The present work investigates surrogate model-based optimization for
real-time curbside traffic management operations. An optimization problem is
formulated to minimize the congestion on roadway segments caused by vehicles
stopping on the segment (e.g., ride-hailing or delivery operations) and
implemented in a model predictive control framework. A hybrid simulation
approach where main traffic flows interact with individually modeled stopping
vehicles is adopted. Due to its non-linearity, the optimization problem is
coupled with a meta-heuristic. However, because simulations are time expensive
and hence unsuitable for real-time control, a trained surrogate model that
takes the decision variables as inputs and approximates the objective function
is employed to replace the simulation within the meta-heuristic algorithm.
Several modeling techniques (i.e., linear regression, polynomial regression,
neural network, radial basis network, regression tree ensemble, and Gaussian
process regression) are compared based on their accuracy in reproducing
solutions to the problem and computational tractability for real-time control
under different configurations of simulation parameters. It is found that
Gaussian process regression is the most suited for use as a surrogate model for
the given problem. Finally, a realistic application with multiple ride-hailing
vehicle operations is presented. The proposed approach for controlling the stop
positions of vehicles is able to achieve an improvement of 20.65% over the
uncontrolled case. The example shows the potential of the proposed approach in
reducing the negative impacts of stopping vehicles and favorable computational
properties