on promising areas of future work based on the real-world evaluation of the displayed concepts.
KW - artificial intelligence
KW - autonomous robot
KW - dynamic obstacle avoidance
KW - unmanned ground vehicle
KW - vehicle robot
UR - http://www.scopus.com/inward/record.url?scp=85146358202&partnerID=8YFLogxK
U2 - 10.1002/rob.22153
DO - 10.1002/rob.22153
M3 - Article
AN - SCOPUS:85146358202
SN - 1556-4959
VL - 40
SP - 783
EP - 809
JO - Journal of Field Robotics
JF - Journal of Field Robotics
IS - 4
ER -