Set of generalised tools for the flexible computation of climate related indicators defined by the user. Each method represents a specific mathematical approach which is combined with the possibility to select an arbitrary time period to define the indicator. This enables a wide range of possibilities to tailor the most suitable indicator for each particular climate service application (agriculture, food security, energy, water management…). This package is intended for sub-seasonal, seasonal and decadal climate predictions, but its methods are also applicable to other time-scales, provided the dimensional structure of the input is maintained. Additionally, the outputs of the functions in this package are compatible with CSTools.
Pérez-Zanón, N., Ho, A. Chou, C., Lledó, L., Marcos-Matamoros, R., Rifà, E. and González-Reviriego, N. (2023). CSIndicators: Get tailored climate indicators for applications in your sector. Climate Services. https://doi.org/10.1016/j.cliser.2023.100393
For details in the methodologies see:
Pérez-Zanón, N., Caron, L.-P., Terzago, S., Van Schaeybroeck, B., Lledó, L., Manubens, N., Roulin, E., Alvarez-Castro, M. C., Batté, L., Bretonnière, P.-A., Corti, S., Delgado-Torres, C., Domínguez, M., Fabiano, F., Giuntoli, I., von Hardenberg, J., Sánchez-García, E., Torralba, V., and Verfaillie, D.: Climate Services Toolbox (CSTools) v4.0: from climate forecasts to climate forecast information, Geosci. Model Dev., 15, 6115–6142, https://doi.org/10.5194/gmd-15-6115-2022, 2022.
Chou, C., R. Marcos-Matamoros, L. Palma Garcia, N. Pérez-Zanón, M. Teixeira, S. Silva, N. Fontes, A. Graça, A. Dell’Aquila, S. Calmanti and N. González-Reviriego (2023). Advanced seasonal predictions for vine management based on bioclimatic indicators tailored to the wine sector. Climate Services, 30, 100343, https://doi.org/10.1016/j.cliser.2023.100343.
Lledó, Ll., V. Torralba, A. Soret, J. Ramon and F.J. Doblas-Reyes (2019). Seasonal forecasts of wind power generation. Renewable Energy, 143, 91-100, https://doi.org/10.1016/j.renene.2019.04.135.
You can then install the public released version of CSIndicators from CRAN:
Or the development version from the GitLab repository:
# install.packages("devtools")
devtools::install_git("https://earth.bsc.es/gitlab/es/csindicators.git")
To learn how to use the package see:
Functions documentation can be found here.
Function | CST version | Indicators |
---|---|---|
PeriodMean | CST_PeriodMean | GST, SprTX, DTR, BIO1, BIO2 |
PeriodMax | CST_PeriodMax | BIO5, BIO13 |
PeriodMin | PeriodMin | BIO6, BIO14 |
PeriodVariance | CST_PeriodVariance | BIO4, BIO15 |
PeriodAccumulation | CST_PeriodAccumulation | SprR, HarR, PRCPTOT, BIO16, … |
PeriodPET | CST_PeriodPET | PET, SPEI |
PeriodStandardization | CST_PeriodStandardization | SPEI, SPI |
AccumulationExceedingThreshold | CST_AccumulationExceedingThreshold | GDD, R95pTOT, R99pTOT |
TotalTimeExceedingThreshold | CST_TotalTimeExceedingThreshold | SU35, SU, FD, ID, TR, R10mm, Rnmm |
TotalSpellTimeExceedingThreshold | CST_TotalSpellTimeExceedingThreshold | WSDI, CSDI |
WindCapacityFactor | CST_WindCapacityFactor | Wind Capacity Factor |
WindPowerDensity | CST_WindPowerDensity | Wind Power Density |
Auxiliar function | CST version |
---|---|
AbsToProbs | CST_AbsToProbs |
QThreshold | CST_QThreshold |
Threshold | CST_Threshold |
MergeRefToExp | CST_MergeRefToExp |
SelectPeriodOnData | CST_SelectPeriodOnData |
SelectPeriodOnDates |
Find the current status of each function in this link.
Note I: the CST version uses ‘s2dv_cube’ objects as inputs and outputs while the former version uses multidimensional arrays with named dimensions as inputs and outputs.
Note II: All functions computing indicators allows to subset a time period if required, although this temporal subsetting can also be done with functions
SelectPeriodOnData
in a separated step.
This package is designed to be compatible with other R packages such as CSTools through a common object: the s2dv_cube
, used in functions with the prefix CST.
An s2dv_cube
is an object to store ordered multidimensional array with named dimensions, specific coordinates and stored metadata. As an example, this is how it looks like (see CSTools::lonlat_temp_st$exp
):
's2dv_cube'
Data [ 279.99, 280.34, 279.45, 281.99, 280.92, ... ]
Dimensions ( dataset = 1, var = 1, member = 15, sdate = 6, ftime = 3, lat = 22, lon = 53 )
Coordinates
* dataset : dat1
* var : tas
member : 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15
* sdate : 20001101, 20011101, 20021101, 20031101, 20041101, 20051101
ftime : 1, 2, 3
* lat : 48, 47, 46, 45, 44, 43, 42, 41, 40, 39, 38, 37, 36, 35, 34, ...
* lon : 0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, ...
Attributes
Dates : 2000-11-01 2001-11-01 2002-11-01 2003-11-01 2004-11-01 ...
varName : tas
metadata :
lat
units : degrees_north
long name : latitude
lon
units : degrees_east
long name : longitude
ftime
units : hours since 2000-11-01 00:00:00
tas
units : K
long name : 2 metre temperature
Datasets : dat1
when : 2023-10-02 10:11:06
source_files : "/ecmwf/system5c3s/monthly_mean/tas_f6h/tas_20001101.nc" ...
load_parameters :
( dat1 ) : dataset = dat1, var = tas, sdate = 20001101 ...
Note: The current
s2dv_cube
object (CSIndicators > 0.0.2 and CSTools > 4.1.1) differs from the original object used in the previous versions of the packages. More information about thes2dv_cube
object class can be found here: description of the s2dv_cube object structure document.
Note: Remember to work with multidimensionals arrays with named dimensions when possible and use multiApply.
To add a new function in this R package, follow this considerations:
Function()
included in file Function.R)devtools::document()
in your R terminal to automatically generate the Function.Rd file