A robust optimization approach for dynamic traffic signal control with emission considerations
Ke Han, Hongcheng Liu, Vikash Gayah, Terry L. Friesz, Tao Yao

TL;DR
This paper develops a robust optimization-based mixed integer linear programming approach for dynamic traffic signal control that explicitly incorporates emission considerations, using a macroscopic emission-occupancy relationship and traffic flow modeling.
Contribution
It introduces a novel MILP reformulation of the LWR-Emission problem leveraging robust optimization and a link transmission model to efficiently handle emission constraints and traffic dynamics.
Findings
The MILP effectively captures vehicle spillback and reduces traffic holding.
The approach minimizes travel delay while considering emissions.
Robust optimization manages uncertainties in emission-occupancy relationships.
Abstract
We consider an analytical signal control problem on a signalized network whose traffic flow dynamic is described by the Lighthill-Whitham-Richards (LWR) model (Lighthill and Whitham, 1955; Richards, 1956). This problem explicitly addresses traffic-derived emissions as side constraints. We seek to tackle this problem using a mixed integer mathematical programming approach. Such a class of problems, which we call LWR-Emission (LWR-E), has been analyzed before to certain extent. Since mixed integer programs are practically efficient to solve in many cases (Bertsimas et al., 2011b), the mere fact of having integer variables is not the most significant challenge to solving LWR-E problems; rather, it is the presence of the potentially nonlinear and nonconvex emission-related constraints/objectives that render the program computationally expensive. To address this computational challenge, we…
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