Reference:
A. Jamshidnejad,
I. Papamichail,
M. Papageorgiou, and
B. De Schutter,
"A model-predictive urban traffic control approach with a modified
flow model and endpoint penalties," Proceedings of the 14th IFAC
Symposium on Control in Transportation Systems (CTS 2016),
Istanbul, Turkey, pp. 147-152, May 2016.
Abstract:
Nowadays, congestion caused by traffic in urban areas is considered as
a major problem. In order to make the best use of the existing road
capacity, traffic-responsive control systems, including
model-predictive controllers, are excellent choices. A
model-predictive controller can minimize a cost function along a given
time horizon. We propose a model-predictive control system that aims
to reduce the congestion, and uses an internal flow model, which is
our proposed modified version of the S-model. In the formulation of
the objective function for the controller, we take into account the
effect of those vehicles that remain in the network at the end of the
prediction horizon until the network is completely evacuated. We
formulate this effect as endpoint penalties for the MPC optimization
problem. Finally, we will apply the designed controller to an urban
traffic network and compare two scenarios, i.e., the fixed-time
control case and the model-predictive control approach with the
endpoint penalties proposed in this paper. The results prove the
excellent performance of the model-predictive controller compared with
the fixed-time controller.