Move eigensolver code out to separate module

blochsolver
Jan Petykiewicz 7 years ago
parent 001bf1e2ef
commit bacc6fea3f

@ -0,0 +1,95 @@
"""
Solvers for eigenvalue / eigenvector problems
"""
from typing import Tuple, List
import numpy
from numpy.linalg import norm
from scipy import sparse
import scipy.sparse.linalg as spalg
def power_iteration(operator: sparse.spmatrix,
guess_vector: numpy.ndarray = None,
iterations: int = 20,
) -> Tuple[complex, numpy.ndarray]:
"""
Use power iteration to estimate the dominant eigenvector of a matrix.
:param operator: Matrix to analyze.
:param guess_vector: Starting point for the eigenvector. Default is a randomly chosen vector.
:param iterations: Number of iterations to perform. Default 20.
:return: (Largest-magnitude eigenvalue, Corresponding eigenvector estimate)
"""
if numpy.any(numpy.equal(guess_vector, None)):
v = numpy.random.rand(operator.shape[0])
else:
v = guess_vector
for _ in range(iterations):
v = operator @ v
v /= norm(v)
lm_eigval = v.conj() @ operator @ v
return lm_eigval, v
def rayleigh_quotient_iteration(operator: sparse.spmatrix,
guess_vector: numpy.ndarray,
iterations: int = 40,
tolerance: float = 1e-13,
) -> Tuple[complex, numpy.ndarray]:
"""
Use Rayleigh quotient iteration to refine an eigenvector guess.
:param operator: Matrix to analyze.
:param guess_vector: Eigenvector to refine.
:param iterations: Maximum number of iterations to perform. Default 40.
:param tolerance: Stop iteration if (A - I*eigenvalue) @ v < tolerance.
Default 1e-13.
:return: (eigenvalue, eigenvector)
"""
v = guess_vector
for _ in range(iterations):
eigval = v.conj() @ operator @ v
if norm(operator @ v - eigval * v) < tolerance:
break
v = spalg.spsolve(operator - eigval * sparse.eye(operator.shape[0]), v)
v /= norm(v)
return eigval, v
def signed_eigensolve(operator: sparse.spmatrix,
how_many: int,
negative: bool = False,
) -> Tuple[numpy.ndarray, numpy.ndarray]:
"""
Find the largest-magnitude positive-only (or negative-only) eigenvalues and
eigenvectors of the provided matrix.
:param operator: Matrix to analyze.
:param how_many: How many eigenvalues to find.
:param negative: Whether to find negative-only eigenvalues.
Default False (positive only).
:return: (sorted list of eigenvalues, 2D ndarray of corresponding eigenvectors)
eigenvectors[:, k] corresponds to the k-th eigenvalue
"""
# Use power iteration to estimate the dominant eigenvector
lm_eigval, _ = power_iteration(operator)
'''
Shift by the absolute value of the largest eigenvalue, then find a few of the
largest-magnitude (shifted) eigenvalues. A positive shift ensures that we find the
largest _positive_ eigenvalues, since any negative eigenvalues will be shifted to the
range 0 >= neg_eigval + abs(lm_eigval) > abs(lm_eigval)
'''
if negative:
shifted_operator = operator - abs(lm_eigval) * sparse.eye(operator.shape[0])
else:
shifted_operator = operator + abs(lm_eigval) * sparse.eye(operator.shape[0])
eigenvalues, eigenvectors = spalg.eigs(shifted_operator, which='LM', k=how_many, ncv=50)
k = eigenvalues.argsort()
return eigenvalues[k], eigenvectors[:, k]

@ -23,7 +23,7 @@ import numpy
from numpy.linalg import norm from numpy.linalg import norm
import scipy.sparse as sparse import scipy.sparse as sparse
from . import unvec, dx_lists_t, field_t, vfield_t from . import vec, unvec, dx_lists_t, field_t, vfield_t
from . import operators from . import operators

@ -1,10 +1,10 @@
from typing import Dict, List from typing import Dict, List
import numpy import numpy
import scipy.sparse as sparse import scipy.sparse as sparse
import scipy.sparse.linalg as spalg
from . import vec, unvec, dx_lists_t, vfield_t, field_t from . import vec, unvec, dx_lists_t, vfield_t, field_t
from . import operators, waveguide, functional from . import operators, waveguide, functional
from .eigensolvers import signed_eigensolve, rayleigh_quotient_iteration
def solve_waveguide_mode_2d(mode_number: int, def solve_waveguide_mode_2d(mode_number: int,
@ -12,12 +12,12 @@ def solve_waveguide_mode_2d(mode_number: int,
dxes: dx_lists_t, dxes: dx_lists_t,
epsilon: vfield_t, epsilon: vfield_t,
mu: vfield_t = None, mu: vfield_t = None,
wavenumber_correction: bool = True wavenumber_correction: bool = True,
) -> Dict[str, complex or field_t]: ) -> Dict[str, complex or field_t]:
""" """
Given a 2d region, attempts to solve for the eigenmode with the specified mode number. Given a 2d region, attempts to solve for the eigenmode with the specified mode number.
:param mode_number: Number of the mode, 0-indexed :param mode_number: Number of the mode, 0-indexed.
:param omega: Angular frequency of the simulation :param omega: Angular frequency of the simulation
:param dxes: Grid parameters [dx_e, dx_h] as described in fdfd_tools.operators header :param dxes: Grid parameters [dx_e, dx_h] as described in fdfd_tools.operators header
:param epsilon: Dielectric constant :param epsilon: Dielectric constant
@ -29,46 +29,19 @@ def solve_waveguide_mode_2d(mode_number: int,
''' '''
Solve for the largest-magnitude eigenvalue of the real operator Solve for the largest-magnitude eigenvalue of the real operator
by using power iteration.
''' '''
dxes_real = [[numpy.real(dx) for dx in dxi] for dxi in dxes] dxes_real = [[numpy.real(dx) for dx in dxi] for dxi in dxes]
A_r = waveguide.operator(numpy.real(omega), dxes_real, numpy.real(epsilon), numpy.real(mu)) A_r = waveguide.operator(numpy.real(omega), dxes_real, numpy.real(epsilon), numpy.real(mu))
# Use power iteration for 20 steps to estimate the dominant eigenvector eigvals, eigvecs = signed_eigensolve(A_r, mode_number+3)
v = numpy.random.rand(A_r.shape[0]) v = eigvecs[:, -(mode_number + 1)]
for _ in range(20):
v = A_r @ v
v /= numpy.linalg.norm(v)
lm_eigval = v @ A_r @ v
'''
Shift by the absolute value of the largest eigenvalue, then find a few of the
largest-magnitude (shifted) eigenvalues. The shift ensures that we find the largest
_positive_ eigenvalues, since any negative eigenvalues will be shifted to the range
0 >= neg_eigval + abs(lm_eigval) > abs(lm_eigval)
'''
shifted_A_r = A_r + abs(lm_eigval) * sparse.eye(A_r.shape[0])
eigvals, eigvecs = spalg.eigs(shifted_A_r, which='LM', k=mode_number + 3, ncv=50)
# Pick the eigenvalue we want from the few we found
k = eigvals.argsort()[-(mode_number+1)]
v = eigvecs[:, k]
''' '''
Now solve for the eigenvector of the full operator, using the real operator's Now solve for the eigenvector of the full operator, using the real operator's
eigenvector as an initial guess for Rayleigh quotient iteration. eigenvector as an initial guess for Rayleigh quotient iteration.
''' '''
A = waveguide.operator(omega, dxes, epsilon, mu) A = waveguide.operator(omega, dxes, epsilon, mu)
v, eigval = rayleigh_quotient_iteration(A, v)
eigval = None
for _ in range(40):
eigval = v.conj() @ A @ v
if numpy.linalg.norm(A @ v - eigval * v) < 1e-13:
break
v = spalg.spsolve(A - eigval * sparse.eye(A.shape[0]), v)
v /= numpy.linalg.norm(v)
# Calculate the wave-vector (force the real part to be positive) # Calculate the wave-vector (force the real part to be positive)
wavenumber = numpy.sqrt(eigval) wavenumber = numpy.sqrt(eigval)

Loading…
Cancel
Save