Reference
J. Jeschke and B. De Schutter, "Parametrized model predictive control
approaches for urban traffic networks,"
Proceedings of the
16th IFAC Symposium on Control in Transportation Systems (CTS 2021),
Lille, France, pp. 284-291, June 2021.
Abstract
Model Predictive Control (MPC) has shown promising results in the control of
urban traffic networks, but unfortunately it has one major drawback. The, often
nonlinear, optimization that has to be performed at every control time step is
computationally too complex to use MPC controllers for real-time
implementations (i.e. when the online optimization is performed within the
control time interval of the controlled network). This paper proposes an
effective parametrized MPC control approach to lower the computational
complexity of the MPC controller. Two parametrized control laws are proposed
that can be used in the parametrized MPC framework, one based on the prediction
model of the MPC controllers, and another is constructed using Grammatical
Evolution (GE). The performance and computational complexity of the
parametrized MPC approach is compared to a conventional MPC controller by
performing an extensive simulation-based case study. The simulation results
show that for the given case study the parametrized MPC approach is real-time
implementable while the performance decreases with less than 3% with respect to
the conventional MPC controller.
Publisher page
Downloads
BibTeX
@inproceedings{JesDeS:21-008,
author = {Jeschke, Joost and De Schutter, Bart},
title = {Parametrized Model Predictive Control Approaches for Urban
Traffic Networks},
booktitle = {Proceedings of the 16th IFAC Symposium on Control in
Transportation Systems (CTS 2021)},
address = {Lille, France},
pages = {284--291},
month = jun,
year = {2021}
}