Joint Trajectory Optimization for Multiple Automated Vehicles in Lane-free Traffic with Vehicle Nudging.

Niloufar Dabestani,Panagiotis Typaldos, Yanumula Venkata Karteek,Ioannis Papamichail,Markos Papageorgiou

2023 IEEE 26th International Conference on Intelligent Transportation Systems (ITSC)(2023)

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摘要
This paper presents a joint trajectory optimization algorithm for a number of connected and automated vehicles in a lane-free traffic environment with vehicle nudging. A double-integrator model is assumed for the longitudinal and lateral movement of each one of the vehicles, considering constant and state-dependent bounds on control inputs, including road boundary constraints. A multi-objective function is designed for all vehicles and is minimized using an efficient feasible direction algorithm. This leads to minimization of fuel consumption, collision avoidance, achievement of desired speeds and prevention of infeasible maneuvers. Challenging scenarios are examined on a lane-free straight motorway stretch, producing promising results for further exploration in situations where simultaneous trajectory optimization for groups of vehicles (e.g., vehicle flocks or two-dimensional platoons) is considered.
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关键词
Lane-free traffic,automated vehicles,joint path planning,optimal coordination,trajectory planning
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