A package with tools for climate data geoprocessing.
This package is part of the climate4R bundle, which is formed by the core packages loadeR
, transformeR
, downscaleR
and visualizeR
.
The recommended installation procedure is to use the install_github
command from the devtools R package (see the installation info in the wiki):
devtools::install_github(c("SantanderMetGroup/transformeR", "SantanderMetGroup/geoprocessoR"))
NOTE: Note that transformeR
is a dependency for geoprocessoR
. It also requires rgdal: install.packages("rgdal")
. Note that transformeR
also includes illustrative datasets for the climate4R
framework.
EXAMPLE: The following code shows an example of climate4R
data projection for gridded data (see the Wiki for more worked examples).
library(transformeR)
library(geoprocesoR)
data("EOBS_Iberia_pr")
plot(get2DmatCoordinates(EOBS_Iberia_pr))
grid <- projectGrid(EOBS_Iberia_pr,
original.CRS = "+proj=longlat +datum=WGS84 +ellps=WGS84 +towgs84=0,0,0",
new.CRS = "+init=epsg:28992")
plot(get2DmatCoordinates(grid))
# Use visualizeR to plot the mean climatology of the original and projected grids:
# devtools::install_github("SantanderMetGroup/visualizeR")
library(visualizeR)
spatialPlot(climatology(EOBS_Iberia_pr))
spatialPlot(climatology(grid))
References and further information:
Iturbide et al. (2019) The R-based climate4R open framework for Reproducible Climate Data Access and Post-processing. Environmental Modelling and Software 111: 42-54. https://doi.org/10.1016/j.envsoft.2018.09.009.
Cofiño et al. (2017) The ECOMS User Data Gateway: Towards seasonal forecast data provision and research reproducibility in the era of Climate Services. Climate Services, http://dx.doi.org/10.1016/j.cliser.2017.07.001.