This paper proposes a decision-making framework for Connected Autonomous Vehicle interactions. It provides and justifies algorithms for strategic selection of control references for cruising, platooning and overtaking. The algorithm is based on the trade-off between energy consumption and time. The consequent cooperation opportunities originating from agent heterogeneity are captured by a game-theoretic cooperative-competitive solution concept to provide a computationally feasible, self-enforced, cooperative traffic management framework.
A Framework for Self-Enforced Optimal Interaction between Connected Vehicles / Stryszowski, M.; Longo, S.; D'Alessandro, D.; Velenis, E.; Forostovsky, G.; Manfredi, S.. - In: IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS. - ISSN 1524-9050. - 22:10(2021), pp. 6152-6161. [10.1109/TITS.2020.2988150]
A Framework for Self-Enforced Optimal Interaction between Connected Vehicles
Manfredi S.
2021
Abstract
This paper proposes a decision-making framework for Connected Autonomous Vehicle interactions. It provides and justifies algorithms for strategic selection of control references for cruising, platooning and overtaking. The algorithm is based on the trade-off between energy consumption and time. The consequent cooperation opportunities originating from agent heterogeneity are captured by a game-theoretic cooperative-competitive solution concept to provide a computationally feasible, self-enforced, cooperative traffic management framework.| File | Dimensione | Formato | |
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