Paolo Russo
Racing line optimization algorithms for high performance and/or automated vehicles.
Rel. Alessandro Vigliani, Angelo Domenico Vella, Aldo Sorniotti. Politecnico di Torino, Corso di laurea magistrale in Automotive Engineering (Ingegneria Dell'Autoveicolo), 2023
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Abstract
The lap time optimisation is the process to calculate the best trajectory to achieve the minimum lap time, while considering the boundaries due to the vehicle dynamics. Traditional approaches have leaned on physics-based control models, which, although effective in offline settings, fall short when applied to online racing scenarios. These models not only burden computational resources but also lack the adaptability required to respond promptly to dynamic variations in vehicle behaviour and track conditions. The work of this thesis consists of a reinforcement learning algorithm capable to act as a path re-planner with access to previously stored information coming from previous manoeuvres.
This introduces the way for adaptive re-planning that can dynamically respond to changes in the vehicle's behaviour and evolving track conditions during the course of a racing session
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