Grammatical-Evolution-based parameterized Model Predictive Control for urban traffic networks

Journal Article (2023)
Author(s)

Joost Jeschke (CGI Nederland B.V, TU Delft - Team Bart De Schutter)

Dingshan Sun (TU Delft - Team Bart De Schutter)

Anahita Jamshidnejad (TU Delft - Control & Operations, TU Delft - Control & Simulation)

B.H.K. de Schutter (TU Delft - Delft Center for Systems and Control)

Research Group
Team Bart De Schutter
Copyright
© 2023 J.M. Jeschke, D. Sun, A. Jamshidnejad, B.H.K. De Schutter
DOI related publication
https://doi.org/10.1016/j.conengprac.2022.105431
More Info
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Publication Year
2023
Language
English
Copyright
© 2023 J.M. Jeschke, D. Sun, A. Jamshidnejad, B.H.K. De Schutter
Research Group
Team Bart De Schutter
Volume number
132
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Abstract

While Model Predictive Control (MPC) is a promising approach for network-wide control of urban traffic, the computational complexity of the, often nonlinear, online optimization procedure is too high for real-time implementations. In order to make MPC computationally efficient, this paper introduces a parameterized MPC (PMPC) approach for urban traffic networks that uses Grammatical Evolution to construct continuous parameterized control laws using an effective simulation-based training framework. Furthermore, a projection-based method is proposed to remove the nonlinear constraints that are imposed on the parameters of the parameterized control laws and to guarantee the feasibility of the solution of the MPC optimization problem. The performance and computational efficiency of the constructed parameterized control laws are compared to those of a conventional MPC controller in an extensive simulation-based case study. The results show that the parameterized control laws, which are automatically constructed using Grammatical Evolution, decrease the computational complexity of the online optimization problem by more than 80% with a decrease in performance by less than 10%.