% Generated by roxygen2: do not edit by hand % Please edit documentation in R/CST_BiasCorrection.R \name{BiasCorrection} \alias{BiasCorrection} \title{Bias Correction based on the mean and standard deviation adjustment} \usage{ BiasCorrection( exp, obs, exp_cor = NULL, na.rm = FALSE, memb_dim = "member", sdate_dim = "sdate", ncores = 1 ) } \arguments{ \item{exp}{a multidimensional array with named dimensions containing the seasonal forecast experiment data with at least 'member' and 'sdate' dimensions.} \item{obs}{a multidimensional array with named dimensions containing the observed data with at least 'sdate' dimension.} \item{exp_cor}{a multidimensional array with named dimensions containing the seasonl forecast experiment to be corrected. If it is NULL, the 'exp' forecast will be corrected.} \item{na.rm}{a logical value indicating whether missing values should be stripped before the computation proceeds, by default it is set to FALSE.} \item{memb_dim}{is a character string indicating the name of the member dimension. By default, it is set to 'member'.} \item{sdate_dim}{is a character string indicating the name of the start date dimension. By default, it is set to 'sdate'.} \item{ncores}{is an integer that indicates the number of cores for parallel computations using multiApply function. The default value is one.} } \value{ an object of class \code{s2dv_cube} containing the bias corrected forecasts in the element called \code{$data} with the same dimensions of the experimental data. } \description{ This function applies the simple bias adjustment technique described in Torralba et al. (2017). The adjusted forecasts have an equivalent standard deviation and mean to that of the reference dataset. } \examples{ # Example # Creation of sample s2dverification objects. These are not complete # s2dverification objects though. The Load function returns complete objects. mod1 <- 1 : (1 * 3 * 4 * 5 * 6 * 7) dim(mod1) <- c(dataset = 1, member = 3, sdate = 4, ftime = 5, lat = 6, lon = 7) obs1 <- 1 : (1 * 1 * 4 * 5 * 6 * 7) dim(obs1) <- c(dataset = 1, member = 1, sdate = 4, ftime = 5, lat = 6, lon = 7) a <- BiasCorrection(exp = mod1, obs = obs1) str(a) } \references{ Torralba, V., F.J. Doblas-Reyes, D. MacLeod, I. Christel and M. Davis (2017). Seasonal climate prediction: a new source of information for the management of wind energy resources. Journal of Applied Meteorology and Climatology, 56, 1231-1247, doi:10.1175/JAMC-D-16-0204.1. (CLIM4ENERGY, EUPORIAS, NEWA, RESILIENCE, SPECS) } \author{ VerĂ³nica Torralba, \email{veronica.torralba@bsc.es} }