Reference:
S. Lin,
B. De Schutter,
Y. Xi, and
H. Hellendoorn,
"Study on fast model predictive controllers for large urban traffic
networks," Proceedings of the 12th International IEEE Conference
on Intelligent Transportation Systems (ITSC 2009), St. Louis,
Missouri, pp. 691-696, Oct. 2009.
Abstract:
Traffic control is both an efficient and effective way to alleviate
the traffic congestion in urban areas. Model Predictive Control (MPC)
has advantages in controlling and coordinating urban traffic networks.
But, the real-time computational complexity of MPC increases
exponentially, when the network scale and the predictive time horizon
grow. To improve the real-time feasibility of MPC, a simplified
macroscopic urban traffic model is developed. Two MPC controllers are
built based on the simplified model and a more detailed model.
Simulation results of the two controllers show that the on-line
optimization time is reduced dramatically by applying the simplified
model, only losing a limited amount of control effectiveness.
Additional techniques, like applying a control time horizon and an
aggregation scheme, are implemented to reduce the computational
complexity further. Simulation results show positive effects of these
techniques.