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Adding a tutorial on adding new parabolic terms #1209

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merged 10 commits into from
Aug 27, 2022
160 changes: 160 additions & 0 deletions docs/literate/src/files/adding_new_parabolic_terms.jl
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#src # Adding new parabolic terms.

# This demo illustrates the steps involved in adding new parabolic terms for the scalar
# advection equation. In particular, we will add an anisotropic diffusion. We begin by
# defining the hyperbolic (advection) part of the advection-diffusion equation.

using OrdinaryDiffEq
using Trixi


advection_velocity = (1.0, 1.0)
equations_hyperbolic = LinearScalarAdvectionEquation2D(advection_velocity);

# ## Define a new parabolic equation type
#
# Next, we define a 2D parabolic diffusion term type. This is similar to [`LaplaceDiffusion2D`](@ref)
# except that the `diffusivity` field refers to a spatially constant diffusivity matrix now. Note that
# `ConstantAnisotropicDiffusion2D` has a field for `equations_hyperbolic`. It is useful to have
# information about the hyperbolic system available to the parabolic part so that we can reuse
# functions defined for hyperbolic equations (such as `varnames`).

struct ConstantAnisotropicDiffusion2D{E, T} <: Trixi.AbstractEquationsParabolic{2, 1}
diffusivity::T
equations_hyperbolic::E
end

varnames(variable_mapping, equations_parabolic::ConstantAnisotropicDiffusion2D) =
varnames(variable_mapping, equations_parabolic.equations_hyperbolic)

# Next, we define the viscous flux function. We assume that the mixed hyperbolic-parabolic system
# is of the form
# ```math
# \partial_t u(t,x) + \partial_x (f_x(u) - g_x(u, \nabla u))
# + \partial_y (f_y(u) - g_y(u, \nabla u)) = 0
# ```
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# where ``f_1(u)``, ``f_2(u)`` are the hyperbolic fluxes and ``g_1(u, \nabla u)``, ``g_2(u, \nabla u)`` denote
# the viscous fluxes. For anisotropic diffusion, the viscous fluxes are the first and second components
# of the matrix-vector product involving `diffusivity` and the gradient vector.
#
# Here, we specialize the flux to our new parabolic equation type `ConstantAnisotropicDiffusion2D`.

function Trixi.flux(u, gradients, orientation::Integer, equations_parabolic::ConstantAnisotropicDiffusion2D)
@unpack diffusivity = equations_parabolic
dudx, dudy = gradients
if orientation == 1
return SVector(diffusivity[1, 1] * dudx + diffusivity[1, 2] * dudy)
else # if orientation == 2
return SVector(diffusivity[2, 1] * dudx + diffusivity[2, 2] * dudy)
end
end

# ## Defining boundary conditions

# Trixi.jl's implementation of parabolic terms discretizes both the gradient and divergence
# using weak formulation. In other words, we discretize the system
# ```math
# \begin{aligned}
# \bm{q} &= \nabla u \\
# \bm{\sigma} &= \begin{pmatrix} g_1(u, \bm{q}) \\ g_2(u, \bm{q}) \end{pmatrix} \\
# \text{viscous contribution } &= \nabla \cdot \bm{\sigma}
# \end{aligned}
# ```
#
# Boundary data must be specified for all spatial derivatives, e.g., for both the gradient
# equation ``\bm{q} = \nabla u`` and the divergence of the viscous flux
# ``\nabla \cdot \bm{\sigma}``. We account for this by introducing internal `Gradient`
# and `Divergence` types which are used to dispatch on each type of boundary condition.
#
# As an example, let us introduce a Dirichlet boundary condition with constant boundary data.

struct BoundaryConditionConstantDirichlet{T <: Real}
boundary_value::T
end

# This boundary condition contains only the field `boundary_value`, which we assume to be some
# real-valued constant which we will impose as the Dirichlet data on the boundary.
#
# Boundary conditions have generally been defined as "callable structs" (also known as "functors").
# For each boundary condition, we need to specify the appropriate boundary data to return for both
# the `Gradient` and `Divergence`. Since the gradient is operating on the solution `u`, the boundary
# data should be the value of `u`, and we can directly impose Dirichlet data.

@inline function (boundary_condition::BoundaryConditionConstantDirichlet)(flux_inner, u_inner, normal::AbstractVector,
x, t, operator_type::Trixi.Gradient,
equations_parabolic::ConstantAnisotropicDiffusion2D)
return boundary_condition.boundary_value
end

# While the gradient acts on the solution `u`, the divergence acts on the viscous flux ``\bm{\sigma}``.
# Thus, we have to supply boundary data for the `Divergence` operator that corresponds to ``\bm{\sigma}``.
# However, we've already imposed boundary data on `u` for a Dirichlet boundary condition, and imposing
# boundary data for ``\bm{\sigma}`` might overconstrain our problem.
#
# Thus, for the `Divergence` boundary data under a Dirichlet boundary condition, we simply return
# `flux_inner`, which is boundary data for ``\bm{\sigma}`` computed using the "inner" or interior solution.
# This way, we supply boundary data for the divergence operation without imposing any additional conditions.

@inline function (boundary_condition::BoundaryConditionConstantDirichlet)(flux_inner, u_inner, normal::AbstractVector,
x, t, operator_type::Trixi.Divergence,
equations_parabolic::ConstantAnisotropicDiffusion2D)
return flux_inner
end

# ### A note on the choice of gradient variables
#
# It is often simpler to transform the solution variables (and solution gradients) to another set of
# variables prior to computing the viscous fluxes (see [`CompressibleNavierStokesDiffusion2D`](@ref)
# for an example of this). If this is done, then the boundary condition for the `Gradient` operator
# should be modified accordingly as well.
#
# ## Putting things together
#
# Finally, we can instantiate our new parabolic equation type, define boundary conditions,
# and run a simulation. The specific anisotropic diffusion matrix we use produces more
# dissipation in the direction ``(1, -1)`` as an isotropic diffusion.
#
# For boundary conditions, we impose that ``u=1`` on the left wall, ``u=2`` on the bottom
# wall, and ``u = 0`` on the outflow walls. The initial condition is taken to be ``u = 0``.
# Note that we use `BoundaryConditionConstantDirichlet` only for the parabolic boundary
# conditions, since we have not defined its behavior for the hyperbolic part.

using Trixi: SMatrix
diffusivity = 5.0e-2 * SMatrix{2, 2}([2 -1; -1 2])
equations_parabolic = ConstantAnisotropicDiffusion2D(diffusivity, equations_hyperbolic);

boundary_conditions_hyperbolic = (; x_neg = BoundaryConditionDirichlet((x, t, equations) -> SVector(1.0)),
y_neg = BoundaryConditionDirichlet((x, t, equations) -> SVector(2.0)),
y_pos = boundary_condition_do_nothing,
x_pos = boundary_condition_do_nothing)

boundary_conditions_parabolic = (; x_neg = BoundaryConditionConstantDirichlet(1.0),
y_neg = BoundaryConditionConstantDirichlet(2.0),
y_pos = BoundaryConditionConstantDirichlet(0.0),
x_pos = BoundaryConditionConstantDirichlet(0.0));

solver = DGSEM(polydeg=3, surface_flux=flux_lax_friedrichs)
coordinates_min = (-1.0, -1.0) # minimum coordinates (min(x), min(y))
coordinates_max = ( 1.0, 1.0) # maximum coordinates (max(x), max(y))
mesh = TreeMesh(coordinates_min, coordinates_max,
initial_refinement_level=4,
periodicity=false, n_cells_max=30_000) # set maximum capacity of tree data structure

initial_condition = (x, t, equations) -> SVector(0.0)

semi = SemidiscretizationHyperbolicParabolic(mesh,
(equations_hyperbolic, equations_parabolic),
initial_condition, solver;
boundary_conditions=(boundary_conditions_hyperbolic,
boundary_conditions_parabolic))

tspan = (0.0, 2.0)
ode = semidiscretize(semi, tspan)
callbacks = CallbackSet(SummaryCallback())
time_int_tol = 1.0e-6
sol = solve(ode, RDPK3SpFSAL49(), abstol=time_int_tol, reltol=time_int_tol,
save_everystep=false, callback=callbacks);

using Plots
plot(sol)

4 changes: 2 additions & 2 deletions docs/literate/src/files/parabolic_terms.jl
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#src # Adding parabolic terms (advection-diffusion).
#src # Parabolic terms (advection-diffusion).

# Experimental support for parabolic diffusion terms is available in Trixi.jl.
# This demo illustrates parabolic terms for the advection-diffusion equation.
Expand Down Expand Up @@ -36,7 +36,7 @@ boundary_condition_zero_dirichlet = BoundaryConditionDirichlet((x, t, equations)

boundary_conditions_hyperbolic = (; x_neg = BoundaryConditionDirichlet((x, t, equations) -> SVector(1 + 0.5 * x[2])),
y_neg = boundary_condition_zero_dirichlet,
y_pos = boundary_condition_zero_dirichlet,
y_pos = boundary_condition_do_nothing,
x_pos = boundary_condition_do_nothing)

boundary_conditions_parabolic = (; x_neg = BoundaryConditionDirichlet((x, t, equations) -> SVector(1 + 0.5 * x[2])),
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1 change: 1 addition & 0 deletions docs/make.jl
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Expand Up @@ -40,6 +40,7 @@ files = [
"Adding a new scalar conservation law" => "adding_new_scalar_equations.jl",
"Adding a non-conservative equation" => "adding_nonconservative_equation.jl",
"Parabolic terms" => "parabolic_terms.jl",
"Adding new parabolic terms" => "adding_new_parabolic_terms.jl",
# Topic: meshes
"Adaptive mesh refinement" => "adaptive_mesh_refinement.jl",
"Structured mesh with curvilinear mapping" => "structured_mesh_mapping.jl",
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