
arXiv: 1903.06053
This paper proposes an efficient computational framework for longitudinal velocity control of a large number of autonomous vehicles (AVs) and develops a traffic flow theory for AVs. Instead of hypothesizing explicitly how AVs drive, our goal is to design future AVs as rational, utility-optimizing agents that continuously select optimal velocity over a period of planning horizon. With a large number of interacting AVs, this design problem can become computationally intractable. This paper aims to tackle such a challenge by employing mean field approximation and deriving a mean field game (MFG) as the limiting differential game with an infinite number of agents. The proposed micro-macro model allows one to define individuals on a microscopic level as utility-optimizing agents while translating rich microscopic behaviors to macroscopic models. Different from existing studies on the application of MFG to traffic flow models, the present study offers a systematic framework to apply MFG to autonomous vehicle velocity control. The MFG-based AV controller is shown to mitigate traffic jam faster than the LWR-based controller. MFG also embodies classical traffic flow models with behavioral interpretation, thereby providing a new traffic flow theory for AVs.
31 pages, 11 figures
Physics - Physics and Society, Primary: 49N90, 90B20, Secondary: 35Q91, FOS: Physical sciences, Mean field games (aspects of game theory), Automated systems (robots, etc.) in control theory, Systems and Control (eess.SY), Physics and Society (physics.soc-ph), Electrical Engineering and Systems Science - Systems and Control, Traffic problems in operations research, PDEs in connection with game theory, economics, social and behavioral sciences, micro-macro limit, Optimization and Control (math.OC), autonomous vehicles control, FOS: Mathematics, FOS: Electrical engineering, electronic engineering, information engineering, mean field game, \(\epsilon\)-Nash equilibrium, differential game, Differential games (aspects of game theory), Mathematics - Optimization and Control
Physics - Physics and Society, Primary: 49N90, 90B20, Secondary: 35Q91, FOS: Physical sciences, Mean field games (aspects of game theory), Automated systems (robots, etc.) in control theory, Systems and Control (eess.SY), Physics and Society (physics.soc-ph), Electrical Engineering and Systems Science - Systems and Control, Traffic problems in operations research, PDEs in connection with game theory, economics, social and behavioral sciences, micro-macro limit, Optimization and Control (math.OC), autonomous vehicles control, FOS: Mathematics, FOS: Electrical engineering, electronic engineering, information engineering, mean field game, \(\epsilon\)-Nash equilibrium, differential game, Differential games (aspects of game theory), Mathematics - Optimization and Control
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