This paper addresses large-scale urban transportation optimization problems with time-dependent continuous decision variables, a stochastic simulation-based objective function, and general analytical differentiable constraints. We propose a metamodel approach to address, in a computationally efficient way, these large-scale dynamic simulation-based optimization problems. We formulate an analytical dynamic network model that is used as part of the metamodel. The network model formulation combines ideas from transient queueing theory and traffic flow theory. The model is formulated as a system of equations. The model complexity is linear in the number of road links and is independent of the link space capacities. This makes it a scalable mode...
The paper investigates the efficiency of a new signal control methodology, which offers a computatio...
AbstractThis paper studies a fixed-time signal control problem for a highly congested urban network ...
Summarization: In this paper, we study the problem of optimizing (fine-tuning) the design parameters...
Thesis: Ph. D. in Transportation, Massachusetts Institute of Technology, Department of Civil and Env...
This paper proposes a simulation-based optimization (SO) method that enables the efficient use of co...
This paper proposes a simulation-based optimization (SO) method that enables the efficient use of co...
Microscopic urban traffic simulators embed numerous behavioral models that describe individual drive...
Microscopic simulators embed numerous traffic models that make them detailed and realistic tools app...
Thesis: S.M. in Transportation, Massachusetts Institute of Technology, Department of Civil and Envir...
Transportation agencies often resort to the use of traffic simulation models to evaluate the impacts...
This paper studies a fixed-time signal control problem for a highly congested urban network with mul...
Stochastic traffic and mobility simulation models are popular tools for modeling urban transportatio...
In this paper, we present and analyze a new aggregate model of urban traffic. The main challenge in ...
In this talk, we propose a general model for solving the Transportation Network Design Problem (TNDP...
AbstractRegional traffic signal optimization has been always a hot research field. The study of sign...
The paper investigates the efficiency of a new signal control methodology, which offers a computatio...
AbstractThis paper studies a fixed-time signal control problem for a highly congested urban network ...
Summarization: In this paper, we study the problem of optimizing (fine-tuning) the design parameters...
Thesis: Ph. D. in Transportation, Massachusetts Institute of Technology, Department of Civil and Env...
This paper proposes a simulation-based optimization (SO) method that enables the efficient use of co...
This paper proposes a simulation-based optimization (SO) method that enables the efficient use of co...
Microscopic urban traffic simulators embed numerous behavioral models that describe individual drive...
Microscopic simulators embed numerous traffic models that make them detailed and realistic tools app...
Thesis: S.M. in Transportation, Massachusetts Institute of Technology, Department of Civil and Envir...
Transportation agencies often resort to the use of traffic simulation models to evaluate the impacts...
This paper studies a fixed-time signal control problem for a highly congested urban network with mul...
Stochastic traffic and mobility simulation models are popular tools for modeling urban transportatio...
In this paper, we present and analyze a new aggregate model of urban traffic. The main challenge in ...
In this talk, we propose a general model for solving the Transportation Network Design Problem (TNDP...
AbstractRegional traffic signal optimization has been always a hot research field. The study of sign...
The paper investigates the efficiency of a new signal control methodology, which offers a computatio...
AbstractThis paper studies a fixed-time signal control problem for a highly congested urban network ...
Summarization: In this paper, we study the problem of optimizing (fine-tuning) the design parameters...