We parameterized neural net-based models for the Detroit and Twin Cities metropolitan areas in the US and attempted to test whether they were transferable across both metropolitan areas. Three different types of models were developed. First, we trained and tested the neural nets within each region and compared them against observed change. Second, we used the training weights from one area and applied them to the other. Third, we selected a small subset (,1%) of the Twin Cities area where a lot of urban change occurred. Four model performance metrics are reported: (1) Kappa; (2) the scale which correct and paired omission/commission errors exceed 50%; (3) landscape pattern metrics; and (4) percentage of cells in agreement between model simu...
A key indicator of urban change is construction, demolition, and renovation. Although these developm...
Complexity of urban systems necessitates the consideration of interdependency among various factors ...
Can we improve the modeling of urban land surface processes with machine learning (ML)? A prior comp...
This study evaluates the effectiveness of an artificial neural network (ANN) to predict locations of...
Urbanization is an important issue concerning diverse scientific and policy communities. Computation...
The use of an appropriate relationship model is critical for reliable prediction of future urban gro...
The modeling of dynamic urban systems has been of interest to spatial analysts for the better part o...
The majority of cities are rapidly growing. This makes the monitoring and modeling of urban change’s...
Land cover change (LCC) studies are increasingly using deep learning (DL) modeling techniques. Past ...
The impact of an urban growth boundary (UGB) on land development in Knox County, TN is estimated via...
Abstract: This study examines the value of utilizing neural net modeling for issues relating to opti...
The Land Transformation Model (LTM), which couples geographic information systems (GIS) with artific...
It is widely accepted that the spatial pattern of settlements is a crucial factor affecting quality ...
There have been several studies advocating the need for, and the feasibility of, using advanced tech...
Urban areas have been expanded throughout the globe. Monitoring and modelling urban growth have beco...
A key indicator of urban change is construction, demolition, and renovation. Although these developm...
Complexity of urban systems necessitates the consideration of interdependency among various factors ...
Can we improve the modeling of urban land surface processes with machine learning (ML)? A prior comp...
This study evaluates the effectiveness of an artificial neural network (ANN) to predict locations of...
Urbanization is an important issue concerning diverse scientific and policy communities. Computation...
The use of an appropriate relationship model is critical for reliable prediction of future urban gro...
The modeling of dynamic urban systems has been of interest to spatial analysts for the better part o...
The majority of cities are rapidly growing. This makes the monitoring and modeling of urban change’s...
Land cover change (LCC) studies are increasingly using deep learning (DL) modeling techniques. Past ...
The impact of an urban growth boundary (UGB) on land development in Knox County, TN is estimated via...
Abstract: This study examines the value of utilizing neural net modeling for issues relating to opti...
The Land Transformation Model (LTM), which couples geographic information systems (GIS) with artific...
It is widely accepted that the spatial pattern of settlements is a crucial factor affecting quality ...
There have been several studies advocating the need for, and the feasibility of, using advanced tech...
Urban areas have been expanded throughout the globe. Monitoring and modelling urban growth have beco...
A key indicator of urban change is construction, demolition, and renovation. Although these developm...
Complexity of urban systems necessitates the consideration of interdependency among various factors ...
Can we improve the modeling of urban land surface processes with machine learning (ML)? A prior comp...