240 lines
7.1 KiB
Python
240 lines
7.1 KiB
Python
from typing import List, Callable, Tuple, Dict
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import numpy
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from . import dx_lists_t, field_t
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__author__ = 'Jan Petykiewicz'
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functional_matrix = Callable[[field_t], field_t]
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def curl_h(dxes: dx_lists_t = None) -> functional_matrix:
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"""
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Curl operator for use with the H field.
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:param dxes: Grid parameters [dx_e, dx_h] as described in fdfd_tools.operators header
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:return: Function for taking the discretized curl of the H-field, F(H) -> curlH
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"""
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if dxes:
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dxyz_b = numpy.meshgrid(*dxes[1], indexing='ij')
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def dh(f, ax):
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return (f - numpy.roll(f, 1, axis=ax)) / dxyz_b[ax]
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else:
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def dh(f, ax):
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return f - numpy.roll(f, 1, axis=ax)
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def ch_fun(h: field_t) -> field_t:
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e = [dh(h[2], 1) - dh(h[1], 2),
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dh(h[0], 2) - dh(h[2], 0),
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dh(h[1], 0) - dh(h[0], 1)]
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return e
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return ch_fun
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def curl_e(dxes: dx_lists_t = None) -> functional_matrix:
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"""
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Curl operator for use with the E field.
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:param dxes: Grid parameters [dx_e, dx_h] as described in fdfd_tools.operators header
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:return: Function for taking the discretized curl of the E-field, F(E) -> curlE
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"""
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if dxes is not None:
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dxyz_a = numpy.meshgrid(*dxes[0], indexing='ij')
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def de(f, ax):
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return (numpy.roll(f, -1, axis=ax) - f) / dxyz_a[ax]
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else:
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def de(f, ax):
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return numpy.roll(f, -1, axis=ax) - f
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def ce_fun(e: field_t) -> field_t:
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h = [de(e[2], 1) - de(e[1], 2),
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de(e[0], 2) - de(e[2], 0),
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de(e[1], 0) - de(e[0], 1)]
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return h
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return ce_fun
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def maxwell_e(dt: float, dxes: dx_lists_t = None) -> functional_matrix:
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curl_h_fun = curl_h(dxes)
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def me_fun(e: field_t, h: field_t, epsilon: field_t):
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ch = curl_h_fun(h)
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for ei, ci, epsi in zip(e, ch, epsilon):
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ei += dt * ci / epsi
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return e
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return me_fun
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def maxwell_h(dt: float, dxes: dx_lists_t = None) -> functional_matrix:
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curl_e_fun = curl_e(dxes)
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def mh_fun(e: field_t, h: field_t):
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ce = curl_e_fun(e)
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for hi, ci in zip(h, ce):
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hi -= dt * ci
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return h
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return mh_fun
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def conducting_boundary(direction: int,
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polarity: int
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) -> Tuple[functional_matrix, functional_matrix]:
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dirs = [0, 1, 2]
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if direction not in dirs:
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raise Exception('Invalid direction: {}'.format(direction))
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dirs.remove(direction)
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u, v = dirs
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if polarity < 0:
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boundary_slice = [slice(None)] * 3
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shifted1_slice = [slice(None)] * 3
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boundary_slice[direction] = 0
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shifted1_slice[direction] = 1
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def en(e: field_t):
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e[direction][boundary_slice] = 0
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e[u][boundary_slice] = e[u][shifted1_slice]
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e[v][boundary_slice] = e[v][shifted1_slice]
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return e
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def hn(h: field_t):
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h[direction][boundary_slice] = h[direction][shifted1_slice]
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h[u][boundary_slice] = 0
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h[v][boundary_slice] = 0
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return h
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return en, hn
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elif polarity > 0:
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boundary_slice = [slice(None)] * 3
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shifted1_slice = [slice(None)] * 3
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shifted2_slice = [slice(None)] * 3
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boundary_slice[direction] = -1
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shifted1_slice[direction] = -2
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shifted2_slice[direction] = -3
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def ep(e: field_t):
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e[direction][boundary_slice] = -e[direction][shifted2_slice]
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e[direction][shifted1_slice] = 0
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e[u][boundary_slice] = e[u][shifted1_slice]
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e[v][boundary_slice] = e[v][shifted1_slice]
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return e
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def hp(h: field_t):
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h[direction][boundary_slice] = h[direction][shifted1_slice]
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h[u][boundary_slice] = -h[u][shifted2_slice]
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h[u][shifted1_slice] = 0
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h[v][boundary_slice] = -h[v][shifted2_slice]
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h[v][shifted1_slice] = 0
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return h
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return ep, hp
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else:
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raise Exception('Bad polarity: {}'.format(polarity))
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def cpml(direction:int,
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polarity: int,
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dt: float,
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epsilon: field_t,
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thickness: int = 8,
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epsilon_eff: float = 1,
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dtype: numpy.dtype = numpy.float32,
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) -> Tuple[Callable, Callable, Dict[str, field_t]]:
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if direction not in range(3):
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raise Exception('Invalid direction: {}'.format(direction))
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if polarity not in (-1, 1):
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raise Exception('Invalid polarity: {}'.format(polarity))
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if thickness <= 2:
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raise Exception('It would be wise to have a pml with 4+ cells of thickness')
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if epsilon_eff <= 0:
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raise Exception('epsilon_eff must be positive')
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m = (3.5, 1)
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sigma_max = 0.8 * (m[0] + 1) / numpy.sqrt(epsilon_eff)
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alpha_max = 0 # TODO: Decide what to do about non-zero alpha
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transverse = numpy.delete(range(3), direction)
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u, v = transverse
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xe = numpy.arange(1, thickness+1, dtype=float)
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xh = numpy.arange(1, thickness+1, dtype=float)
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if polarity > 0:
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xe -= 0.5
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elif polarity < 0:
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xh -= 0.5
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xe = xe[::-1]
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xh = xh[::-1]
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else:
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raise Exception('Bad polarity!')
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expand_slice = [None] * 3
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expand_slice[direction] = slice(None)
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def par(x):
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sigma = ((x / thickness) ** m[0]) * sigma_max
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alpha = ((1 - x / thickness) ** m[1]) * alpha_max
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p0 = numpy.exp(-(sigma + alpha) * dt)
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p1 = sigma / (sigma + alpha) * (p0 - 1)
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return p0[expand_slice], p1[expand_slice]
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p0e, p1e = par(xe)
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p0h, p1h = par(xh)
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region = [slice(None)] * 3
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if polarity < 0:
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region[direction] = slice(None, thickness)
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elif polarity > 0:
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region[direction] = slice(-thickness, None)
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else:
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raise Exception('Bad polarity!')
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if direction == 1:
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se = 1
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else:
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se = -1
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# TODO check if epsilon is uniform?
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shape = list(epsilon[0].shape)
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shape[direction] = thickness
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psi_e = [numpy.zeros(shape, dtype=dtype), numpy.zeros(shape, dtype=dtype)]
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psi_h = [numpy.zeros(shape, dtype=dtype), numpy.zeros(shape, dtype=dtype)]
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fields = {
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'psi_e_u': psi_e[0],
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'psi_e_v': psi_e[1],
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'psi_h_u': psi_h[0],
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'psi_h_v': psi_h[1],
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}
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def pml_e(e: field_t, h: field_t, epsilon: field_t) -> Tuple[field_t, field_t]:
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psi_e[0] *= p0e
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psi_e[0] += p1e * (h[v][region] - numpy.roll(h[v], 1, axis=direction)[region])
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psi_e[1] *= p0e
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psi_e[1] += p1e * (h[u][region] - numpy.roll(h[u], 1, axis=direction)[region])
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e[u][region] += se * dt * psi_e[0] / epsilon[u][region]
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e[v][region] -= se * dt * psi_e[1] / epsilon[v][region]
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return e, h
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def pml_h(e: field_t, h: field_t) -> Tuple[field_t, field_t]:
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psi_h[0] *= p0h
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psi_h[0] += p1h * (numpy.roll(e[v], -1, axis=direction)[region] - e[v][region])
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psi_h[1] *= p0h
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psi_h[1] += p1h * (numpy.roll(e[u], -1, axis=direction)[region] - e[u][region])
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h[u][region] -= se * dt * psi_h[0]
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h[v][region] += se * dt * psi_h[1]
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return e, h
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return pml_e, pml_h, fields
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