Implementing and Tuning an Autonomous Racing Car Testbed
Ref: CISTER-TR-191209 Publication Date: 26, Nov, 2019
Implementing and Tuning an Autonomous Racing Car Testbed
Ref: CISTER-TR-191209 Publication Date: 26, Nov, 2019Abstract:
Achieving safe autonomous driving is far from a vision at present days, with many
examples like Uber, Google and the most famous of all Tesla, as they successfully
deployed self driving cars around the world. Researchers and engineers have been
putting tremendous efforts and will continue to do so in the following years into
developing safe and precise control algorithms and technologies that will be included
in future self driving cars.
Besides these well known autonomous car deployments, some focus has also been
put into autonomous racing competitions, for example the Roborace. The fact is
that although significant progress that has been made, testing on real size cars in
real environments requires immense financial support, making it impossible for many
research groups to enter the game.
Consequently, interesting alternatives appeared, such as the F1 Tenth, which
challenges students, researchers and engineers to embrace in a low cost autonomous
racing competition while developing control algorithms, that rely on sensors and
strategies used in real life applications.
This thesis focus on the comparison of different control algorithms and their
effectiveness, that are present in a racing aspect of the F1 Tenth competition. In
this thesis, efforts were put into developing a robotic autonomous car, relying on
Robot Operative System, ROS, that not only meet the specifications from the F1
Tenth rules, but also allowed to establish a testbed for different future autonomous
driving research.
Document:
Master Thesis, ISEP.
Porto.
Notes: Orientação científica: Ricardo Severino
Record Date: 13, Dec, 2019