Multi-scale Perimeter Control Approach in a Connected-Vehicle Environment
Kaidi Yang, Nan Zheng, Monica Menendez

TL;DR
This paper introduces a multi-scale control approach integrating local perimeter intersection management with network-level traffic optimization using connected vehicle data, employing MPC and stochastic modeling for robustness.
Contribution
It develops a novel multi-scale control framework combining local and network-level control using MPC, incorporating connected vehicle data and stochastic modeling for the first time.
Findings
The proposed controller maintains the network around the desired MFD state.
It minimizes total delay at the perimeter effectively.
The stochastic MPC scheme demonstrates robustness with low CV penetration rates.
Abstract
This paper proposes a novel approach to integrate optimal control of perimeter intersections (i.e. to minimize local delay) into the perimeter control scheme (i.e. to optimize traffic performance at the network level). This is a complex control problem rarely explored in the literature. In particular, modeling the interaction between the network level control and the local level control has not been fully considered. Utilizing the Macroscopic Fundamental Diagram (MFD) as the traffic performance indicator, we formulate a dynamic system model, and design a Model Predictive Control (MPC) based controller coupling two competing control objectives and optimizing the performance at the local and the network level as a whole. To solve this highly non-linear optimization problem, we employ an approximation framework, enabling the optimal solution of this large-scale problem to be feasible and…
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