This paper attempts to deal with traffic Origin Destination (OD) matrix estimation starting from the measurements of flow on road network links. It proposes a different approach from published articles to date, by applying multilayer feed-forward neural networks. Since the relationship between link flow and the related OD matrix is continuous, it is possible to use the well known approximation property of Neural Network models. The method is proposed for a real-time correction of the OD matrix. Two application scenarios were developed: a trial network and an actual rural network were both simulated by a micro-simulator that assigns known OD matrices. A Principal Component Analysis (PCA) technique was used to reduce the amount of variables a...
In many OD estimation methods a linear relationship expressed by the assignment matrix is chosen. Ho...
Intersection movements carry more disaggregate information about origin-destination (O-D) flows than...
The paper discusses the application of Neural Networks to OD estimation and assignment problems. Err...
This paper attempts to deal with traffic Origin Destination (OD) matrix estimation starting from the...
The paper tackles OD matrix estimation starting from the measures of flow on road network links and ...
A method has been developed to estimate Origin Destination (OD) matrices using a neural network (NN)...
A method has been developed to estimate Origin Destination (OD) matrices using a neural network (NN)...
The fundamental challenge of the origin-destination (OD) matrix estimation problem is that it is sev...
Given a road network, a fundamental object of interest is the matrix of origin destination (OD) flow...
For most kind of analyses in the field of traffic planning, there is a need for origin--destination ...
Origin-Destination (OD) trip matrices describe the patterns of traffic behavior across the network a...
Time-dependent Origin-Destination (OD) matrices are an essential input to transportation models. A c...
Origin-Destination matrices (ODM) estimation can benefits of the availability of sample trajectories...
Existing approaches to estimating origin-destination trip matrices (O-D) from traffic counts are oft...
Origin-Destination (OD) trip matrices describe the patterns of traffic behavior across the network a...
In many OD estimation methods a linear relationship expressed by the assignment matrix is chosen. Ho...
Intersection movements carry more disaggregate information about origin-destination (O-D) flows than...
The paper discusses the application of Neural Networks to OD estimation and assignment problems. Err...
This paper attempts to deal with traffic Origin Destination (OD) matrix estimation starting from the...
The paper tackles OD matrix estimation starting from the measures of flow on road network links and ...
A method has been developed to estimate Origin Destination (OD) matrices using a neural network (NN)...
A method has been developed to estimate Origin Destination (OD) matrices using a neural network (NN)...
The fundamental challenge of the origin-destination (OD) matrix estimation problem is that it is sev...
Given a road network, a fundamental object of interest is the matrix of origin destination (OD) flow...
For most kind of analyses in the field of traffic planning, there is a need for origin--destination ...
Origin-Destination (OD) trip matrices describe the patterns of traffic behavior across the network a...
Time-dependent Origin-Destination (OD) matrices are an essential input to transportation models. A c...
Origin-Destination matrices (ODM) estimation can benefits of the availability of sample trajectories...
Existing approaches to estimating origin-destination trip matrices (O-D) from traffic counts are oft...
Origin-Destination (OD) trip matrices describe the patterns of traffic behavior across the network a...
In many OD estimation methods a linear relationship expressed by the assignment matrix is chosen. Ho...
Intersection movements carry more disaggregate information about origin-destination (O-D) flows than...
The paper discusses the application of Neural Networks to OD estimation and assignment problems. Err...