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#' SIR model
#'
#' @description A basic SIR model with 3 compartments and infection and recovery processes
#'
#' @details The model includes susceptible, infected, and recovered compartments. The two processes that are modeled are infection and recovery.
#'
#' This code was generated by the modelbuilder R package.
#' The model is implemented as a set of ordinary differential equations using the deSolve package.
#' The following R packages need to be loaded for the function to work: deSolve.
#'
#' @param S : starting value for Susceptible : numeric
#' @param I : starting value for Infected : numeric
#' @param R : starting value for Recovered : numeric
#' @param b : infection rate : numeric
#' @param g : recovery rate : numeric
#' @param tstart : Start time of simulation : numeric
#' @param tfinal : Final time of simulation : numeric
#' @param dt : Time step : numeric
#' @return The function returns the output as a list.
#' The time-series from the simulation is returned as a dataframe saved as list element \code{ts}.
#' The \code{ts} dataframe has one column per compartment/variable. The first column is time.
#' @examples
#' # To run the simulation with default parameters:
#' result <- simulate_SIR_model_ode()
#' # To choose values other than the standard one, specify them like this:
#' result <- simulate_SIR_model_ode(S = 2000,I = 2,R = 0)
#' # You can display or further process the result, like this:
#' plot(result$ts[,'time'],result$ts[,'S'],xlab='Time',ylab='Numbers',type='l')
#' print(paste('Max number of S: ',max(result$ts[,'S'])))
#' @section Warning: This function does not perform any error checking. So if you try to do something nonsensical (e.g. have negative values for parameters), the code will likely abort with an error message.
#' @section Model Author: Andreas Handel
#' @section Model creation date: 2020-09-01
#' @section Code Author: generated by the \code{modelbuilder} R package
#' @section Code creation date: 2021-07-19
#' @export
simulate_SIR_model_ode <- function(S = 1000, I = 1, R = 0, b = 0.002, g = 1, tstart = 0, tfinal = 100, dt = 0.1)
{
##############################
#Block of ODE equations for deSolve
##############################
SIR_model_ode_fct <- function(t, y, parms)
{
with( as.list(c(y,parms)), { #lets us access variables and parameters stored in y and parms by name
#StartODES
#Susceptible : infection of susceptibles :
dS_mb = -b*S*I
#Infected : infection of susceptibles : recovery of infected :
dI_mb = +b*S*I -g*I
#Recovered : recovery of infected :
dR_mb = +g*I
#EndODES
list(c(dS_mb,dI_mb,dR_mb))
} ) } #close with statement, end ODE code block
##############################
#Main function code block
##############################
#Creating named vectors
varvec_mb = c(S = S, I = I, R = R)
parvec_mb = c(b = b, g = g)
timevec_mb = seq(tstart, tfinal,by = dt)
#Running the model
simout = deSolve::ode(y = varvec_mb, parms = parvec_mb, times = timevec_mb, func = SIR_model_ode_fct, rtol = 1e-12, atol = 1e-12)
#Setting up empty list and returning result as data frame called ts
result <- list()
result$ts <- as.data.frame(simout)
return(result)
}
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