Joint routing and pricing control in congested mixed autonomy networks
Mohammadhadi Mansourianfar, Ziyuan Gu, S. Travis Waller, Meead Saberi

TL;DR
This paper introduces a joint routing and pricing control scheme for mixed autonomy traffic networks, incentivizing autonomous vehicles to follow system-optimal routes and reducing congestion through dynamic tolls and differentiated charges.
Contribution
It proposes a bi-level optimization framework with a feedback-based controller and adaptive fundamental diagrams to improve traffic flow in mixed autonomy networks.
Findings
Reduced total system travel time with the scheme
Effective congestion management in large-scale networks
Incentivized CAVs to follow system-optimal routing
Abstract
Routing controllability of connected and autonomous vehicles (CAVs) has been shown to reduce the adverse effects of selfish routing on the network efficiency. However, the assumption that CAV owners would readily allow themselves to be controlled externally by a central agency for the good of the system is unrealistic. In this paper, we propose a joint routing and pricing control scheme that aims to incentivize CAVs to seek centrally controlled system-optimal (SO) routing by saving on tolls while user equilibrium (UE) seeking human-driven vehicles (HVs) are subject to a congestion charge. The problem is formulated as a bi-level optimization program where the upper level optimizes the dynamic toll rates using the network fundamental diagram (NFD) and the lower level is a mixed equilibrium simulation-based dynamic traffic assignment model (SBDTA) considering different combinations of…
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Taxonomy
MethodsEmirates Airlines Office in Dubai
