An Enhanced Graph Representation for Machine Learning Based Automatic Intersection Management

peer-reviewed
Erstveröffentlichung
2022-11-01Authors
Klimke, Marvin
Gerigk, Jasper
Völz, Benjamin
Buchholz, Michael
Beitrag zu einer Konferenz
Published in
2022 IEEE 25th International Conference on Intelligent Transportation Systems (ITSC). - : Institute of Electrical and Electronics Engineers (IEEE), 2022. - S. 523-530. - ISBN 978-1-6654-6880-0, ISBN 978-1-6654-6881-7
Link to original publication
https://dx.doi.org/10.1109/ITSC55140.2022.9922515Faculties
Fakultät für Ingenieurwissenschaften, Informatik und PsychologieInstitutions
Institut für Mess-, Regel- und MikrotechnikDocument version
accepted versionConference
25th International Conference on Intelligent Transportation Systems (ITSC), 2022-10-08 - 2022-10-12, Macau
Abstract
The improvement of traffic efficiency at urban intersections receives strong research interest in the field of automated intersection management. So far, mostly non-learning algorithms like reservation or optimization-based ones were proposed to solve the underlying multi-agent planning problem. At the same time, automated driving functions for a single ego vehicle are increasingly implemented using machine learning methods. In this work, we build upon a previously presented graph-based scene representation and graph neural network to approach the problem using reinforcement learning. The scene representation is improved in key aspects by using edge features in addition to the existing node features for the vehicles. This leads to an increased representation quality that is leveraged by an updated network architecture. The paper provides an in-depth evaluation of the proposed method against baselines that are commonly used in automatic intersection management. Compared to a traditional signalized intersection and an enhanced first-in-first-out scheme, a significant reduction of induced delay is observed at varying traffic densities. Finally, the generalization capability of the graph-based representation is evaluated by testing the policy on intersection layouts not seen during training. The model generalizes virtually without restrictions to smaller intersection layouts and within certain limits to larger ones.
Project uulm
LUKAS / Verbundprojekt: LUKAS - Lokales Umfeldmodell für das kooperative, automatisierte Fahren in komplexen Verkehrssituationen; Teilvorhaben: Infrastrukturseite Datenverarbeitung und kooperative Handlungsplanung / BMWi / 19A20004F
Subject headings
[GND]: Autonomes Fahrzeug | Car-to-Car-Kommunikation | Bestärkendes Lernen (Künstliche Intelligenz)[LCSH]: Graph theory | Reinforcement learning
[Free subject headings]: Kooperative Planung | Automatisiertes Fahren | Vernetzte Fahrzeuge | Vehicle-to-Infrastructure | Graph Neural Network
[DDC subject group]: DDC 620 / Engineering & allied operations
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Please use this identifier to cite or link to this item: http://dx.doi.org/10.18725/OPARU-46161
Klimke, Marvin et al. (2022): An Enhanced Graph Representation for Machine Learning Based Automatic Intersection Management. Open Access Repositorium der Universität Ulm und Technischen Hochschule Ulm. http://dx.doi.org/10.18725/OPARU-46161
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