Verlagslink: | https://www.scitepress.org/Papers/2024/129444/129444.pdf | Verlagslink DOI: | 10.5220/0012944400003822 | Titel: | Miniature autonomous vehicle environment for sim-to-real transfer in reinforcement learning | Sprache: | Englisch | Autorenschaft: | Pareigis, Stephan ![]() Riege, Daniel Leonid Tiedemann, Tim |
Herausgeber*In: | Gini, Giuseppina Precup, Radu-Emil Filev, Dimitar |
Schlagwörter: | Autonomous Driving; Digital Twin; Miniature Autonomy; Real-World Reinforcement Learning; Reinforcement Learning; Sim-to-Real Gap | Erscheinungsdatum: | 2025 | Verlag: | ScitePress | Buchtitel: | Proceedings of the 21st International Conference on Informatics in Control, Automation and Robotics - Volume 1: ICINCO, 2024 , Porto, Portugal | Teil der Schriftenreihe: | Proceedings of the International Conference on Informatics in Control Automation and Robotics | Bandangabe: | 1 | Anfangsseite: | 309 | Endseite: | 317 | Konferenz: | International Conference on Informatics in Control, Automation and Robotics 2024 | Zusammenfassung: | An experimental setup and preliminary validation of a platform for sim-to-real transfer in reinforcement learn ing for autonomous driving is presented. The platform features a 1:87 scale miniature autonomous vehicle, the tinycar, within a detailed miniature world that includes urban and rural settings. Key components include a simulation for training machine learning models, a digital twin with a tracking system using overhead cameras, an automatic repositioning mechanism of the miniature vehicle to reduce hu man intervention when training in the real-world, and an encoder based approach for reducing the state space dimension for the machine learning algorithms. The tinycar is equipped with a steering servo, DC motor, front-facing camera, and a custom PCB with an ESP32 micro-controller. A custom UDP-based network protocol enables real-time communication. The machine learning setup uses semantically segmented lanes of the streets as an input. These colored lanes can be directly produced by the simulation. In the real-world a machine learning based segmentation method is used to achieve the segmented lanes. Twomethodsare used to train a controller (actor): Imitation learning as a supervised learning method in which a Stanley controller serves as a teacher. Secondly, Twin Delayed Deep Deterministic Policy Gradient (TD3) is used to minimize the Cross-Track Error (CTE) of the miniature vehicle with respect to its lateral position in the street. Both methods are applied equally in simulation and in the real-world and are compared. Preliminary results show high accuracy in lane following and intersection navigation in simulation and real world, supported by precise real-time feedback from the tracking system. While full integration of the RL model is ongoing, the presented results show the platform’s potential to further investigate the sim-to-real as pects in autonomous driving. |
URI: | https://hdl.handle.net/20.500.12738/17975 | ISBN: | 978-989-758-717-7 | ISSN: | 2184-2809 | Begutachtungsstatus: | Diese Version hat ein Peer-Review-Verfahren durchlaufen (Peer Review) | Einrichtung: | Department Informatik Fakultät Technik und Informatik |
Dokumenttyp: | Chapter/Article (Proceedings) |
Appears in Collections: | Publications without full text |
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