Skip to content

Solvers for stochastic differential equations which connect with the scientific machine learning (SciML) ecosystem

License

Notifications You must be signed in to change notification settings

brainsMAKER/StochasticDiffEq.jl

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

StochasticDiffEq.jl

Join the chat at https://gitter.im/JuliaDiffEq/Lobby Build Status Build status

StochasticDiffEq.jl is a component package in the DifferentialEquations ecosystem. It holds the stochastic differential equations solvers and utilities. While completely independent and usable on its own, users interested in using this functionality should check out DifferentialEquations.jl.

API

StochasticDiffEq.jl is part of the JuliaDiffEq common interface, but can be used independently of DifferentialEquations.jl. The only requirement is that the user passes an StochasticDiffEq.jl algorithm to solve. For example, we can solve the SDE tutorial from the docs using the SRIW1() algorithm:

using StochasticDiffEq
α=1
β=1
u₀=1/2
f(u,p,t) = α*u
g(u,p,t) = β*u
dt = 1//2^(4)
tspan = (0.0,1.0)
prob = SDEProblem(f,g,u₀,(0.0,1.0))
sol =solve(prob,SRIW1())

The options for solve are defined in the common solver options page and are thoroughly explained in the ODE tutorial.

That example uses the out-of-place syntax f(u,p,t), while the inplace syntax (more efficient for systems of equations) is shown in the Lorenz example:

function lorenz(du,u,p,t)
 du[1] = 10.0(u[2]-u[1])
 du[2] = u[1]*(28.0-u[3]) - u[2]
 du[3] = u[1]*u[2] - (8/3)*u[3]
end

function σ_lorenz(du,u,p,t)
 du[1] = 3.0
 du[2] = 3.0
 du[3] = 3.0
end

prob_sde_lorenz = SDEProblem(lorenz,σ_lorenz,[1.0,0.0,0.0],(0.0,10.0))
sol = solve(prob_sde_lorenz)
plot(sol,vars=(1,2,3))

The problems default to diagonal noise. Non-diagonal noise can be added by setting the noise_prototype:

f = (du,u,p,t) -> du.=1.01u
g = function (du,u,p,t)
  du[1,1] = 0.3u[1]
  du[1,2] = 0.6u[1]
  du[1,3] = 0.9u[1]
  du[1,4] = 0.12u[2]
  du[2,1] = 1.2u[1]
  du[2,2] = 0.2u[2]
  du[2,3] = 0.3u[2]
  du[2,4] = 1.8u[2]
end
prob = SDEProblem(f,g,ones(2),(0.0,1.0),noise_rate_prototype=zeros(2,4))

Colored noise can be set using an AbstractNoiseProcess. For example, we can set the underlying noise process to a GeometricBrownianMotionProcess via:

μ = 1.0
σ = 2.0
W = GeometricBrownianMotionProcess(μ,σ,0.0,1.0,1.0)
# ...
# Define f,g,u0,tspan for a SDEProblem
# ...
prob = SDEProblem(f,g,u0,tspan,noise=W)

StochasticDiffEq.jl also handles solving random ordinary differential equations. This is shown in the RODE tutorial.

using StochasticDiffEq
function f(u,p,t,W)
  2u*sin(W)
end
u0 = 1.00
tspan = (0.0,5.0)
prob = RODEProblem(f,u0,tspan)
sol = solve(prob,RandomEM(),dt=1/100)

Available Solvers

For the list of available solvers, please refer to the DifferentialEquations.jl SDE Solvers page and the RODE Solvers page.

About

Solvers for stochastic differential equations which connect with the scientific machine learning (SciML) ecosystem

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Julia 100.0%