Land cover change (LCC) studies are increasingly using deep learning (DL) modeling techniques. Past studies have leveraged temporal or spatiotemporal sequences of historical LC data to forecast changes with DL models. However, these studies do not adequately assess the association between neighborhood size and DL model capability to forecast LCCs, where neighborhood size refers to the spatial extent captured by each data sample. The objectives of this research study were to: (1) evaluate the effect of neighborhood size on the capacity of DL models to forecast LCCs, specifically Temporal Convolutional Networks (TCN) and Convolutional Neural Networks (CNN-TCN), and (2) assess the effect of auxiliary spatial variables on model capacity to fore...
Urbanization is a rapid global trend, leading to consequences such as urban heat islands and local f...
The spatial distribution of soil organic carbon (SOC) serves as critical geographic information for ...
Gentrification is multidimensional and complex, but there is general agreement that visible changes ...
An open problem impeding the use of deep learning (DL) models for forecasting land cover (LC) change...
Land cover change (LCC) is typically characterized by infrequent changes over space and time. Data-d...
Land cover change (LCC) can be viewed as dynamic complex systems which require relevant relationship...
Land use and land cover change (LUCC) modeling has continuously been a major research theme in the f...
The ability to accurately classify land cover in periods before appropriate training and validation ...
The process of land use change (LUC) results from human interactions with the natural environment to...
Land use change (LUC) is a dynamic process that significantly affects the environment, and various a...
The Land Transformation Model (LTM), which couples geographic information systems (GIS) with artific...
Most models of land cover change predict change using physical and socio-economic factors in raster ...
We parameterized neural net-based models for the Detroit and Twin Cities metropolitan areas in the U...
In the southeastern US, Atlanta is always the focus of attention, despite the rapid expansion of sma...
This study evaluates the effectiveness of an artificial neural network (ANN) to predict locations of...
Urbanization is a rapid global trend, leading to consequences such as urban heat islands and local f...
The spatial distribution of soil organic carbon (SOC) serves as critical geographic information for ...
Gentrification is multidimensional and complex, but there is general agreement that visible changes ...
An open problem impeding the use of deep learning (DL) models for forecasting land cover (LC) change...
Land cover change (LCC) is typically characterized by infrequent changes over space and time. Data-d...
Land cover change (LCC) can be viewed as dynamic complex systems which require relevant relationship...
Land use and land cover change (LUCC) modeling has continuously been a major research theme in the f...
The ability to accurately classify land cover in periods before appropriate training and validation ...
The process of land use change (LUC) results from human interactions with the natural environment to...
Land use change (LUC) is a dynamic process that significantly affects the environment, and various a...
The Land Transformation Model (LTM), which couples geographic information systems (GIS) with artific...
Most models of land cover change predict change using physical and socio-economic factors in raster ...
We parameterized neural net-based models for the Detroit and Twin Cities metropolitan areas in the U...
In the southeastern US, Atlanta is always the focus of attention, despite the rapid expansion of sma...
This study evaluates the effectiveness of an artificial neural network (ANN) to predict locations of...
Urbanization is a rapid global trend, leading to consequences such as urban heat islands and local f...
The spatial distribution of soil organic carbon (SOC) serves as critical geographic information for ...
Gentrification is multidimensional and complex, but there is general agreement that visible changes ...