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import sympy as sp
import pystencils as ps

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import numpy as np
import pytest
from itertools import product
from scipy.optimize import curve_fit

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@pytest.mark.parametrize("dim", [2, 3])
def test_advection_diffusion(dim: int):
# parameters
if dim == 2:
L = (32, 32)

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elif dim == 3:
L = (16, 16, 16)

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dh = ps.create_data_handling(domain_size=L, periodicity=True, default_target='cpu')

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n_field = dh.add_array('n', values_per_cell=1)
j_field = dh.add_array('j', values_per_cell=3 ** dim // 2, field_type=ps.FieldType.STAGGERED_FLUX)

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velocity_field = dh.add_array('v', values_per_cell=dim)
D = 0.0666
time = 100

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def grad(f):
return sp.Matrix([ps.fd.diff(f, i) for i in range(dim)])
flux_eq = - D * grad(n_field)
fvm_eq = ps.fd.FVM1stOrder(n_field, flux=flux_eq)
vof_adv = ps.fd.VOF(j_field, velocity_field, n_field)
# merge calculation of advection and diffusion terms
flux = []
for adv, div in zip(vof_adv, fvm_eq.discrete_flux(j_field)):
assert adv.lhs == div.lhs
flux.append(ps.Assignment(adv.lhs, adv.rhs + div.rhs))
flux_kernel = ps.create_staggered_kernel(flux).compile()
pde_kernel = ps.create_kernel(fvm_eq.discrete_continuity(j_field)).compile()

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sync_conc = dh.synchronization_function([n_field.name])
# analytical density calculation
def density(pos: np.ndarray, time: int, D: float):
return (4 * np.pi * D * time)**(-dim / 2) * \
np.exp(-np.sum(np.square(pos), axis=-1) / (4 * D * time))

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pos = np.zeros((*L, dim))
xpos = np.arange(-L[0] // 2, L[0] // 2)
ypos = np.arange(-L[1] // 2, L[1] // 2)

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if dim == 2:
pos[..., 1], pos[..., 0] = np.meshgrid(xpos, ypos)
elif dim == 3:
zpos = np.arange(-L[2] // 2, L[2] // 2)

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pos[..., 2], pos[..., 1], pos[..., 0] = np.meshgrid(xpos, ypos, zpos)
pos += 0.5

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def run(velocity: np.ndarray, time: int):
dh.fill(n_field.name, np.nan, ghost_layers=True, inner_ghost_layers=True)
dh.fill(j_field.name, np.nan, ghost_layers=True, inner_ghost_layers=True)
# set initial values for velocity and density
for i in range(dim):
dh.fill(velocity_field.name, velocity[i], i, ghost_layers=True, inner_ghost_layers=True)
dh.fill(n_field.name, 0)
if dim == 2:
start = ps.make_slice[L[0] // 2 - 1:L[0] // 2 + 1, L[1] // 2 - 1:L[1] // 2 + 1]
else:
start = ps.make_slice[L[0] // 2 - 1:L[0] // 2 + 1, L[1] // 2 - 1:L[1] // 2 + 1,
L[2] // 2 - 1:L[2] // 2 + 1]
dh.fill(n_field.name, 2**-dim, slice_obj=start)

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sync_conc()
for i in range(time):
dh.run_kernel(flux_kernel)
dh.run_kernel(pde_kernel)
sync_conc()
sim_density = dh.gather_array(n_field.name)
# check that mass was conserved
assert np.isclose(sim_density.sum(), 1)
assert np.all(sim_density > 0)
# check that the maximum is in the right place
peak = np.unravel_index(np.argmax(sim_density, axis=None), sim_density.shape)
assert np.allclose(peak, np.array(L) // 2 - 0.5 + velocity * time, atol=0.5)
# check the concentration profile
if np.linalg.norm(velocity) == 0:
calc_density = density(pos - velocity * time, time, D)
target = [time, D]
popt, _ = curve_fit(lambda x, t, D: density(x - velocity * time, t, D),
pos.reshape(-1, dim),
sim_density.reshape(-1),
p0=target)
assert np.isclose(popt[0], time, rtol=0.05)
assert np.isclose(popt[1], D, rtol=0.05)
assert np.allclose(calc_density, sim_density, atol=1e-4)
for vel in product(*[[0, -0.047, 0.041], [0, -0.031, 0.023], [0, -0.017, 0.011]][:dim]):

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run(np.array(vel), time)
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def VOF2(j: ps.field.Field, v: ps.field.Field, ρ: ps.field.Field, simplify=True):
"""Volume-of-fluid discretization of advection
Args:
j: the staggered field to write the fluxes to. Needs to have D2Q9/D3Q27 stencil.
v: the flow velocity field
ρ: the quantity to advect
simplify: whether to simplify the generated expressions (slow, but makes them much more readable and faster)
"""
dim = j.spatial_dimensions
assert ps.FieldType.is_staggered(j)
assert j.index_shape[0] == (3 ** dim) // 2
def assume_velocity(e):
if not simplify:
return e
repl = {}
for c in e.atoms(sp.StrictGreaterThan, sp.GreaterThan):
if isinstance(c.lhs, ps.field.Field.Access) and c.lhs.field == v and isinstance(c.rhs, sp.Number):
if c.rhs <= -1:
repl[c] = True
elif c.rhs >= 1:
repl[c] = False
for c in e.atoms(sp.StrictLessThan, sp.LessThan):
if isinstance(c.lhs, ps.field.Field.Access) and c.lhs.field == v and isinstance(c.rhs, sp.Number):
if c.rhs >= 1:
repl[c] = True
elif c.rhs <= -1:
repl[c] = False
for c in e.atoms(sp.Equality):
if isinstance(c.lhs, ps.field.Field.Access) and c.lhs.field == v and isinstance(c.rhs, sp.Number):
if c.rhs <= -1 or c.rhs >= 1:
repl[c] = False
return e.subs(repl)
class AABB:
def __init__(self, corner0, corner1):
self.dim = len(corner0)
self.minCorner = sp.zeros(self.dim, 1)
self.maxCorner = sp.zeros(self.dim, 1)
for i in range(self.dim):
self.minCorner[i] = sp.Piecewise((corner0[i], corner0[i] < corner1[i]), (corner1[i], True))
self.maxCorner[i] = sp.Piecewise((corner1[i], corner0[i] < corner1[i]), (corner0[i], True))
def intersect(self, other):
minCorner = [sp.Max(self.minCorner[d], other.minCorner[d]) for d in range(self.dim)]
maxCorner = [sp.Max(minCorner[d], sp.Min(self.maxCorner[d], other.maxCorner[d]))
for d in range(self.dim)]
return AABB(minCorner, maxCorner)
@property
def volume(self):
v = sp.prod([self.maxCorner[d] - self.minCorner[d] for d in range(self.dim)])
if simplify:
return sp.simplify(assume_velocity(v.rewrite(sp.Piecewise)))
else:
return v
fluxes = []
cell = AABB([-0.5] * dim, [0.5] * dim)
cell_s = AABB(sp.Matrix([-0.5] * dim) + v.center_vector, sp.Matrix([0.5] * dim) + v.center_vector)
for d, neighbor in enumerate(j.staggered_stencil):
c = sp.Matrix(ps.stencil.direction_string_to_offset(neighbor)[:dim])
cell_n = AABB(sp.Matrix([-0.5] * dim) + c, sp.Matrix([0.5] * dim) + c)
cell_ns = AABB(sp.Matrix([-0.5] * dim) + c + v.neighbor_vector(neighbor),
sp.Matrix([0.5] * dim) + c + v.neighbor_vector(neighbor))
fluxes.append(assume_velocity(ρ.center_vector * cell_s.intersect(cell_n).volume
- ρ.neighbor_vector(neighbor) * cell_ns.intersect(cell).volume))
assignments = []
for i, d in enumerate(j.staggered_stencil):
for lhs, rhs in zip(j.staggered_vector_access(d).values(), fluxes[i].values()):
assignments.append(ps.Assignment(lhs, rhs))
return assignments
@pytest.mark.parametrize("dim", [2, 3])
def test_advection(dim):
L = (8,) * dim
dh = ps.create_data_handling(L, periodicity=True, default_target='cpu')
c = dh.add_array('c', values_per_cell=1)
j = dh.add_array('j', values_per_cell=3 ** dh.dim // 2, field_type=ps.FieldType.STAGGERED_FLUX)
u = dh.add_array('u', values_per_cell=dh.dim)
dh.cpu_arrays[c.name][:] = (np.random.random([l + 2 for l in L]))
dh.cpu_arrays[u.name][:] = (np.random.random([l + 2 for l in L] + [dim]) - 0.5) / 5
vof1 = ps.create_kernel(ps.fd.VOF(j, u, c)).compile()
dh.fill(j.name, np.nan, ghost_layers=True)
dh.run_kernel(vof1)
j1 = dh.gather_array(j.name).copy()
vof2 = ps.create_kernel(VOF2(j, u, c, simplify=False)).compile()
dh.fill(j.name, np.nan, ghost_layers=True)
dh.run_kernel(vof2)
j2 = dh.gather_array(j.name)
assert np.allclose(j1, j2)
@pytest.mark.parametrize("stencil", ["D2Q5", "D2Q9"])
def test_ek(stencil):
# parameters
L = (40, 40)
D = sp.Symbol("D")
z = sp.Symbol("z")
# data structures
dh = ps.create_data_handling(L, periodicity=True, default_target='cpu')
c = dh.add_array('c', values_per_cell=1)
j = dh.add_array('j', values_per_cell=int(stencil[-1]) // 2, field_type=ps.FieldType.STAGGERED_FLUX)
Phi = dh.add_array('Φ', values_per_cell=1)
# perform automatic discretization
def Gradient(f):
return sp.Matrix([ps.fd.diff(f, i) for i in range(dh.dim)])
flux_eq = -D * Gradient(c) + D * z * c.center * Gradient(Phi)
disc = ps.fd.FVM1stOrder(c, flux_eq)
flux_assignments = disc.discrete_flux(j)
continuity_assignments = disc.discrete_continuity(j)
# manual discretization
x_staggered = - c[-1, 0] + c[0, 0] + z * (c[-1, 0] + c[0, 0]) / 2 * (Phi[-1, 0] - Phi[0, 0])
y_staggered = - c[0, -1] + c[0, 0] + z * (c[0, -1] + c[0, 0]) / 2 * (Phi[0, -1] - Phi[0, 0])
xy_staggered = (- c[-1, -1] + c[0, 0]) / sp.sqrt(2) + \
z * (c[-1, -1] + c[0, 0]) / 2 * (Phi[-1, -1] - Phi[0, 0]) / sp.sqrt(2)
xY_staggered = (- c[-1, 1] + c[0, 0]) / sp.sqrt(2) + \
z * (c[-1, 1] + c[0, 0]) / 2 * (Phi[-1, 1] - Phi[0, 0]) / sp.sqrt(2)
A0 = (1 + sp.sqrt(2) if j.index_shape[0] == 4 else 1)
jj = j.staggered_access
divergence = -1 * sum([jj(d) for d in j.staggered_stencil
+ [ps.stencil.inverse_direction_string(d) for d in j.staggered_stencil]])
update = [ps.Assignment(c.center, c.center + divergence)]
flux = [ps.Assignment(j.staggered_access("W"), D * x_staggered / A0),
ps.Assignment(j.staggered_access("S"), D * y_staggered / A0)]
if j.index_shape[0] == 4:
flux += [ps.Assignment(j.staggered_access("SW"), D * xy_staggered / A0),
ps.Assignment(j.staggered_access("NW"), D * xY_staggered / A0)]
# compare
for a, b in zip(flux, flux_assignments):
assert a.lhs == b.lhs
assert sp.simplify(a.rhs - b.rhs) == 0
for a, b in zip(update, continuity_assignments):
assert a.lhs == b.lhs
assert a.rhs == b.rhs