We extend a `surrogate problem' approach that is developed for a class of stochastic discrete optimization problems so as to tackle the global signal settings and traffic assignment combined problem. We compare a stochastic method based on the surrogate approach, called Surrogate Method (SM), with a Projected Gradient Algorithm (PGA), which uses the Armijo rule for the step size estimation routine. Numerical experiments conducted on a test network show that the surrogate method converges to a really small area and it finds much more efficient solutions
The increasing vehicular traffic on urban road in network demands effective measure of traffic contr...
Stochastic global optimization methods are methods for solving a global optimization prob-lem incorp...
We evaluate the performance of a numerical method for global optimization of expensive functions. Th...
We extend a `surrogate problem' approach that is developed for a class of stochastic discrete optim...
In this paper, we discuss different procedures for solving the global signal settings and traffic as...
The paper provides a comprehensive discussion about the global signal settings problem, subject to t...
In this paper we extend a stochastic discrete optimization algorithm so as to tackle the signal sett...
AbstractThe Traffic Signal Synchronization is a traffic engineering technique of matching the green ...
We consider stochastic discrete optimization problems where the decision variables are non-negative ...
In this paper models and algorithms for the optimization of signal settings on urban networks are pr...
Sequential surrogate model-based global optimization algorithms, such as super-EGO, have been develo...
Sequential surrogate model-based global optimization algorithms, such as super-EGO, have been develo...
One method to solve expensive black-box optimization problems is to use a surrogate model that appro...
A stochastic method for global optimization is described and evaluated. The method involves a combin...
The increasing vehicular traffic on urban road in network demands effective measure of traffic contr...
Stochastic global optimization methods are methods for solving a global optimization prob-lem incorp...
We evaluate the performance of a numerical method for global optimization of expensive functions. Th...
We extend a `surrogate problem' approach that is developed for a class of stochastic discrete optim...
In this paper, we discuss different procedures for solving the global signal settings and traffic as...
The paper provides a comprehensive discussion about the global signal settings problem, subject to t...
In this paper we extend a stochastic discrete optimization algorithm so as to tackle the signal sett...
AbstractThe Traffic Signal Synchronization is a traffic engineering technique of matching the green ...
We consider stochastic discrete optimization problems where the decision variables are non-negative ...
In this paper models and algorithms for the optimization of signal settings on urban networks are pr...
Sequential surrogate model-based global optimization algorithms, such as super-EGO, have been develo...
Sequential surrogate model-based global optimization algorithms, such as super-EGO, have been develo...
One method to solve expensive black-box optimization problems is to use a surrogate model that appro...
A stochastic method for global optimization is described and evaluated. The method involves a combin...
The increasing vehicular traffic on urban road in network demands effective measure of traffic contr...
Stochastic global optimization methods are methods for solving a global optimization prob-lem incorp...
We evaluate the performance of a numerical method for global optimization of expensive functions. Th...