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Design Autonomous Vehicle Behaviors in Heterogeneous Traffic Flow

Author
Li, Jia; Chen, Di; Zhang, Michael
Abstract
While much attention was paid to the interactions of human-driven and automated vehicles at the microscopic level in recent years, the understanding of the macroscopic properties of mixed autonomy traffic flow still remains limited. In this report, we present an equilibrium model of traffic flow with mixed autonomy based on the theory of two-player games. We consider self-interested traffic agents (i.e., human-driven and automated vehicles) endowed with different speed functions and interacting with each other simultaneously in both longitudinal and lateral dimensions. We propose a two-player game model to encapsulate their interactions and characterize the equilibria the agents may reach. We show that the model admits two types of Nash equilibria, one of which is always Pareto efficient. Based on this equilibrium structure, we propose a speed policy that guarantees the realized equilibria are Pareto efficient in all traffic regimes. We present two examples to illustrate the applications of this model. In one example, we construct flux functions for mixed autonomy traffic based on behavior characteristics of agents. In the other example, we consider a lane policy and show that mixed autonomy traffic may exhibit counterintuitive behaviors even though all the agents are rational. In addition, we present empirical evidence concerning the assumptions made in the model.
Description
Final Report
Sponsorship
U.S. Department of Transportation 69A3551747119
Date Issued
2022-03-31Subject
mixed autonomy traffic; automated vehicle behavior design; game theory
Rights
Attribution 4.0 International
Rights URI
Type
report
Accessibility Feature
reading order; structural navigation; tagged PDF
Accessibility Hazard
unknown
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Except where otherwise noted, this item's license is described as Attribution 4.0 International