def linearized_manufactured_solution(exact_solution, diffusion_function=None):
        if diffusion_function is None:
            diffusion_function = flux_functions.Polynomial(degree=0)

        # source_function could be computed with original diffusion function
        # or with linearized diffusion function
        # ? Would that make a difference?
        source_function = ExactOperator(
            exact_solution,
            flux_functions.Zero(),
            diffusion_function,
            flux_functions.Zero(),
        )
        initial_condition = x_functions.FrozenT(exact_solution, 0.0)

        # linearize diffusion function
        new_diffusion_function = xt_functions.LinearizedAboutQ(
            diffusion_function, exact_solution
        )

        problem = NonlinearDiffusion(
            new_diffusion_function, source_function, initial_condition
        )
        problem.exact_solution = exact_solution

        return problem
Esempio n. 2
0
    def manufactured_solution(exact_solution):
        source_function = convection_diffusion.ExactOperator(
            exact_solution,
            default_flux_function,
            flux_functions.Zero(),
            flux_functions.Zero(),
        )
        initial_condition = x_functions.FrozenT(exact_solution, 0.0)

        problem = ThinFilmConvection(source_function, initial_condition)
        problem.exact_solution = exact_solution
        return problem
 def manufactured_solution(exact_solution, diffusion_function=None):
     if diffusion_function is None:
         diffusion_function = flux_functions.Polynomial(degree=0)
     source_function = ExactOperator(
         exact_solution,
         flux_functions.Zero(),
         diffusion_function,
         flux_functions.Zero(),
     )
     initial_condition = x_functions.FrozenT(exact_solution, 0.0)
     problem = NonlinearDiffusion(
         diffusion_function, source_function, initial_condition
     )
     problem.exact_solution = exact_solution
     return problem
    def linearized_manufactured_solution(
        exact_solution, flux_function=None, diffusion_function=None, max_wavespeed=1.0
    ):
        if flux_function is None:
            flux_function = flux_functions.Identity()
        if diffusion_function is None:
            diffusion_function = flux_functions.Polynomial(degree=0)

        # source_function could be computed with original diffusion function
        # or with linearized diffusion function
        # ? Would that make a difference?
        source_function = ExactOperator(
            exact_solution, flux_function, diffusion_function, flux_functions.Zero()
        )
        initial_condition = x_functions.FrozenT(exact_solution, 0.0)

        linearized_diffusion_function = xt_functions.LinearizedAboutQ(
            diffusion_function, exact_solution
        )

        problem = ConvectionDiffusion(
            flux_function,
            linearized_diffusion_function,
            source_function,
            initial_condition,
            max_wavespeed,
        )
        problem.exact_solution = exact_solution

        return problem
Esempio n. 5
0
    def linearized_manufactured_solution(
        exact_solution, flux_function=None, diffusion_function=None, max_wavespeed=1.0
    ):
        if flux_function is None:
            flux_function = flux_functions.Identity()
        if diffusion_function is None:
            diffusion_function = flux_functions.Polynomial(degree=0)

        source_function = ExactOperator(
            exact_solution, flux_function, diffusion_function, flux_functions.Zero()
        )
        initial_condition = x_functions.FrozenT(exact_solution, 0.0)

        linearized_diffusion_function = flux_functions.LinearizedAboutQ(
            diffusion_function, exact_solution
        )

        problem = ConvectionHyperDiffusion(
            flux_function,
            linearized_diffusion_function,
            source_function,
            initial_condition,
            max_wavespeed,
        )
        problem.exact_solution = exact_solution
        return problem
def test_zero():
    flux_function = flux_functions.Zero()
    utils.check_to_from_dict(flux_function, flux_functions)
    # should always give zero
    for q in range(-10, 10):
        assert flux_function(q) == 0.0
        for x in range(-10, 10):
            assert flux_function(q, x) == 0.0
            for t in range(-10, 10):
                assert flux_function(q, x, t) == 0.0
Esempio n. 7
0
    def __init__(
        self, diffusion_function=None, source_function=None, initial_condition=None
    ):
        flux_function = flux_functions.Zero()
        max_wavespeed = 0.0

        ConvectionHyperDiffusion.__init__(
            self,
            flux_function,
            diffusion_function,
            source_function,
            initial_condition,
            max_wavespeed,
        )
Esempio n. 8
0
    def __init__(
        self, source_function=None, initial_condition=None, max_wavespeed=None
    ):
        if max_wavespeed is None:
            max_wavespeed = 1.0 / 3.0

        diffusion_function = flux_functions.Zero()

        convection_hyper_diffusion.ConvectionHyperDiffusion.__init__(
            self,
            default_flux_function,
            diffusion_function,
            source_function,
            initial_condition,
            max_wavespeed,
        )
Esempio n. 9
0
def test_neumann():
    boundary_derivative_function = flux_functions.Zero()
    bc = boundary.Neumann(boundary_derivative_function)

    basis_ = basis.LegendreBasis1D(3)
    mesh_ = mesh.Mesh1DUniform(0.0, 1.0, 10)
    f = x_functions.Sine()
    dg_solution = basis_.project(f, mesh_)
    problem = smooth_scalar_example.SmoothScalarExample(1.0, f)

    riemann_solver = riemann_solvers.LocalLaxFriedrichs(problem)
    boundary_faces = mesh_.boundary_faces
    t = 0.0

    flux = bc.evaluate_boundary(dg_solution, boundary_faces[0], riemann_solver,
                                t)
    assert flux is not None
Esempio n. 10
0
    def __init__(
        self,
        q,
        flux_function=None,
        diffusion_function=None,
        source_function=None,
        default_t=None,
    ):
        self.q = q
        if flux_function is None:
            self.flux_function = flux_functions.Zero
        else:
            self.flux_function = flux_function

        if diffusion_function is None:
            self.diffusion_function = flux_functions.Polynomial(degree=0)
        else:
            self.diffusion_function = diffusion_function

        if source_function is None:
            self.source_function = flux_functions.Zero()
        else:
            self.source_function = source_function
        xt_functions.XTFunction.__init__(self)
Esempio n. 11
0
def get_defaults(
    dg_solution,
    t,
    diffusion_function=None,
    source_function=None,
    q_boundary_condition=None,
    r_boundary_condition=None,
    q_numerical_flux=None,
    r_numerical_flux=None,
    quadrature_matrix_function=None,
):
    basis_ = dg_solution.basis
    mesh_ = dg_solution.mesh
    Q = dg_solution

    # default to linear diffusion with diffusion constant 1
    if diffusion_function is None:
        diffusion_function = flux_functions.Polynomial(degree=0)

    # if is linear diffusion then diffusion_function will be constant
    is_linear = (
        isinstance(diffusion_function, flux_functions.Polynomial)
        and diffusion_function.degree == 0
    )
    if is_linear:
        diffusion_constant = diffusion_function.coeffs[0]

    # default to 0 source
    if source_function is None:
        source_function = flux_functions.Zero()

    # default boundary conditions
    if q_boundary_condition is None:
        q_boundary_condition = boundary.Periodic()
    if r_boundary_condition is None:
        r_boundary_condition = boundary.Periodic()

    # Default numerical fluxes
    if q_numerical_flux is None:
        q_numerical_flux = riemann_solvers.RightSided(
            flux_functions.Polynomial([0.0, -1.0])
        )
    if r_numerical_flux is None:
        if is_linear:
            r_numerical_flux = riemann_solvers.LeftSided(
                flux_functions.Polynomial([0.0, -1.0 * diffusion_constant])
            )
        else:

            def wavespeed_function(x):
                # need to make sure q is evaluated on left side of interfaces
                if mesh_.is_interface(x):
                    vertex_index = mesh_.get_vertex_index(x)
                    left_elem_index = mesh_.faces_to_elems[vertex_index, 0]
                    # if on left boundary
                    if left_elem_index == -1:
                        if isinstance(q_boundary_condition, boundary.Periodic):
                            left_elem_index = mesh_.get_rightmost_elem_index()
                            q = Q(mesh_.x_right, left_elem_index)
                        else:
                            left_elem_index = mesh_.get_leftmost_elem_index()
                            q = Q(x, left_elem_index)
                    else:
                        q = Q(x, left_elem_index)
                else:
                    q = Q(x)

                return -1.0 * diffusion_function(q, x, t)

            r_numerical_flux = riemann_solvers.LeftSided(
                flux_functions.VariableAdvection(wavespeed_function)
            )

    # default quadrature function is to directly compute using dg_solution
    # and diffusion_function
    if quadrature_matrix_function is None:
        # if diffusion_function is a constant,
        # then quadrature_matrix_function will be constant,  -e M^{-1}S^T
        # where e is diffusion constant
        if is_linear:
            quadrature_matrix_function = dg_utils.get_quadrature_matrix_function_matrix(
                -1.0 * diffusion_constant * basis_.mass_inverse_stiffness_transpose
            )
        else:
            # M^{-1} \dintt{D_i}{-f(Q, x, t) R \Phi_x}{x} = B_i R_i
            quadrature_matrix_function = ldg_utils.get_quadrature_matrix_function(
                dg_solution, t, lambda q, x, t: -1.0 * diffusion_function(q, x, t)
            )

    return (
        diffusion_function,
        source_function,
        q_boundary_condition,
        r_boundary_condition,
        q_numerical_flux,
        r_numerical_flux,
        quadrature_matrix_function,
    )