Split Grid class into multiple files

lethe/LATEST
jan 7 years ago
parent c7572c9c8d
commit 6db836d3a3

@ -0,0 +1,349 @@
"""
Drawing-related methods for Grid class
"""
from typing import List
import numpy
from numpy import diff, floor, ceil, zeros, hstack, newaxis
from float_raster import raster
from . import GridError, Direction
from ._helpers import is_scalar
def draw_polygons(self,
surface_normal: Direction or int,
center: List or numpy.ndarray,
polygons: List[numpy.ndarray or List],
thickness: float,
eps: List[float or eps_callable_type] or float or eps_callable_type):
"""
Draw polygons on an axis-aligned plane.
:param surface_normal: Axis normal to the plane we're drawing on. Can be a Direction or
integer in range(3)
:param center: 3-element ndarray or list specifying an offset applied to all the polygons
:param polygons: List of Nx2 or Nx3 ndarrays, each specifying the vertices of a polygon
(non-closed, clockwise). If Nx3, the surface_normal coordinate is ignored. Each polygon
must have at least 3 vertices.
:param thickness: Thickness of the layer to draw
:param eps: Value to draw with ('epsilon'). Can be scalar, callable, or a list
of any of these (1 per grid). Callable values should take ndarrays x, y, z of equal
shape and return an ndarray of equal shape containing the eps value at the given x, y,
and z (natural, not grid coordinates).
:raises: GridError
"""
# Turn surface_normal into its integer representation
if isinstance(surface_normal, Direction):
surface_normal = surface_normal.value
if surface_normal not in range(3):
raise GridError('Invalid surface_normal direction')
center = numpy.squeeze(center)
# Check polygons, and remove redundant coordinates
surface = numpy.delete(range(3), surface_normal)
for i, polygon in enumerate(polygons):
malformed = 'Malformed polygon: (%i)' % i
if polygon.shape[1] not in (2, 3):
raise GridError(malformed + 'must be a Nx2 or Nx3 ndarray')
if polygon.shape[1] == 3:
polygon = polygon[surface, :]
if not polygon.shape[0] > 2:
raise GridError(malformed + 'must consist of more than 2 points')
if polygon.ndim > 2 and not numpy.unique(polygon[:, surface_normal]).size == 1:
raise GridError(malformed + 'must be in plane with surface normal %s'
% 'xyz'[surface_normal])
# Broadcast eps where necessary
if is_scalar(eps):
eps = [eps] * len(self.grids)
elif isinstance(eps, numpy.ndarray):
raise GridError('ndarray not supported for eps')
# ## Compute sub-domain of the grid occupied by polygons
# 1) Compute outer bounds (bd) of polygons
bd_2d_min = [0, 0]
bd_2d_max = [0, 0]
for polygon in polygons:
bd_2d_min = numpy.minimum(bd_2d_min, polygon.min(axis=0))
bd_2d_max = numpy.maximum(bd_2d_max, polygon.max(axis=0))
bd_min = numpy.insert(bd_2d_min, surface_normal, -thickness / 2.0) + center
bd_max = numpy.insert(bd_2d_max, surface_normal, +thickness / 2.0) + center
# 2) Find indices (bdi) just outside bd elements
buf = 2 # size of safety buffer
# Use s_min and s_max with unshifted pos2ind to get absolute limits on
# the indices the polygons might affect
s_min = self.shifts.min(axis=0)
s_max = self.shifts.max(axis=0)
bdi_min = self.pos2ind(bd_min + s_min, None, round_ind=False, check_bounds=False) - buf
bdi_max = self.pos2ind(bd_max + s_max, None, round_ind=False, check_bounds=False) + buf
bdi_min = numpy.maximum(floor(bdi_min), 0).astype(int)
bdi_max = numpy.minimum(ceil(bdi_max), self.shape - 1).astype(int)
# 3) Adjust polygons for center
polygons = [poly + center[surface] for poly in polygons]
# iterate over grids
for (i, grid) in enumerate(self.grids):
# ## Evaluate or expand eps[i]
if callable(eps[i]):
# meshgrid over the (shifted) domain
domain = [self.shifted_xyz(i)[k][bdi_min[k]:bdi_max[k]+1] for k in range(3)]
(x0, y0, z0) = numpy.meshgrid(*domain, indexing='ij')
# evaluate on the meshgrid
eps[i] = eps[i](x0, y0, z0)
if not numpy.isfinite(eps[i]).all():
raise GridError('Non-finite values in eps[%u]' % i)
elif not is_scalar(eps[i]):
raise GridError('Unsupported eps[{}]: {}'.format(i, type(eps[i])))
# do nothing if eps[i] is scalar non-callable
# ## Generate weighing function
def to_3d(vector: List or numpy.ndarray, val: float=0.0):
return numpy.insert(vector, surface_normal, (val,))
w_xy = zeros((bdi_max - bdi_min + 1)[surface].astype(int))
# Draw each polygon separately
for polygon in polygons:
# Get the boundaries of the polygon
pbd_min = polygon.min(axis=0)
pbd_max = polygon.max(axis=0)
# Find indices in w_xy just outside polygon
# using per-grid xy-weights (self.shifted_xyz())
corner_min = self.pos2ind(to_3d(pbd_min), i,
check_bounds=False)[surface].astype(int)
corner_max = self.pos2ind(to_3d(pbd_max), i,
check_bounds=False)[surface].astype(int)
# Find indices in w_xy which are modified by polygon
# First for the edge coordinates (+1 since we're indexing edges)
edge_slices = [numpy.s_[i:f + 2] for i, f in zip(corner_min, corner_max)]
# Then for the pixel centers (-bdi_min since we're
# calculating weights within a subspace)
centers_slice = [numpy.s_[i:f + 1] for i, f in zip(corner_min - bdi_min[surface],
corner_max - bdi_min[surface])]
aa_x, aa_y = (self.shifted_exyz(i)[a][s] for a, s in zip(surface, edge_slices))
w_xy[centers_slice] += raster(polygon.T, aa_x, aa_y)
# Clamp overlapping polygons to 1
w_xy = numpy.minimum(w_xy, 1.0)
# 2) Generate weights in z-direction
w_z = numpy.zeros(((bdi_max - bdi_min + 1)[surface_normal], ))
def get_zi(offset):
pos_3d = to_3d([0, 0], center[surface_normal] + offset)
grid_coords = self.pos2ind(pos_3d, i, check_bounds=False, round_ind=False)
w_coord_fp = (grid_coords - bdi_min)[surface_normal] + 0.5
w_coord = floor(w_coord_fp).astype(int)
return w_coord_fp, w_coord
zi_top_fp, zi_top = get_zi(+thickness / 2.0)
zi_bot_fp, zi_bot = get_zi(-thickness / 2.0)
w_z[zi_bot:zi_top + 1] = 1
if zi_top_fp != zi_top < self.shape[surface_normal]:
f = zi_top_fp - zi_top
w_z[zi_top] = f
if zi_bot_fp != zi_bot > -1:
f = zi_bot_fp - zi_bot
w_z[zi_bot] = 1 - f
# 3) Generate total weight function
w = (w_xy[:, :, newaxis] * w_z).transpose(numpy.insert([0, 1], surface_normal, (2,)))
# ## Modify the grid
g_slice = [numpy.s_[bdi_min[a]:bdi_max[a] + 1] for a in range(3)]
self.grids[i][g_slice] = (1 - w) * self.grids[i][g_slice] + w * eps[i]
def draw_polygon(self,
surface_normal: Direction or int,
center: List or numpy.ndarray,
polygon: List or numpy.ndarray,
thickness: float,
eps: List[float or eps_callable_type] or float or eps_callable_type):
"""
Draw a polygon on an axis-aligned plane.
:param surface_normal: Axis normal to the plane we're drawing on. Can be a Direction or
integer in range(3)
:param center: 3-element ndarray or list specifying an offset applied to the polygon
:param polygon: Nx2 or Nx3 ndarray specifying the vertices of a polygon (non-closed,
clockwise). If Nx3, the surface_normal coordinate is ignored. Must have at least 3
vertices.
:param thickness: Thickness of the layer to draw
:param eps: Value to draw with ('epsilon'). See draw_polygons() for details.
"""
self.draw_polygons(surface_normal, center, [polygon], thickness, eps)
def draw_slab(self,
surface_normal: Direction or int,
center: List or numpy.ndarray,
thickness: float,
eps: List[float or eps_callable_type] or float or eps_callable_type):
"""
Draw an axis-aligned infinite slab.
:param surface_normal: Axis normal to the plane we're drawing on. Can be a Direction or
integer in range(3)
:param center: Surface_normal coordinate at the center of the slab
:param thickness: Thickness of the layer to draw
:param eps: Value to draw with ('epsilon'). See draw_polygons() for details.
"""
# Turn surface_normal into its integer representation
if isinstance(surface_normal, Direction):
surface_normal = surface_normal.value
if surface_normal not in range(3):
raise GridError('Invalid surface_normal direction')
if not is_scalar(center):
center = numpy.squeeze(center)
if len(center) == 3:
center = center[surface_normal]
else:
raise GridError('Bad center: {}'.format(center))
# Find center of slab
center_shift = self.center
center_shift[surface_normal] = center
surface = numpy.delete(range(3), surface_normal)
xyz_min = numpy.array([self.xyz[a][0] for a in range(3)], dtype=float)[surface]
xyz_max = numpy.array([self.xyz[a][-1] for a in range(3)], dtype=float)[surface]
dxyz = numpy.array([max(self.dxyz[i]) for i in surface], dtype=float)
xyz_min -= 4 * dxyz
xyz_max += 4 * dxyz
p = numpy.array([[xyz_min[0], xyz_max[1]],
[xyz_max[0], xyz_max[1]],
[xyz_max[0], xyz_min[1]],
[xyz_min[0], xyz_min[1]]], dtype=float)
self.draw_polygon(surface_normal, center_shift, p, thickness, eps)
def draw_cuboid(self,
center: List or numpy.ndarray,
dimensions: List or numpy.ndarray,
eps: List[float or eps_callable_type] or float or eps_callable_type):
"""
Draw an axis-aligned cuboid
:param center: 3-element ndarray or list specifying the cylinder's center
:param dimensions: 3-element list or ndarray containing the x, y, and z edge-to-edge
sizes of the cuboid
:param eps: Value to draw with ('epsilon'). See draw_polygons() for details.
"""
p = numpy.array([[-dimensions[0], +dimensions[1]],
[+dimensions[0], +dimensions[1]],
[+dimensions[0], -dimensions[1]],
[-dimensions[0], -dimensions[1]]], dtype=float) / 2.0
thickness = dimensions[2]
self.draw_polygon(Direction.z, center, p, thickness, eps)
def draw_cylinder(self,
surface_normal: Direction or int,
center: List or numpy.ndarray,
radius: float,
thickness: float,
num_points: int,
eps: List[float or eps_callable_type] or float or eps_callable_type):
"""
Draw an axis-aligned cylinder. Approximated by a num_points-gon
:param surface_normal: Axis normal to the plane we're drawing on. Can be a Direction or
integer in range(3)
:param center: 3-element ndarray or list specifying the cylinder's center
:param radius: cylinder radius
:param thickness: Thickness of the layer to draw
:param num_points: The circle is approximated by a polygon with num_points vertices
:param eps: Value to draw with ('epsilon'). See draw_polygons() for details.
"""
theta = numpy.linspace(0, 2*numpy.pi, num_points, endpoint=False)
x = radius * numpy.sin(theta)
y = radius * numpy.cos(theta)
polygon = hstack((x[:, newaxis], y[:, newaxis]))
self.draw_polygon(surface_normal, center, polygon, thickness, eps)
def draw_extrude_rectangle(self,
rectangle: List or numpy.ndarray,
direction: Direction or int,
polarity: int,
distance: float):
"""
Extrude a rectangle of a previously-drawn structure along an axis.
:param rectangle: 2x3 ndarray or list specifying the rectangle's corners
:param direction: Direction to extrude in. Direction enum or int in range(3)
:param polarity: +1 or -1, direction along axis to extrude in
:param distance: How far to extrude
"""
# Turn extrude_direction into its integer representation
if isinstance(direction, Direction):
direction = direction.value
if abs(direction) not in range(3):
raise GridError('Invalid extrude_direction')
s = numpy.sign(polarity)
surface = numpy.delete(range(3), direction)
rectangle = numpy.array(rectangle, dtype=float)
if s == 0:
raise GridError('0 is not a valid polarity')
if direction not in range(3):
raise GridError('Invalid direction: {}'.format(direction))
if rectangle[0, direction] != rectangle[1, direction]:
raise GridError('Rectangle entries along extrusion direction do not match.')
center = rectangle.sum(axis=0) / 2.0
center[direction] += s * distance / 2.0
dim = numpy.fabs(diff(rectangle, axis=0).T)[surface]
p = numpy.vstack((numpy.array([-1, -1, 1, 1], dtype=float) * dim[0]/2.0,
numpy.array([-1, 1, 1, -1], dtype=float) * dim[1]/2.0)).T
thickness = distance
eps_func = [None] * len(self.grids)
for i, grid in enumerate(self.grids):
z = self.pos2ind(rectangle[0, :], i, round_ind=False, check_bounds=False)[direction]
ind = [int(floor(z)) if i == direction else slice(None) for i in range(3)]
fpart = z - floor(z)
mult = [1-fpart, fpart][::s] # reverses if s negative
eps = mult[0] * grid[ind]
ind[direction] += 1
eps += mult[1] * grid[ind]
def f_eps(xs, ys, zs):
# transform from natural position to index
xyzi = numpy.array([self.pos2ind(qrs, which_shifts=i)
for qrs in zip(xs.flat, ys.flat, zs.flat)], dtype=int)
# reshape to original shape and keep only in-plane components
(qi, ri) = [numpy.reshape(xyzi[:, k], xs.shape) for k in surface]
return eps[qi, ri]
eps_func[i] = f_eps
self.draw_polygon(direction, center, p, thickness, eps_func)

@ -7,15 +7,10 @@ import pickle
import warnings import warnings
import copy import copy
from float_raster import raster
# .visualize_* uses matplotlib
# .visualize_isosurface uses skimage
# .visualize_isosurface uses mpl_toolkits.mplot3d
from . import GridError, Direction from . import GridError, Direction
from ._helpers import is_scalar from ._helpers import is_scalar
__author__ = 'Jan Petykiewicz' __author__ = 'Jan Petykiewicz'
eps_callable_type = Callable[[numpy.ndarray, numpy.ndarray, numpy.ndarray], numpy.ndarray] eps_callable_type = Callable[[numpy.ndarray, numpy.ndarray, numpy.ndarray], numpy.ndarray]
@ -68,6 +63,11 @@ class Grid(object):
[1, 0, 1], [1, 0, 1],
[1, 1, 0]], dtype=float) # type: numpy.ndarray [1, 1, 0]], dtype=float) # type: numpy.ndarray
from .draw import draw_polygons, draw_polygon, draw_slab, draw_cuboid, \
draw_cylinder, draw_extrude_rectangle
from .read import get_slice, visualize_slice, visualize_isosurface
from .position import ind2pos, pos2ind
@property @property
def dxyz(self) -> List[numpy.ndarray]: def dxyz(self) -> List[numpy.ndarray]:
""" """
@ -200,98 +200,6 @@ class Grid(object):
raise GridError('autoshifting requires exactly 3 grids') raise GridError('autoshifting requires exactly 3 grids')
return [self.shifted_dxyz(which_shifts=a)[a] for a in range(3)] return [self.shifted_dxyz(which_shifts=a)[a] for a in range(3)]
def ind2pos(self,
ind: numpy.ndarray or List,
which_shifts: int = None,
round_ind: bool = True,
check_bounds: bool = True
) -> numpy.ndarray:
"""
Returns the natural position corresponding to the specified cell center indices.
The resulting position is clipped to the bounds of the grid
(to cell centers if round_ind=True, or cell outer edges if round_ind=False)
:param ind: Indices of the position. Can be fractional. (3-element ndarray or list)
:param which_shifts: which grid number (shifts) to use
:param round_ind: Whether to round ind to the nearest integer position before indexing
(default True)
:param check_bounds: Whether to raise an GridError if the provided ind is outside of
the grid, as defined above (centers if round_ind, else edges) (default True)
:return: 3-element ndarray specifying the natural position
:raises: GridError
"""
if which_shifts is not None and which_shifts >= self.shifts.shape[0]:
raise GridError('Invalid shifts')
ind = numpy.array(ind, dtype=float)
if check_bounds:
if round_ind:
low_bound = 0.0
high_bound = -1
else:
low_bound = -0.5
high_bound = -0.5
if (ind < low_bound).any() or (ind > self.shape - high_bound).any():
raise GridError('Position outside of grid: {}'.format(ind))
if round_ind:
rind = numpy.clip(numpy.round(ind).astype(int), 0, self.shape - 1)
sxyz = self.shifted_xyz(which_shifts)
position = [sxyz[a][rind[a]].astype(int) for a in range(3)]
else:
sexyz = self.shifted_exyz(which_shifts)
position = [numpy.interp(ind[a], numpy.arange(sexyz[a].size) - 0.5, sexyz[a])
for a in range(3)]
return numpy.array(position, dtype=float)
def pos2ind(self,
r: numpy.ndarray or List,
which_shifts: int or None,
round_ind: bool=True,
check_bounds: bool=True
) -> numpy.ndarray:
"""
Returns the cell-center indices corresponding to the specified natural position.
The resulting position is clipped to within the outer centers of the grid.
:param r: Natural position that we will convert into indices (3-element ndarray or list)
:param which_shifts: which grid number (shifts) to use
:param round_ind: Whether to round the returned indices to the nearest integers.
:param check_bounds: Whether to throw an GridError if r is outside the grid edges
:return: 3-element ndarray specifying the indices
:raises: GridError
"""
r = numpy.squeeze(r)
if r.size != 3:
raise GridError('r must be 3-element vector: {}'.format(r))
if (which_shifts is not None) and (which_shifts >= self.shifts.shape[0]):
raise GridError('Invalid which_shifts: {}'.format(which_shifts))
sexyz = self.shifted_exyz(which_shifts)
if check_bounds:
for a in range(3):
if self.shape[a] > 1 and (r[a] < sexyz[a][0] or r[a] > sexyz[a][-1]):
raise GridError('Position[{}] outside of grid!'.format(a))
grid_pos = zeros((3,))
for a in range(3):
xi = numpy.digitize(r[a], sexyz[a]) - 1 # Figure out which cell we're in
xi_clipped = numpy.clip(xi, 0, sexyz[a].size - 2) # Clip back into grid bounds
# No need to interpolate if round_ind is true or we were outside the grid
if round_ind or xi != xi_clipped:
grid_pos[a] = xi_clipped
else:
# Interpolate
x = self.shifted_xyz(which_shifts)[a][xi]
dx = self.shifted_dxyz(which_shifts)[a][xi]
f = (r[a] - x) / dx
# Clip to centers
grid_pos[a] = numpy.clip(xi + f, 0, self.shape[a] - 1)
return grid_pos
def __init__(self, def __init__(self,
pixel_edge_coordinates: List[List or numpy.ndarray], pixel_edge_coordinates: List[List or numpy.ndarray],
@ -400,497 +308,3 @@ class Grid(object):
""" """
return copy.deepcopy(self) return copy.deepcopy(self)
def draw_polygons(self,
surface_normal: Direction or int,
center: List or numpy.ndarray,
polygons: List[numpy.ndarray or List],
thickness: float,
eps: List[float or eps_callable_type] or float or eps_callable_type):
"""
Draw polygons on an axis-aligned plane.
:param surface_normal: Axis normal to the plane we're drawing on. Can be a Direction or
integer in range(3)
:param center: 3-element ndarray or list specifying an offset applied to all the polygons
:param polygons: List of Nx2 or Nx3 ndarrays, each specifying the vertices of a polygon
(non-closed, clockwise). If Nx3, the surface_normal coordinate is ignored. Each polygon
must have at least 3 vertices.
:param thickness: Thickness of the layer to draw
:param eps: Value to draw with ('epsilon'). Can be scalar, callable, or a list
of any of these (1 per grid). Callable values should take ndarrays x, y, z of equal
shape and return an ndarray of equal shape containing the eps value at the given x, y,
and z (natural, not grid coordinates).
:raises: GridError
"""
# Turn surface_normal into its integer representation
if isinstance(surface_normal, Direction):
surface_normal = surface_normal.value
if surface_normal not in range(3):
raise GridError('Invalid surface_normal direction')
center = numpy.squeeze(center)
# Check polygons, and remove redundant coordinates
surface = numpy.delete(range(3), surface_normal)
for i, polygon in enumerate(polygons):
malformed = 'Malformed polygon: (%i)' % i
if polygon.shape[1] not in (2, 3):
raise GridError(malformed + 'must be a Nx2 or Nx3 ndarray')
if polygon.shape[1] == 3:
polygon = polygon[surface, :]
if not polygon.shape[0] > 2:
raise GridError(malformed + 'must consist of more than 2 points')
if polygon.ndim > 2 and not numpy.unique(polygon[:, surface_normal]).size == 1:
raise GridError(malformed + 'must be in plane with surface normal %s'
% 'xyz'[surface_normal])
# Broadcast eps where necessary
if is_scalar(eps):
eps = [eps] * len(self.grids)
elif isinstance(eps, numpy.ndarray):
raise GridError('ndarray not supported for eps')
# ## Compute sub-domain of the grid occupied by polygons
# 1) Compute outer bounds (bd) of polygons
bd_2d_min = [0, 0]
bd_2d_max = [0, 0]
for polygon in polygons:
bd_2d_min = numpy.minimum(bd_2d_min, polygon.min(axis=0))
bd_2d_max = numpy.maximum(bd_2d_max, polygon.max(axis=0))
bd_min = numpy.insert(bd_2d_min, surface_normal, -thickness / 2.0) + center
bd_max = numpy.insert(bd_2d_max, surface_normal, +thickness / 2.0) + center
# 2) Find indices (bdi) just outside bd elements
buf = 2 # size of safety buffer
# Use s_min and s_max with unshifted pos2ind to get absolute limits on
# the indices the polygons might affect
s_min = self.shifts.min(axis=0)
s_max = self.shifts.max(axis=0)
bdi_min = self.pos2ind(bd_min + s_min, None, round_ind=False, check_bounds=False) - buf
bdi_max = self.pos2ind(bd_max + s_max, None, round_ind=False, check_bounds=False) + buf
bdi_min = numpy.maximum(floor(bdi_min), 0).astype(int)
bdi_max = numpy.minimum(ceil(bdi_max), self.shape - 1).astype(int)
# 3) Adjust polygons for center
polygons = [poly + center[surface] for poly in polygons]
# iterate over grids
for (i, grid) in enumerate(self.grids):
# ## Evaluate or expand eps[i]
if callable(eps[i]):
# meshgrid over the (shifted) domain
domain = [self.shifted_xyz(i)[k][bdi_min[k]:bdi_max[k]+1] for k in range(3)]
(x0, y0, z0) = numpy.meshgrid(*domain, indexing='ij')
# evaluate on the meshgrid
eps[i] = eps[i](x0, y0, z0)
if not numpy.isfinite(eps[i]).all():
raise GridError('Non-finite values in eps[%u]' % i)
elif not is_scalar(eps[i]):
raise GridError('Unsupported eps[{}]: {}'.format(i, type(eps[i])))
# do nothing if eps[i] is scalar non-callable
# ## Generate weighing function
def to_3d(vector: List or numpy.ndarray, val: float=0.0):
return numpy.insert(vector, surface_normal, (val,))
w_xy = zeros((bdi_max - bdi_min + 1)[surface].astype(int))
# Draw each polygon separately
for polygon in polygons:
# Get the boundaries of the polygon
pbd_min = polygon.min(axis=0)
pbd_max = polygon.max(axis=0)
# Find indices in w_xy just outside polygon
# using per-grid xy-weights (self.shifted_xyz())
corner_min = self.pos2ind(to_3d(pbd_min), i,
check_bounds=False)[surface].astype(int)
corner_max = self.pos2ind(to_3d(pbd_max), i,
check_bounds=False)[surface].astype(int)
# Find indices in w_xy which are modified by polygon
# First for the edge coordinates (+1 since we're indexing edges)
edge_slices = [numpy.s_[i:f + 2] for i, f in zip(corner_min, corner_max)]
# Then for the pixel centers (-bdi_min since we're
# calculating weights within a subspace)
centers_slice = [numpy.s_[i:f + 1] for i, f in zip(corner_min - bdi_min[surface],
corner_max - bdi_min[surface])]
aa_x, aa_y = (self.shifted_exyz(i)[a][s] for a, s in zip(surface, edge_slices))
w_xy[centers_slice] += raster(polygon.T, aa_x, aa_y)
# Clamp overlapping polygons to 1
w_xy = numpy.minimum(w_xy, 1.0)
# 2) Generate weights in z-direction
w_z = numpy.zeros(((bdi_max - bdi_min + 1)[surface_normal], ))
def get_zi(offset):
pos_3d = to_3d([0, 0], center[surface_normal] + offset)
grid_coords = self.pos2ind(pos_3d, i, check_bounds=False, round_ind=False)
w_coord_fp = (grid_coords - bdi_min)[surface_normal] + 0.5
w_coord = floor(w_coord_fp).astype(int)
return w_coord_fp, w_coord
zi_top_fp, zi_top = get_zi(+thickness / 2.0)
zi_bot_fp, zi_bot = get_zi(-thickness / 2.0)
w_z[zi_bot:zi_top + 1] = 1
if zi_top_fp != zi_top < self.shape[surface_normal]:
f = zi_top_fp - zi_top
w_z[zi_top] = f
if zi_bot_fp != zi_bot > -1:
f = zi_bot_fp - zi_bot
w_z[zi_bot] = 1 - f
# 3) Generate total weight function
w = (w_xy[:, :, newaxis] * w_z).transpose(numpy.insert([0, 1], surface_normal, (2,)))
# ## Modify the grid
g_slice = [numpy.s_[bdi_min[a]:bdi_max[a] + 1] for a in range(3)]
self.grids[i][g_slice] = (1 - w) * self.grids[i][g_slice] + w * eps[i]
def draw_polygon(self,
surface_normal: Direction or int,
center: List or numpy.ndarray,
polygon: List or numpy.ndarray,
thickness: float,
eps: List[float or eps_callable_type] or float or eps_callable_type):
"""
Draw a polygon on an axis-aligned plane.
:param surface_normal: Axis normal to the plane we're drawing on. Can be a Direction or
integer in range(3)
:param center: 3-element ndarray or list specifying an offset applied to the polygon
:param polygon: Nx2 or Nx3 ndarray specifying the vertices of a polygon (non-closed,
clockwise). If Nx3, the surface_normal coordinate is ignored. Must have at least 3
vertices.
:param thickness: Thickness of the layer to draw
:param eps: Value to draw with ('epsilon'). See draw_polygons() for details.
"""
self.draw_polygons(surface_normal, center, [polygon], thickness, eps)
def draw_slab(self,
surface_normal: Direction or int,
center: List or numpy.ndarray,
thickness: float,
eps: List[float or eps_callable_type] or float or eps_callable_type):
"""
Draw an axis-aligned infinite slab.
:param surface_normal: Axis normal to the plane we're drawing on. Can be a Direction or
integer in range(3)
:param center: Surface_normal coordinate at the center of the slab
:param thickness: Thickness of the layer to draw
:param eps: Value to draw with ('epsilon'). See draw_polygons() for details.
"""
# Turn surface_normal into its integer representation
if isinstance(surface_normal, Direction):
surface_normal = surface_normal.value
if surface_normal not in range(3):
raise GridError('Invalid surface_normal direction')
if not is_scalar(center):
center = numpy.squeeze(center)
if len(center) == 3:
center = center[surface_normal]
else:
raise GridError('Bad center: {}'.format(center))
# Find center of slab
center_shift = self.center
center_shift[surface_normal] = center
surface = numpy.delete(range(3), surface_normal)
xyz_min = numpy.array([self.xyz[a][0] for a in range(3)], dtype=float)[surface]
xyz_max = numpy.array([self.xyz[a][-1] for a in range(3)], dtype=float)[surface]
dxyz = numpy.array([max(self.dxyz[i]) for i in surface], dtype=float)
xyz_min -= 4 * dxyz
xyz_max += 4 * dxyz
p = numpy.array([[xyz_min[0], xyz_max[1]],
[xyz_max[0], xyz_max[1]],
[xyz_max[0], xyz_min[1]],
[xyz_min[0], xyz_min[1]]], dtype=float)
self.draw_polygon(surface_normal, center_shift, p, thickness, eps)
# TODO: TEST ME!
def draw_cuboid(self,
center: List or numpy.ndarray,
dimensions: List or numpy.ndarray,
eps: List[float or eps_callable_type] or float or eps_callable_type):
"""
Draw an axis-aligned cuboid
:param center: 3-element ndarray or list specifying the cylinder's center
:param dimensions: 3-element list or ndarray containing the x, y, and z edge-to-edge
sizes of the cuboid
:param eps: Value to draw with ('epsilon'). See draw_polygons() for details.
"""
p = numpy.array([[-dimensions[0], +dimensions[1]],
[+dimensions[0], +dimensions[1]],
[+dimensions[0], -dimensions[1]],
[-dimensions[0], -dimensions[1]]], dtype=float) / 2.0
thickness = dimensions[2]
self.draw_polygon(Direction.z, center, p, thickness, eps)
def draw_cylinder(self,
surface_normal: Direction or int,
center: List or numpy.ndarray,
radius: float,
thickness: float,
num_points: int,
eps: List[float or eps_callable_type] or float or eps_callable_type):
"""
Draw an axis-aligned cylinder. Approximated by a num_points-gon
:param surface_normal: Axis normal to the plane we're drawing on. Can be a Direction or
integer in range(3)
:param center: 3-element ndarray or list specifying the cylinder's center
:param radius: cylinder radius
:param thickness: Thickness of the layer to draw
:param num_points: The circle is approximated by a polygon with num_points vertices
:param eps: Value to draw with ('epsilon'). See draw_polygons() for details.
"""
theta = numpy.linspace(0, 2*numpy.pi, num_points, endpoint=False)
x = radius * numpy.sin(theta)
y = radius * numpy.cos(theta)
polygon = hstack((x[:, newaxis], y[:, newaxis]))
self.draw_polygon(surface_normal, center, polygon, thickness, eps)
def draw_extrude_rectangle(self,
rectangle: List or numpy.ndarray,
direction: Direction or int,
polarity: int,
distance: float):
"""
Extrude a rectangle of a previously-drawn structure along an axis.
:param rectangle: 2x3 ndarray or list specifying the rectangle's corners
:param direction: Direction to extrude in. Direction enum or int in range(3)
:param polarity: +1 or -1, direction along axis to extrude in
:param distance: How far to extrude
"""
# Turn extrude_direction into its integer representation
if isinstance(direction, Direction):
direction = direction.value
if abs(direction) not in range(3):
raise GridError('Invalid extrude_direction')
s = numpy.sign(polarity)
surface = numpy.delete(range(3), direction)
rectangle = numpy.array(rectangle, dtype=float)
if s == 0:
raise GridError('0 is not a valid polarity')
if direction not in range(3):
raise GridError('Invalid direction: {}'.format(direction))
if rectangle[0, direction] != rectangle[1, direction]:
raise GridError('Rectangle entries along extrusion direction do not match.')
center = rectangle.sum(axis=0) / 2.0
center[direction] += s * distance / 2.0
dim = numpy.fabs(diff(rectangle, axis=0).T)[surface]
p = numpy.vstack((numpy.array([-1, -1, 1, 1], dtype=float) * dim[0]/2.0,
numpy.array([-1, 1, 1, -1], dtype=float) * dim[1]/2.0)).T
thickness = distance
eps_func = [None] * len(self.grids)
for i, grid in enumerate(self.grids):
z = self.pos2ind(rectangle[0, :], i, round_ind=False, check_bounds=False)[direction]
ind = [int(floor(z)) if i == direction else slice(None) for i in range(3)]
fpart = z - floor(z)
mult = [1-fpart, fpart][::s] # reverses if s negative
eps = mult[0] * grid[ind]
ind[direction] += 1
eps += mult[1] * grid[ind]
def f_eps(xs, ys, zs):
# transform from natural position to index
xyzi = numpy.array([self.pos2ind(qrs, which_shifts=i)
for qrs in zip(xs.flat, ys.flat, zs.flat)], dtype=int)
# reshape to original shape and keep only in-plane components
(qi, ri) = [numpy.reshape(xyzi[:, k], xs.shape) for k in surface]
return eps[qi, ri]
eps_func[i] = f_eps
self.draw_polygon(direction, center, p, thickness, eps_func)
def get_slice(self,
surface_normal: Direction or int,
center: float,
which_shifts: int = 0,
sample_period: int = 1
) -> numpy.ndarray:
"""
Retrieve a slice of a grid.
Interpolates if given a position between two planes.
:param surface_normal: Axis normal to the plane we're displaying. Can be a Direction or
integer in range(3)
:param center: Scalar specifying position along surface_normal axis.
:param which_shifts: Which grid to display. Default is the first grid (0).
:param sample_period: Period for down-sampling the image. Default 1 (disabled)
:return Array containing the portion of the grid.
"""
if not is_scalar(center) and numpy.isreal(center):
raise GridError('center must be a real scalar')
sp = round(sample_period)
if sp <= 0:
raise GridError('sample_period must be positive')
if not is_scalar(which_shifts) or which_shifts < 0:
raise GridError('Invalid which_shifts')
# Turn surface_normal into its integer representation
if isinstance(surface_normal, Direction):
surface_normal = surface_normal.value
if surface_normal not in range(3):
raise GridError('Invalid surface_normal direction')
surface = numpy.delete(range(3), surface_normal)
# Extract indices and weights of planes
center3 = numpy.insert([0, 0], surface_normal, (center,))
center_index = self.pos2ind(center3, which_shifts,
round_ind=False, check_bounds=False)[surface_normal]
centers = numpy.unique([floor(center_index), ceil(center_index)]).astype(int)
if len(centers) == 2:
fpart = center_index - floor(center_index)
w = [1 - fpart, fpart] # longer distance -> less weight
else:
w = [1]
c_min, c_max = (self.xyz[surface_normal][i] for i in [0, -1])
if center < c_min or center > c_max:
raise GridError('Coordinate of selected plane must be within simulation domain')
# Extract grid values from planes above and below visualized slice
sliced_grid = zeros(self.shape[surface])
for ci, weight in zip(centers, w):
s = tuple(ci if a == surface_normal else numpy.s_[::sp] for a in range(3))
sliced_grid += weight * self.grids[which_shifts][tuple(s)]
# Remove extra dimensions
sliced_grid = numpy.squeeze(sliced_grid)
return sliced_grid
def visualize_slice(self,
surface_normal: Direction or int,
center: float,
which_shifts: int = 0,
sample_period: int = 1,
finalize: bool = True,
pcolormesh_args: Dict = None):
"""
Visualize a slice of a grid.
Interpolates if given a position between two planes.
:param surface_normal: Axis normal to the plane we're displaying. Can be a Direction or
integer in range(3)
:param center: Scalar specifying position along surface_normal axis.
:param which_shifts: Which grid to display. Default is the first grid (0).
:param sample_period: Period for down-sampling the image. Default 1 (disabled)
:param finalize: Whether to call pyplot.show() after constructing the plot. Default True
"""
from matplotlib import pyplot
# Set surface normal to its integer value
if isinstance(surface_normal, Direction):
surface_normal = surface_normal.value
if pcolormesh_args is None:
pcolormesh_args = {}
grid_slice = self.get_slice(surface_normal=surface_normal,
center=center,
which_shifts=which_shifts,
sample_period=sample_period)
surface = numpy.delete(range(3), surface_normal)
x, y = (self.shifted_exyz(which_shifts)[a] for a in surface)
xmesh, ymesh = numpy.meshgrid(x, y, indexing='ij')
x_label, y_label = ('xyz'[a] for a in surface)
pyplot.figure()
pyplot.pcolormesh(xmesh, ymesh, grid_slice, **pcolormesh_args)
pyplot.colorbar()
pyplot.gca().set_aspect('equal', adjustable='box')
pyplot.xlabel(x_label)
pyplot.ylabel(y_label)
if finalize:
pyplot.show()
def visualize_isosurface(self,
level: float = None,
which_shifts: int = 0,
sample_period: int = 1,
show_edges: bool = True,
finalize: bool = True):
"""
Draw an isosurface plot of the device.
:param level: Value at which to find isosurface. Default (None) uses mean value in grid.
:param which_shifts: Which grid to display. Default is the first grid (0).
:param sample_period: Period for down-sampling the image. Default 1 (disabled)
:param show_edges: Whether to draw triangle edges. Default True
:param finalize: Whether to call pyplot.show() after constructing the plot. Default True
"""
from matplotlib import pyplot
import skimage.measure
# Claims to be unused, but needed for subplot(projection='3d')
from mpl_toolkits.mplot3d import Axes3D
# Get data from self.grids
grid = self.grids[which_shifts][::sample_period, ::sample_period, ::sample_period]
if level is None:
level = grid.mean()
# Find isosurface with marching cubes
verts, faces = skimage.measure.marching_cubes(grid, level)
# Convert vertices from index to position
pos_verts = numpy.array([self.ind2pos(verts[i, :], which_shifts, round_ind=False)
for i in range(verts.shape[0])], dtype=float)
xs, ys, zs = (pos_verts[:, a] for a in range(3))
# Draw the plot
fig = pyplot.figure()
ax = fig.add_subplot(111, projection='3d')
if show_edges:
ax.plot_trisurf(xs, ys, faces, zs)
else:
ax.plot_trisurf(xs, ys, faces, zs, edgecolor='none')
# Add a fake plot of a cube to force the axes to be equal lengths
max_range = numpy.array([xs.max() - xs.min(),
ys.max() - ys.min(),
zs.max() - zs.min()], dtype=float).max()
mg = numpy.mgrid[-1:2:2, -1:2:2, -1:2:2]
xbs = 0.5 * max_range * mg[0].flatten() + 0.5 * (xs.max() + xs.min())
ybs = 0.5 * max_range * mg[1].flatten() + 0.5 * (ys.max() + ys.min())
zbs = 0.5 * max_range * mg[2].flatten() + 0.5 * (zs.max() + zs.min())
# Comment or uncomment following both lines to test the fake bounding box:
for xb, yb, zb in zip(xbs, ybs, zbs):
ax.plot([xb], [yb], [zb], 'w')
if finalize:
pyplot.show()

@ -0,0 +1,105 @@
"""
Position-related methods for Grid class
"""
from typing import List
import numpy
from numpy import zeros
from . import GridError
def ind2pos(self,
ind: numpy.ndarray or List,
which_shifts: int = None,
round_ind: bool = True,
check_bounds: bool = True
) -> numpy.ndarray:
"""
Returns the natural position corresponding to the specified cell center indices.
The resulting position is clipped to the bounds of the grid
(to cell centers if round_ind=True, or cell outer edges if round_ind=False)
:param ind: Indices of the position. Can be fractional. (3-element ndarray or list)
:param which_shifts: which grid number (shifts) to use
:param round_ind: Whether to round ind to the nearest integer position before indexing
(default True)
:param check_bounds: Whether to raise an GridError if the provided ind is outside of
the grid, as defined above (centers if round_ind, else edges) (default True)
:return: 3-element ndarray specifying the natural position
:raises: GridError
"""
if which_shifts is not None and which_shifts >= self.shifts.shape[0]:
raise GridError('Invalid shifts')
ind = numpy.array(ind, dtype=float)
if check_bounds:
if round_ind:
low_bound = 0.0
high_bound = -1
else:
low_bound = -0.5
high_bound = -0.5
if (ind < low_bound).any() or (ind > self.shape - high_bound).any():
raise GridError('Position outside of grid: {}'.format(ind))
if round_ind:
rind = numpy.clip(numpy.round(ind).astype(int), 0, self.shape - 1)
sxyz = self.shifted_xyz(which_shifts)
position = [sxyz[a][rind[a]].astype(int) for a in range(3)]
else:
sexyz = self.shifted_exyz(which_shifts)
position = [numpy.interp(ind[a], numpy.arange(sexyz[a].size) - 0.5, sexyz[a])
for a in range(3)]
return numpy.array(position, dtype=float)
def pos2ind(self,
r: numpy.ndarray or List,
which_shifts: int or None,
round_ind: bool=True,
check_bounds: bool=True
) -> numpy.ndarray:
"""
Returns the cell-center indices corresponding to the specified natural position.
The resulting position is clipped to within the outer centers of the grid.
:param r: Natural position that we will convert into indices (3-element ndarray or list)
:param which_shifts: which grid number (shifts) to use
:param round_ind: Whether to round the returned indices to the nearest integers.
:param check_bounds: Whether to throw an GridError if r is outside the grid edges
:return: 3-element ndarray specifying the indices
:raises: GridError
"""
r = numpy.squeeze(r)
if r.size != 3:
raise GridError('r must be 3-element vector: {}'.format(r))
if (which_shifts is not None) and (which_shifts >= self.shifts.shape[0]):
raise GridError('Invalid which_shifts: {}'.format(which_shifts))
sexyz = self.shifted_exyz(which_shifts)
if check_bounds:
for a in range(3):
if self.shape[a] > 1 and (r[a] < sexyz[a][0] or r[a] > sexyz[a][-1]):
raise GridError('Position[{}] outside of grid!'.format(a))
grid_pos = zeros((3,))
for a in range(3):
xi = numpy.digitize(r[a], sexyz[a]) - 1 # Figure out which cell we're in
xi_clipped = numpy.clip(xi, 0, sexyz[a].size - 2) # Clip back into grid bounds
# No need to interpolate if round_ind is true or we were outside the grid
if round_ind or xi != xi_clipped:
grid_pos[a] = xi_clipped
else:
# Interpolate
x = self.shifted_xyz(which_shifts)[a][xi]
dx = self.shifted_dxyz(which_shifts)[a][xi]
f = (r[a] - x) / dx
# Clip to centers
grid_pos[a] = numpy.clip(xi + f, 0, self.shape[a] - 1)
return grid_pos

@ -0,0 +1,181 @@
"""
Readback and visualization methods for Grid class
"""
from typing import Dict
import numpy
from numpy import floor, ceil, zeros
from . import GridError, Direction
from ._helpers import is_scalar
# .visualize_* uses matplotlib
# .visualize_isosurface uses skimage
# .visualize_isosurface uses mpl_toolkits.mplot3d
def get_slice(self,
surface_normal: Direction or int,
center: float,
which_shifts: int = 0,
sample_period: int = 1
) -> numpy.ndarray:
"""
Retrieve a slice of a grid.
Interpolates if given a position between two planes.
:param surface_normal: Axis normal to the plane we're displaying. Can be a Direction or
integer in range(3)
:param center: Scalar specifying position along surface_normal axis.
:param which_shifts: Which grid to display. Default is the first grid (0).
:param sample_period: Period for down-sampling the image. Default 1 (disabled)
:return Array containing the portion of the grid.
"""
if not is_scalar(center) and numpy.isreal(center):
raise GridError('center must be a real scalar')
sp = round(sample_period)
if sp <= 0:
raise GridError('sample_period must be positive')
if not is_scalar(which_shifts) or which_shifts < 0:
raise GridError('Invalid which_shifts')
# Turn surface_normal into its integer representation
if isinstance(surface_normal, Direction):
surface_normal = surface_normal.value
if surface_normal not in range(3):
raise GridError('Invalid surface_normal direction')
surface = numpy.delete(range(3), surface_normal)
# Extract indices and weights of planes
center3 = numpy.insert([0, 0], surface_normal, (center,))
center_index = self.pos2ind(center3, which_shifts,
round_ind=False, check_bounds=False)[surface_normal]
centers = numpy.unique([floor(center_index), ceil(center_index)]).astype(int)
if len(centers) == 2:
fpart = center_index - floor(center_index)
w = [1 - fpart, fpart] # longer distance -> less weight
else:
w = [1]
c_min, c_max = (self.xyz[surface_normal][i] for i in [0, -1])
if center < c_min or center > c_max:
raise GridError('Coordinate of selected plane must be within simulation domain')
# Extract grid values from planes above and below visualized slice
sliced_grid = zeros(self.shape[surface])
for ci, weight in zip(centers, w):
s = tuple(ci if a == surface_normal else numpy.s_[::sp] for a in range(3))
sliced_grid += weight * self.grids[which_shifts][tuple(s)]
# Remove extra dimensions
sliced_grid = numpy.squeeze(sliced_grid)
return sliced_grid
def visualize_slice(self,
surface_normal: Direction or int,
center: float,
which_shifts: int = 0,
sample_period: int = 1,
finalize: bool = True,
pcolormesh_args: Dict = None):
"""
Visualize a slice of a grid.
Interpolates if given a position between two planes.
:param surface_normal: Axis normal to the plane we're displaying. Can be a Direction or
integer in range(3)
:param center: Scalar specifying position along surface_normal axis.
:param which_shifts: Which grid to display. Default is the first grid (0).
:param sample_period: Period for down-sampling the image. Default 1 (disabled)
:param finalize: Whether to call pyplot.show() after constructing the plot. Default True
"""
from matplotlib import pyplot
# Set surface normal to its integer value
if isinstance(surface_normal, Direction):
surface_normal = surface_normal.value
if pcolormesh_args is None:
pcolormesh_args = {}
grid_slice = self.get_slice(surface_normal=surface_normal,
center=center,
which_shifts=which_shifts,
sample_period=sample_period)
surface = numpy.delete(range(3), surface_normal)
x, y = (self.shifted_exyz(which_shifts)[a] for a in surface)
xmesh, ymesh = numpy.meshgrid(x, y, indexing='ij')
x_label, y_label = ('xyz'[a] for a in surface)
pyplot.figure()
pyplot.pcolormesh(xmesh, ymesh, grid_slice, **pcolormesh_args)
pyplot.colorbar()
pyplot.gca().set_aspect('equal', adjustable='box')
pyplot.xlabel(x_label)
pyplot.ylabel(y_label)
if finalize:
pyplot.show()
def visualize_isosurface(self,
level: float = None,
which_shifts: int = 0,
sample_period: int = 1,
show_edges: bool = True,
finalize: bool = True):
"""
Draw an isosurface plot of the device.
:param level: Value at which to find isosurface. Default (None) uses mean value in grid.
:param which_shifts: Which grid to display. Default is the first grid (0).
:param sample_period: Period for down-sampling the image. Default 1 (disabled)
:param show_edges: Whether to draw triangle edges. Default True
:param finalize: Whether to call pyplot.show() after constructing the plot. Default True
"""
from matplotlib import pyplot
import skimage.measure
# Claims to be unused, but needed for subplot(projection='3d')
from mpl_toolkits.mplot3d import Axes3D
# Get data from self.grids
grid = self.grids[which_shifts][::sample_period, ::sample_period, ::sample_period]
if level is None:
level = grid.mean()
# Find isosurface with marching cubes
verts, faces = skimage.measure.marching_cubes(grid, level)
# Convert vertices from index to position
pos_verts = numpy.array([self.ind2pos(verts[i, :], which_shifts, round_ind=False)
for i in range(verts.shape[0])], dtype=float)
xs, ys, zs = (pos_verts[:, a] for a in range(3))
# Draw the plot
fig = pyplot.figure()
ax = fig.add_subplot(111, projection='3d')
if show_edges:
ax.plot_trisurf(xs, ys, faces, zs)
else:
ax.plot_trisurf(xs, ys, faces, zs, edgecolor='none')
# Add a fake plot of a cube to force the axes to be equal lengths
max_range = numpy.array([xs.max() - xs.min(),
ys.max() - ys.min(),
zs.max() - zs.min()], dtype=float).max()
mg = numpy.mgrid[-1:2:2, -1:2:2, -1:2:2]
xbs = 0.5 * max_range * mg[0].flatten() + 0.5 * (xs.max() + xs.min())
ybs = 0.5 * max_range * mg[1].flatten() + 0.5 * (ys.max() + ys.min())
zbs = 0.5 * max_range * mg[2].flatten() + 0.5 * (zs.max() + zs.min())
# Comment or uncomment following both lines to test the fake bounding box:
for xb, yb, zb in zip(xbs, ybs, zbs):
ax.plot([xb], [yb], [zb], 'w')
if finalize:
pyplot.show()
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