Near surface air temperature (NSAT) is a primary descriptor of terrestrial environmental conditions. In recent decades, many efforts have been made to develop various methods for obtaining spatially continuous NSAT from gauge or station observations. This study compared three spatial interpolation (i.e., Kriging, Spline, and Inversion Distance Weighting (IDW)) and two regression analysis (i.e., Multiple Linear Regression (MLR) and Geographically Weighted Regression (GWR)) models for predicting monthly minimum, mean, and maximum NSAT in China, a domain with a large area, complex topography, and highly variable station density. This was conducted for a period of 12 months of 2010. The accuracy of the GWR model is better than the MLR model wit...
The data are monthly average near-surface temperatures across China from 1979 to 2017. The spatial r...
Near-land surface air temperature (NLSAT) is an important meteorological and climatic parameter wide...
Estimating the spatial distribution of precipitation is an important and challenging task in hydrolo...
Air temperature is one of the major variables required for agroclimatic classifications. For spatial...
We have found that a spatial interpolation of mean annual temperature (MAT) in China can be accompli...
An accurate gridded climatological temperature data-set can be a reliable basis for studying the iss...
This paper analyzes the validity of temperature maps obtained by means of single and mixed interpola...
Spatial modeling of temperature is of crucial importance for agriculture, industry and ecology. Thi...
Air temperature near the surface is an important controlling parameter for land surface processes, a...
In this thesis, the inverse distance weighting, different kriging methods, ordinary least squares an...
The monthly air temperature in 1153 stations and precipitation in 1202 stations in China and neighbo...
Climate research relies heavily on good quality instrumental data; for modeling efforts gridded data...
Six machine-learning approaches, including multivariate linear regression (MLR), gradient boosting d...
High-resolution meteorological data products are crucial for agrometeorological studies. Here, we st...
[1] Land surface hydrological modeling is sensitive to near-surface air temperature, which is especi...
The data are monthly average near-surface temperatures across China from 1979 to 2017. The spatial r...
Near-land surface air temperature (NLSAT) is an important meteorological and climatic parameter wide...
Estimating the spatial distribution of precipitation is an important and challenging task in hydrolo...
Air temperature is one of the major variables required for agroclimatic classifications. For spatial...
We have found that a spatial interpolation of mean annual temperature (MAT) in China can be accompli...
An accurate gridded climatological temperature data-set can be a reliable basis for studying the iss...
This paper analyzes the validity of temperature maps obtained by means of single and mixed interpola...
Spatial modeling of temperature is of crucial importance for agriculture, industry and ecology. Thi...
Air temperature near the surface is an important controlling parameter for land surface processes, a...
In this thesis, the inverse distance weighting, different kriging methods, ordinary least squares an...
The monthly air temperature in 1153 stations and precipitation in 1202 stations in China and neighbo...
Climate research relies heavily on good quality instrumental data; for modeling efforts gridded data...
Six machine-learning approaches, including multivariate linear regression (MLR), gradient boosting d...
High-resolution meteorological data products are crucial for agrometeorological studies. Here, we st...
[1] Land surface hydrological modeling is sensitive to near-surface air temperature, which is especi...
The data are monthly average near-surface temperatures across China from 1979 to 2017. The spatial r...
Near-land surface air temperature (NLSAT) is an important meteorological and climatic parameter wide...
Estimating the spatial distribution of precipitation is an important and challenging task in hydrolo...