context("test-briere2_1999.R") # do not run the test on CRAN as they take too long testthat::skip_on_cran() # method: fit model and get predictions. Check these are consistent. # load in ggplot library(ggplot2) # laod in data data('chlorella_tpc') d <- subset(chlorella_tpc, curve_id == 1) # get start values and fit model start_vals <- get_start_vals(d$temp, d$rate, model_name = 'briere2_1999') # fit model mod <- suppressWarnings(nls.multstart::nls_multstart(rate~briere2_1999(temp = temp, tmin, tmax, a, b), data = d, iter = c(5,5,5,5), start_lower = start_vals - 10, start_upper = start_vals + 10, lower = get_lower_lims(d$temp, d$rate, model_name = 'briere2_1999'), upper = get_upper_lims(d$temp, d$rate, model_name = 'briere2_1999'), supp_errors = 'Y', convergence_count = FALSE)) # get predictions preds <- broom::augment(mod) # plot ggplot(preds) + geom_point(aes(temp, rate)) + geom_line(aes(temp, .fitted)) + theme_bw() # run test testthat::test_that("briere2_1999 function works", { testthat::expect_equal( round(preds$.fitted, 1), c(-0.1, 0.2, 0.4, 0.7, 0.9, 1.1, 1.3, 1.3, 1.3, 1.1, 0.7, 0.0)) })