Machine learning (ML) is at the forefront of land-use change modeling. Due to numerous available ML approaches, the model choice is complex and usually based on ad hoc decisions, though informed through a few comparative studies that considered a limited number of models. This study contributes a comprehensive comparison of 38 ML models to examine land consumption rates (LCR) (i.e. the transition of landscapes to built-up areas). We modeled LCR for 2009–2015 in Bavaria, Germany, and predicted rates for 2015–2021 at a municipality level. To assess the performance of each approach, we measured the mean absolute error (MAE), the root-mean-square error (RMSE), and the coefficient of determination (R2) using crossvalidation. All algorithms consi...
Land change modeling supports analyses, assessments, and decisions concerning land management by pro...
Investment decisions in renewable energies are known to be influenced by many diverse drivers, e.g. ...
Land-use change can have local-to-global environment impacts such as loss of biodiversity and climat...
Machine learning (ML) is at the forefront of land-use change modeling. Due to numerous available ML ...
Machine learning (ML) is at the forefront of land-use change modeling. Due to numerous available ML ...
The representation of land use change (LUC) is often achieved by using data-driven methods that incl...
esign and development of a practical land use change (LUC) model require both a high prediction accu...
This paper compares two land change models in terms of appropriateness for various applications and ...
Germany is experiencing extensive land consumption. This necessitates local models to understand act...
Regions with high tourism density are very sensitive to human activities. Ensuring sustainability by...
Efficient land-use is critical to support human activities by building up the corresponding eco-syst...
It is vital for farmers to know if their land is suitable for the crops that they plan to grow. An i...
This paper applies methods of multiple resolution map comparison to quantify characteristics for 13 ...
Land use change models enable the exploration of the drivers and consequences of land use dynamics. ...
Vegetation maps are models of the real vegetation patterns and are considered important tools in con...
Land change modeling supports analyses, assessments, and decisions concerning land management by pro...
Investment decisions in renewable energies are known to be influenced by many diverse drivers, e.g. ...
Land-use change can have local-to-global environment impacts such as loss of biodiversity and climat...
Machine learning (ML) is at the forefront of land-use change modeling. Due to numerous available ML ...
Machine learning (ML) is at the forefront of land-use change modeling. Due to numerous available ML ...
The representation of land use change (LUC) is often achieved by using data-driven methods that incl...
esign and development of a practical land use change (LUC) model require both a high prediction accu...
This paper compares two land change models in terms of appropriateness for various applications and ...
Germany is experiencing extensive land consumption. This necessitates local models to understand act...
Regions with high tourism density are very sensitive to human activities. Ensuring sustainability by...
Efficient land-use is critical to support human activities by building up the corresponding eco-syst...
It is vital for farmers to know if their land is suitable for the crops that they plan to grow. An i...
This paper applies methods of multiple resolution map comparison to quantify characteristics for 13 ...
Land use change models enable the exploration of the drivers and consequences of land use dynamics. ...
Vegetation maps are models of the real vegetation patterns and are considered important tools in con...
Land change modeling supports analyses, assessments, and decisions concerning land management by pro...
Investment decisions in renewable energies are known to be influenced by many diverse drivers, e.g. ...
Land-use change can have local-to-global environment impacts such as loss of biodiversity and climat...