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nsim = 10
fatalities_mean = c(0, 10, 5)
fatalities_se = c(0, 0.05, 0.05)

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pop_size_se = 25
survivals <- c(0.5, 0.7, 0.8, 0.95)
fecundities <- c(0, 0, 0.05, 0.55)

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model_demo = NULL # M2_noDD_WithDemoStoch #M1_noDD_noDemoStoch #M4_WithDD_WithDemoStoch #M3_WithDD_noDemoStoch #

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time_horzion = 50
fatal_constant = "h"
pop_size_type = "Ntotal"

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onset_year = c(2010, 2013, 2016)

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onset_time = onset_year - min(onset_year) + 1
onset_time = c(min(onset_time), onset_time)

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# Pop size total
sum(pop_vector(pop_size = pop_size_mean, pop_size_type = pop_size_type, s = survivals, f = fecundities))
# Define K
carrying_capacity = 500
theta = 1
K = pop_vector(pop_size = carrying_capacity, pop_size_type = pop_size_type, s = survivals, f = fecundities) %>% sum
K
# Define theoretical rMAX for the species
rMAX_species <- rMAX_spp(surv = tail(survivals,1), afr = min(which(fecundities != 0)))
rMAX_species
## Avoid unrealistic scenarios
pop_growth_mean <- min(1 + rMAX_species, pop_growth_mean)
pop_growth_mean

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## Calibration --
##--------------------------------------------
# Calibrate vital rates to match the the desired lambda
inits <- init_calib(s = survivals, f = fecundities, lam0 = pop_growth_mean)
vr_calibrated <- calibrate_params(inits = inits, f = fecundities, s = survivals, lam0 = pop_growth_mean)
s_calibrated <- head(vr_calibrated, length(survivals))
f_calibrated <- tail(vr_calibrated, length(fecundities))
lambda( build_Leslie(s = s_calibrated, f = f_calibrated) )

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#pop_size_mean = 200
#pop_growth_mean = 1.1
#fatal_constant = "M"
#cumulated_impacts = FALSE

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##==============================================================================
## Analyses (simulations) ==
##==============================================================================
run0 <- run_simul(nsim = nsim,
cumulated_impacts = cumulated_impacts,
fatalities_mean = fatalities_mean,
fatalities_se = fatalities_se,
onset_time = onset_time,
pop_size_mean = pop_size_mean,
pop_size_se = pop_size_se,
pop_size_type = pop_size_type,
pop_growth_mean = pop_growth_mean,
pop_growth_se = pop_growth_se,
survivals = s_calibrated,
fecundities = f_calibrated,
carrying_capacity = carrying_capacity,
theta = theta,
rMAX_species = rMAX_species,
model_demo = NULL,
time_horzion = time_horzion,
coeff_var_environ = coeff_var_environ,
fatal_constant = fatal_constant)
N <- run0$N ; dim(N)
plot_traj(N, xlab = "Annee", ylab = "Taille de population (totale)")

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abline(h = K)
out = run0
get_metrics(N = out$N)$scenario$impact[time_horzion, "avg",-1]
res = get_metrics(N = out$N, cumulated_impacts = cumulated_impacts)
round(t(res$indiv_farm$impact[time_horzion, -2, -1]),2)*100