Reference:
M. Hajiahmadi,
B. De Schutter, and
H. Hellendoorn,
"Model predictive traffic control: A mixed-logical dynamic approach
based on the link transmission model," Proceedings of the 13th
IFAC Symposium on Control in Transportation Systems (CTS'2012),
Sofia, Bulgaria, pp. 144-149, Sept. 2012.
Abstract:
In this paper, model predictive control of traffic networks using
first-order macroscopic link transmission model (LTM) is considered.
The LTM model provides fast yet accurate predictions for traffic
networks compared to other models. In order to use this model for
traffic control, it is extended to include ramp metering. Using the
extended LTM model as prediction model in a model predictive control
framework, one can determine optimal control signals for metered
on-ramps. However, the optimization problem is still nonlinear and
nonconvex, and in general it is not tractable to find its global
optimum, as global or multi-start local optimization techniques take
considerable time. Therefore, in this paper the extended LTM model is
transformed into a mixed logical dynamic model. The resulting
optimization problem can be recast as a mixed integer linear program
(MILP) that can be solved much more efficiently than the nonlinear
optimization problem, and it allows to determine a global optimum
efficiently. A simple case study is selected, first to test the
modeling performance of the extended LTM and next to compare the
control performance of the MILP approach and the original nonlinear
formulation in terms of computational efficiency and total cost.