View source: R/euler_stochastic.R
euler_stochastic | R Documentation |
euler_stochastic
solves a multi-dimensional differential equation with the Euler-Maruyama method with stochastic elements.
euler_stochastic( deterministic_rate, stochastic_rate, initial_condition, parameters = NULL, t_start = 0, deltaT = 1, n_steps = 1, D = 1 )
deterministic_rate |
The 1 or multi dimensional system of equations for the deterministic part of the differential equation, written in formula notation as a vector (i.e. c(dx ~ f(x,y), dy ~ g(x,y))) |
stochastic_rate |
The 1 or multi dimensional system of equations for the stochastic part of the differential equation, written in formula notation as a vector (i.e. c(dx ~ f(x,y), dy ~ g(x,y))) |
initial_condition |
(REQUIRED) Listing of initial conditions, as a vector |
parameters |
The values of the parameters we are using |
t_start |
The starting time point (defaults to t = 0) |
deltaT |
The timestep length (defaults to 1) |
n_steps |
The number of timesteps to compute solution (defaults to n_steps = 1) |
D |
diffusion coefficient for the stochastic part of the SDE |
A tidy of data frame the solutions
### Simulate the stochastic differential equation dx = r*x*(1-x/K) dt + dW(t) # Identify the deterministic and stochastic parts of the DE: deterministic_logistic <- c(dx ~ r*x*(1-x/K)) stochastic_logistic <- c(dx ~ 1) # Identify the initial condition and any parameters init_logistic <- c(x=3) logistic_parameters <- c(r=0.8, K=100) # parameters: a named vector # Identify how long we run the simulation deltaT_logistic <- .05 # timestep length timesteps_logistic <- 200 # must be a number greater than 1 # Identify the standard deviation of the stochastic noise D_logistic <- 1 # Do one simulation of this differential equation logistic_out <- euler_stochastic( deterministic_rate = deterministic_logistic, stochastic_rate = stochastic_logistic, initial_condition = init_logistic, parameters = logistic_parameters, deltaT = deltaT_logistic, n_steps = timesteps_logistic, D = D_logistic ) ### Simulate a stochastic process for the tourism model presented in ### Sinay, Laura, and Leon Sinay. 2006. “A Simple Mathematical ### Model for the Effects of the Growth of Tourism on Environment.” ### In International Tourism Conference. Alanya, Turkey. ### where we have the following SDE: ### dr = r*(1-r)-a*v dt, dv = b*v*(r-v) dt + v*(r-v) dW(t) # Identify the deterministic and stochastic parts of the DE: deterministic_tourism<- c(dr ~ r*(1-r)-a*v, dv ~ b*v*(r-v)) stochastic_tourism <- c(dr ~ 0, dv ~ v*(r-v)) # Identify the initial condition and any parameters init_tourism <- c(r = 0.995, v = 0.00167) tourism_parameters <- c(a = 0.15, b = 0.3316) # deltaT_tourism <- .5 # timestep length timeSteps_tourism <- 200 # must be a number greater than 1 # Identify the diffusion coefficient D_tourism <- .05 # Do one simulation of this differential equation tourism_out <- euler_stochastic( deterministic_rate = deterministic_tourism, stochastic_rate = stochastic_tourism, initial_condition = init_tourism, parameters = tourism_parameters, deltaT = deltaT_tourism, n_steps = timeSteps_tourism, D = D_tourism )
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