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context("CSTools::CST_BiasCorrection tests")
##############################################
# dat1
mod <- 1 : (1 * 3 * 4 * 5 * 6 * 7)
obs <- 1 : (1 * 1 * 4 * 5 * 6 * 7)
dim(mod) <- c(dataset = 1, member = 3, sdate = 4, ftime = 5,
lat = 6, lon = 7)
dim(obs) <- c(dataset = 1, member = 1, sdate = 4, ftime = 5,
lat = 6, lon = 7)
lon <- seq(0, 30, 5)
lat <- seq(0, 25, 5)
exp <- list(data = mod, lat = lat, lon = lon)
obs <- list(data = obs, lat = lat, lon = lon)
attr(exp, 'class') <- 's2dv_cube'
attr(obs, 'class') <- 's2dv_cube'
exp1 <- list(data = array(1:20, dim = c(time = 20)))
class(exp1) <- 's2dv_cube'
obs1 <- list(data = array(1:20, dim = c(time = 20)))
class(obs1) <- 's2dv_cube'
exp1_2 <- list(data = array(1:20, dim = c(20)))
class(exp1_2) <- 's2dv_cube'
obs1_2 <- list(data = array(1:20, dim = c(20)))
class(obs1_2) <- 's2dv_cube'
exp_cor1 <- list(data = array(1:20, dim = c(20)))
class(exp_cor1) <- 's2dv_cube'
# dat2
exp2 <- exp
exp2$data[1, 2, 1, 1, 1, 1] <- NA
obs2 <- obs
obs2$data[1, 1, 2, 1, 1, 1] <- NA
# dat3
exp3 <- array(1:6, c(sdate = 3, member = 2))
obs3 <- array(3:6, c(sdate = 3, member = 1))
obs3_2 <- array(3:6, c(sdate = 3))
obs3_3 <- array(3:6, c(sdate = 3, member = 2))
# dat4
exp4 <- array(1:100, dim = c(time = 5, members = 5, lat = 2, lon = 5))
obs4 <- array(1:200, dim = c(time = 5, members = 1, lat = 2, lon = 5))
obs4_1 <- obs4
obs4_1[1,1,1,1] <- NA
# dat5
set.seed(1)
exp5 <- array(rnorm(80), dim = c(member = 2, sdate = 10, lat = 2, dataset = 2))
exp5_1 <- array(rnorm(40), dim = c(member = 2, sdate = 10, lat = 2))
set.seed(2)
obs5 <- array(rnorm(60), dim = c(sdate = 10, lat = 2, dataset = 3))
obs5_1 <- array(rnorm(20), dim = c(sdate = 10, lat = 2))
set.seed(3)
exp_cor5 <- array(rnorm(20), dim = c(member = 2, sdate = 10, lat = 2))
# dat6
set.seed(1)
exp6 <- array(rnorm(20), dim = c(member = 2, sdate = 10))
exp6_1 <- array(exp6, dim = c(member = 2, sdate = 10, dataset = 1))
exp6_2 <- exp6_1
exp6_2[1] <- NA
set.seed(2)
obs6 <- array(rnorm(10), dim = c(member = 1, sdate = 10))
obs6_1 <- array(obs6, dim = c(member = 1, sdate = 10, dataset = 1))
obs6_2 <- obs6_1
obs6_2[c(1, 3)] <- NA
set.seed(3)
exp_cor6 <- array(rnorm(20), dim = c(member = 2, sdate = 10))
##############################################
test_that("1. Input checks", {
# s2dv_cube
CST_BiasCorrection(exp = 1),
paste0("Parameter 'exp' and 'obs' must be of the class 's2dv_cube', ",
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"as output by CSTools::CST_Load.")
)
expect_error(
CST_BiasCorrection(exp = exp, obs = 1),
paste0("Parameter 'exp' and 'obs' must be of the class 's2dv_cube', ",
"as output by CSTools::CST_Load.")
)
expect_error(
CST_BiasCorrection(exp = exp1),
'argument "obs" is missing, with no default'
)
expect_error(
CST_BiasCorrection(exp = exp1, obs = obs1, exp_cor = 1),
paste0("Parameter 'exp_cor' must be of the class 's2dv_cube', as output ",
"by CSTools::CST_Load.")
)
# exp and obs
expect_error(
CST_BiasCorrection(exp = exp1_2, obs = obs1),
"Parameter 'exp' must have dimension names."
)
expect_error(
CST_BiasCorrection(exp = exp1, obs = obs1_2),
"Parameter 'obs' must have dimension names."
)
expect_warning(
CST_BiasCorrection(exp = exp2, obs = obs2),
"Parameter 'exp' contains NA values."
)
expect_warning(
CST_BiasCorrection(exp = exp, obs = obs2),
"Parameter 'obs' contains NA values."
)
expect_warning(
CST_BiasCorrection(exp = exp2, obs = obs2),
"Parameter 'obs' contains NA values",
"Parameter 'exp' contains NA values."
)
# exp_cor
expect_error(
CST_BiasCorrection(exp = exp1, obs = obs1, exp_cor = exp_cor1, sdate_dim = 'time'),
"Parameter 'exp_cor' must have dimension names."
)
# sdate_dim, memb_dim
expect_error(
CST_BiasCorrection(exp = exp1, obs = obs1, sdate_dim = 1),
paste0("Parameter 'sdate_dim' must be a character string.")
)
expect_error(
CST_BiasCorrection(exp = exp, obs = obs, sdate_dim = 'time'),
paste0("Parameter 'sdate_dim' is not found in 'exp' or 'obs' dimension.")
)
expect_error(
BiasCorrection(exp = array(1:20, dim = c(time = 1, member = 1)),
obs = array(1:20, dim = c(time = 2, member = 1)), sdate_dim = 'time'),
paste0("Parameter 'exp' must have dimension length of 'sdate_dim' bigger than 1.")
)
expect_error(
CST_BiasCorrection(exp = exp1, obs = obs1, sdate_dim = 'time'),
paste0("Parameter 'exp' requires 'sdate_dim' and 'memb_dim' dimensions.")
)
expect_error(
BiasCorrection(exp = exp3, obs = obs3_3),
paste0("If parameter 'obs' has dimension 'memb_dim' its length must be equal to 1.")
)
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## dat_dim
expect_error(
BiasCorrection(exp = exp3, obs = obs3, dat_dim = 1),
paste0("Parameter 'dat_dim' must be a character string.")
)
expect_error(
BiasCorrection(exp = exp3, obs = obs3, dat_dim = 'dataset'),
paste0("Parameter 'dat_dim' is not found in 'exp' or 'obs' dimension.",
" Set it as NULL if there is no dataset dimension.")
)
## exp, obs, and exp_cor (2)
expect_error(
BiasCorrection(exp = array(1:6, c(sdate = 3, member = 2, dataset = 2, lon = 1)),
obs = array(1:6, c(sdate = 3, member = 1, dataset = 3, lon = 2)),
dat_dim = 'dataset'),
paste0("Parameter 'exp' and 'obs' must have same length of all dimensions",
" except 'memb_dim' and 'dat_dim'.")
)
expect_error(
BiasCorrection(exp = array(1:6, c(sdate = 3, member = 2, dataset = 2, lon = 1)),
obs = array(1:6, c(sdate = 3, member = 1, dataset = 3, lon = 1)),
exp_cor = array(1:6, c(sdate = 3, member = 1, dataset = 3, lon = 1)),
dat_dim = 'dataset'),
paste0("If parameter 'exp_cor' has dataset dimension, it must be",
" equal to dataset dimension of 'exp'.")
)
expect_error(
BiasCorrection(exp = array(1:6, c(sdate = 3, member = 2, dataset = 2, lon = 1)),
obs = array(1:6, c(sdate = 3, member = 1, dataset = 3, lon = 1)),
exp_cor = array(1:6, c(sdate = 3, member = 1, lon = 1)),
dat_dim = 'dataset'),
paste0("Parameter 'exp' and 'exp_cor' must have the same length of ",
"all dimensions except 'dat_dim' if there is ",
"only one reference dataset.")
)
## na.rm
expect_warning(
CST_BiasCorrection(exp = exp, obs = obs, na.rm = 1),
"Paramater 'na.rm' must be a logical, it has been set to FALSE."
)
expect_warning(
CST_BiasCorrection(exp = exp, obs = obs, na.rm = c(T,F)),
"Paramter 'na.rm' has length greater than 1, and only the fist element is used."
)
# ncores
expect_error(
CST_BiasCorrection(exp = exp, obs = obs, ncores = TRUE),
"Parameter 'ncores' must be either NULL or a positive integer."
)
})
##############################################
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test_that("2. Output checks: dat1", {
bc <- CST_BiasCorrection(exp = exp, obs = obs)
expect_equal(
length(bc),
3
)
expect_equal(
dim(bc$data),
c(dataset = 1, member = 3, sdate = 4, ftime = 5, lat = 6, lon = 7)
)
expect_equal(
bc$lat,
lat
)
expect_equal(
bc$lon,
lon
)
expect_equal(
round(BiasCorrection(exp = exp3, obs = obs3, exp_cor = exp3), 2),
array(c(2.66, 4.27, 3.2, 4.8, 3.73, 5.34), c(member = 2, sdate = 3))
)
expect_equal(
round(BiasCorrection(exp = exp3, obs = obs3_2, exp_cor = exp3), 2),
array(c(2.66, 4.27, 3.2, 4.8, 3.73, 5.34), c(member = 2, sdate = 3))
)
expect_equal(
dim(BiasCorrection(exp = exp4, obs = obs4, sdate_dim = 'time', memb_dim = 'members')),
c(members = 5, time = 5, lat = 2, lon = 5)
)
suppressWarnings(
expect_equal(
sum(is.na(BiasCorrection(exp = exp4, obs = obs4_1, sdate_dim = 'time', memb_dim = 'members', na.rm = TRUE))),
0
)
)
suppressWarnings(
expect_equal(
sum(is.na(BiasCorrection(exp = exp4, obs = obs4_1, sdate_dim = 'time', memb_dim = 'members', na.rm = FALSE))),
)
)
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##############################################
test_that("3. Output checks: dat5", {
expect_equal(
dim(BiasCorrection(exp5, obs5, memb_dim = 'member', dat_dim = 'dataset')),
c(member = 2, sdate = 10, lat = 2, nexp = 2, nobs = 3)
)
expect_equal(
dim(BiasCorrection(exp5, obs5, exp_cor5, memb_dim = 'member', dat_dim = 'dataset')),
c(member = 2, sdate = 10, lat = 2, nexp = 2, nobs = 3)
)
expect_equal(
as.vector(BiasCorrection(exp5, obs5, memb_dim = 'member', dat_dim = 'dataset'))[5:10],
c(0.1466060, -0.9764600, 0.6914021, 0.9330733, 0.6567210, -0.3036642),
tolerance = 0.0001
)
expect_equal(
as.vector(BiasCorrection(exp5, obs5, exp_cor5, memb_dim = 'member', dat_dim = 'dataset'))[5:10],
c(0.21682367, 0.03815268, 0.09778966, 1.20997987, -1.30893321, 1.37258011),
tolerance = 0.0001
)
expect_equal(
as.vector(BiasCorrection(exp5[, , , 1], obs5[, , 1], memb_dim = 'member'))[1:5],
as.vector(BiasCorrection(exp5, obs5, memb_dim = 'member', dat_dim = 'dataset')[, , , 1, 1][1:5])
)
expect_equal(
as.vector(BiasCorrection(exp5[, , , 1], obs5[, , 1], exp_cor5, memb_dim = 'member'))[1:5],
as.vector(BiasCorrection(exp5, obs5, exp_cor5, memb_dim = 'member', dat_dim = 'dataset')[, , , 1, 1][1:5])
)
expect_equal(
as.vector(BiasCorrection(exp5, obs5, exp_cor5, memb_dim = 'member', dat_dim = 'dataset', na.rm = TRUE))[1:5],
c(-1.0318284, -0.3098404, 0.2847780, -1.2369666, 0.2168237),
tolerance = 0.0001
)
})
##############################################
test_that("4. Output checks: dat6", {
expect_equal(
dim(BiasCorrection(exp6, obs6)),
c(member = 2, sdate = 10)
)
expect_equal(
as.vector(BiasCorrection(exp6, obs6))[1:5],
c(-0.5430181, 0.2807323, -0.9954539, 1.9298249, 0.1466060),
tolerance = 0.0001
)
expect_equal(
as.vector(BiasCorrection(exp6, obs6, exp_cor6))[1:5],
c(-1.0318284, -0.3098404, 0.2847780, -1.2369666, 0.2168237),
tolerance = 0.0001
)
expect_equal(
dim(BiasCorrection(exp6_1, obs6_1, dat_dim = 'dataset')),
c(member = 2, sdate = 10, nexp = 1, nobs = 1)
)
expect_equal(
as.vector(BiasCorrection(exp6_1, obs6_1, dat_dim = 'dataset')),
as.vector(BiasCorrection(exp6, obs6)),
tolerance = 0.0001
)
expect_equal(
as.vector(BiasCorrection(exp6_1, obs6_1, exp_cor6, dat_dim = 'dataset')),
as.vector(BiasCorrection(exp6, obs6, exp_cor6)),
tolerance = 0.0001
)
expect_equal(
suppressWarnings(
as.vector(BiasCorrection(exp6_1, obs6_2, dat_dim = 'dataset'))
),
rep(as.numeric(NA), 20)
)
expect_equal(
suppressWarnings(
as.vector(BiasCorrection(exp6_1, obs6_2, dat_dim = 'dataset', na.rm = T))[5:10]
),
c(0.2644706, -0.8392515, 0.6458045, 0.8511290, 0.5959483, -0.2908764),
tolerance = 0.0001
)
expect_equal(
suppressWarnings(
as.vector(BiasCorrection(exp6_2, obs6_2, exp_cor6, dat_dim = 'dataset', na.rm = T))[5:10]
),
c(0.14077312, -0.02076059, 0.03315629, 1.03867041, -1.23864029, 1.18567478),
tolerance = 0.0001
)
})