## test_that("Epsilon models work with RW spatiotemporal fields", { ## skip_on_cran() ## skip_on_ci() ## ## pcod_spde <- pcod_mesh_2011 ## pcod_2011$year_centered <- pcod_2011$year - mean(pcod_2011$year) ## ## # Fit model with RW fields, no trend ## m1 <- sdmTMB(density ~ 0 + depth_scaled + depth_scaled2 + as.factor(year), ## data = pcod_2011, ## time = "year", ## mesh = pcod_spde, ## family = tweedie(link = "log"), ## spatiotemporal = "RW" ## ) ## ## # The way to check that the models are giving the right results is to ## # create a new dummy variable, include that as a predictor for the time ## # varying model. It won't fully converge (without fixing the parameter as we ## # do below), because it's not identifiable, but parameter estimates for ## # everything else comparable. ## pcod_2011$dummy <- 0 ## m2 <- sdmTMB(density ~ 0 + depth_scaled + depth_scaled2 + as.factor(year), ## data = pcod_2011, ## time = "year", ## mesh = pcod_spde, ## family = tweedie(link = "log"), ## epsilon_predictor = "dummy", ## control = sdmTMBcontrol( ## lower = list(b_epsilon = -1), upper = list(b_epsilon = 1), ## map = list(b_epsilon = factor(NA)), start = list(b_epsilon = 0) ## ), ## spatiotemporal = "RW" ## ) ## ## expect_equal(tidy(m1, "ran_par")$estimate, tidy(m2, "ran_par")$estimate, tolerance = 0.001) ## expect_equal(logLik(m1)[1], logLik(m2)[1]) ## }) ## ## test_that("Epsilon models work with AR1 spatiotemporal fields", { ## skip_on_cran() ## skip_on_ci() ## ## pcod_spde <- pcod_mesh_2011 ## pcod_2011$year_centered <- pcod_2011$year - mean(pcod_2011$year) ## ## # Fit model with AR1 fields, no trend ## m1 <- sdmTMB(density ~ 0 + depth_scaled + depth_scaled2 + as.factor(year), ## data = pcod_2011, ## time = "year", ## mesh = pcod_spde, ## family = tweedie(link = "log"), ## spatiotemporal = "AR1" ## ) ## ## # The way to check that the models are giving the right results is to ## # create a new dummy variable, include that as a predictor for the time ## # varying model. It won't fully converge (without fixing the parameter as we ## # do below), because it's not identifiable, but parameter estimates for ## # everything else comparable. ## pcod_2011$dummy <- 0 ## m2 <- sdmTMB(density ~ 0 + depth_scaled + depth_scaled2 + as.factor(year), ## data = pcod_2011, ## time = "year", ## mesh = pcod_spde, ## family = tweedie(link = "log"), ## epsilon_predictor = "dummy", ## control = sdmTMBcontrol( ## lower = list(b_epsilon = -1), upper = list(b_epsilon = 1), ## map = list(b_epsilon = factor(NA)), start = list(b_epsilon = 0) ## ), ## spatiotemporal = "AR1" ## ) ## ## expect_equal(tidy(m1, "ran_par")$estimate, tidy(m2, "ran_par")$estimate, tolerance = 0.001) ## expect_equal(logLik(m1)[1], logLik(m2)[1]) ## })