A strategic planning model for urban transportation analysis is presented. This model is based on the incorporation and representation of the land use-transportation system interaction under a spatial-temporal approach to forecast travel demand within urban areas. This conception becomes possible due to the integration of Neural Networks (NN), Geographical Information Systems (GIS) and Remote Sensing (RS). A case study in Boston Metropolitan Area was conducted to verify the efficiency of the model and evaluate the best NN structure and also changes in the hidden and output layers were simulated. A recognition rate of 94% was reached expressing the successful definition of the NN. It does mean that the integration of techniques used in this ...
Land use activity is a major issue and challenge for town and country planners. Modelling and managi...
ABSTRACT: Urban Expansion Model (UEM) was adapted to simulate urbanization which implements Geospati...
A fundamental problem of interest to policy makers, urban planners, and other stakeholders involved ...
A strategic planning model for urban transportation analysis is presented. This model is based on th...
This paper describes an application of Neural Networks in the development of a travel forecast mode...
A formulation of travel forecast model based on geographical–spatial data of urban areas is presente...
We describe a Neural-Geo Temporal Model (NGTM) for urban travel demand generation modelling. NGTM co...
Abstract: This study examines the value of utilizing neural net modeling for issues relating to opti...
The modeling of dynamic urban systems has been of interest to spatial analysts for the better part o...
A considerable amount of research efforts have been dedicated to conceive forecasting models for pre...
The case study presents a framework for integrating artificial neural networks and geographical info...
An important requirement of a rational policy for provision of outdoor recreation opportunities is s...
One of the serious problems faced by the Brazilian municipalities is the scarcity of resources for ...
The volume aims to make a scientific contribution to the GeoComputation approach in urban planning, ...
This study evaluates the effectiveness of an artificial neural network (ANN) to predict locations of...
Land use activity is a major issue and challenge for town and country planners. Modelling and managi...
ABSTRACT: Urban Expansion Model (UEM) was adapted to simulate urbanization which implements Geospati...
A fundamental problem of interest to policy makers, urban planners, and other stakeholders involved ...
A strategic planning model for urban transportation analysis is presented. This model is based on th...
This paper describes an application of Neural Networks in the development of a travel forecast mode...
A formulation of travel forecast model based on geographical–spatial data of urban areas is presente...
We describe a Neural-Geo Temporal Model (NGTM) for urban travel demand generation modelling. NGTM co...
Abstract: This study examines the value of utilizing neural net modeling for issues relating to opti...
The modeling of dynamic urban systems has been of interest to spatial analysts for the better part o...
A considerable amount of research efforts have been dedicated to conceive forecasting models for pre...
The case study presents a framework for integrating artificial neural networks and geographical info...
An important requirement of a rational policy for provision of outdoor recreation opportunities is s...
One of the serious problems faced by the Brazilian municipalities is the scarcity of resources for ...
The volume aims to make a scientific contribution to the GeoComputation approach in urban planning, ...
This study evaluates the effectiveness of an artificial neural network (ANN) to predict locations of...
Land use activity is a major issue and challenge for town and country planners. Modelling and managi...
ABSTRACT: Urban Expansion Model (UEM) was adapted to simulate urbanization which implements Geospati...
A fundamental problem of interest to policy makers, urban planners, and other stakeholders involved ...