Wu, Hung-Ju; Nenchev, Vladislav; Rathgeber, Christian
Dokumenttyp:
Konferenzbeitrag / Conference Paper
Titel:
Automatic Parameter Tuning of Self-Driving Vehicles
Titel Konferenzpublikation:
2024 IEEE Conference on Control Technology and Applications (CCTA)
Veranstalter (Körperschaft):
IEEE
Konferenztitel:
IEEE Conference on Control Technology and Applications (2024, Newcastle upon Tyne)
Tagungsort:
Newcastle upon Tyne, United Kingdom
Jahr der Konferenz:
2024
Datum Beginn der Konferenz:
21.08.2024
Datum Ende der Konferenz:
23.08.2024
Verlagsort:
Piscataway, NJ
Verlag:
IEEE
Jahr:
2024
Seiten von - bis:
555-560
Sprache:
Englisch
Abstract:
Modern automated driving solutions utilize trajectory planning and control components with numerous parameters that need to be tuned for different driving situations and vehicle types to achieve optimal performance. This paper proposes a method to automatically tune such parameters to resemble expert demonstrations. We utilize a cost function which captures deviations of the closed-loop operation of the controller from the recorded desired driving behavior. Parameter tuning is then accomplished by using local optimization techniques. Three optimization alternatives are compared in a case study, where a trajectory planner is tuned for lane following in a real-world driving scenario. The results suggest that the proposed approach improves manually tuned initial parameters significantly even with respect to noisy demonstration data.
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Modern automated driving solutions utilize trajectory planning and control components with numerous parameters that need to be tuned for different driving situations and vehicle types to achieve optimal performance. This paper proposes a method to automatically tune such parameters to resemble expert demonstrations. We utilize a cost function which captures deviations of the closed-loop operation of the controller from the recorded desired driving behavior. Parameter tuning is then accomplished... »