add sensitivity calculation

This commit is contained in:
Jan Petykiewicz 2024-07-17 22:56:48 -07:00
parent ccfd4fbf04
commit 9763c67657

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@ -718,6 +718,111 @@ def e_err(
return float(norm(op) / norm(e)) return float(norm(op) / norm(e))
def sensitivity(
e_norm: vcfdfield_t,
h_norm: vcfdfield_t,
wavenumber: complex,
omega: complex,
dxes: dx_lists_t,
epsilon: vfdfield_t,
mu: vfdfield_t | None = None,
) -> vcfdfield_t:
r"""
Given a waveguide structure (`dxes`, `epsilon`, `mu`) and mode fields
(`e_norm`, `h_norm`, `wavenumber`, `omega`), calculates the sensitivity of the wavenumber
$\beta$ to changes in the dielectric structure $\epsilon$.
The output is a vector of the same size as `vec(epsilon)`, with each element specifying the
sensitivity of `wavenumber` to changes in the corresponding element in `vec(epsilon)`, i.e.
$$sens_{i} = \frac{\partial\beta}{\partial\epsilon_i}$$
An adjoint approach is used to calculate the sensitivity; the derivation is provided here:
Starting with the eigenvalue equation
$$\beta^2 E_{xy} = A_E E_{xy}$$
where $A_E$ is the waveguide operator from `operator_e()`, and $E_{xy} = \begin{bmatrix} E_x \\
E_y \end{bmatrix}$,
we can differentiate with respect to one of the $\epsilon$ elements (i.e. at one Yee grid point), $\epsilon_i$:
$$
(2 \beta) \partial_{\epsilon_i}(\beta) E_{xy} + \beta^2 \partial_{\epsilon_i} E_{xy}
= \partial_{\epsilon_i}(A_E) E_{xy} + A_E \partial_{\epsilon_i} E_{xy}
$$
We then multiply by $H_{yx}^\star = \begin{bmatrix}H_y^\star \\ -H_x^\star \end{bmatrix}$ from the left:
$$
(2 \beta) \partial_{\epsilon_i}(\beta) H_{yx}^\star E_{xy} + \beta^2 H_{yx}^\star \partial_{\epsilon_i} E_{xy}
= H_{yx}^\star \partial_{\epsilon_i}(A_E) E_{xy} + H_{yx}^\star A_E \partial_{\epsilon_i} E_{xy}
$$
However, $H_{yx}^\star$ is actually a left-eigenvector of $A_E$. This can be verified by inspecting
the form of `operator_h` ($A_H$) and comparing its conjugate transpose to `operator_e` ($A_E$). Also, note
$H_{yx}^\star \cdot E_{xy} = H^\star \times E$ recalls the mode orthogonality relation. See doi:10.5194/ars-9-85-201
for a similar approach. Therefore,
$$
H_{yx}^\star A_E \partial_{\epsilon_i} E_{xy} = \beta^2 H_{yx}^\star \partial_{\epsilon_i} E_{xy}
$$
and we can simplify to
$$
\partial_{\epsilon_i}(\beta)
= \frac{1}{2 \beta} \frac{H_{yx}^\star \partial_{\epsilon_i}(A_E) E_{xy} }{H_{yx}^\star E_{xy}}
$$
This expression can be quickly calculated for all $i$ by writing out the various terms of
$\partial_{\epsilon_i} A_E$ and recognizing that the vector-matrix-vector products (i.e. scalars)
$sens_i = \vec{v}_{left} \partial_{\epsilon_i} (\epsilon_{xyz}) \vec{v}_{right}$, indexed by $i$, can be expressed as
elementwise multiplications $\vec{sens} = \vec{v}_{left} \star \vec{v}_{right}$
Args:
e_norm: Normalized, vectorized E_xyz field for the mode. E.g. as returned by `normalized_fields_e`.
h_norm: Normalized, vectorized H_xyz field for the mode. E.g. as returned by `normalized_fields_e`.
wavenumber: Propagation constant for the mode. The z-axis is assumed to be continuous (i.e. without numerical dispersion).
omega: The angular frequency of the system.
dxes: Grid parameters `[dx_e, dx_h]` as described in `meanas.fdmath.types` (2D)
epsilon: Vectorized dielectric constant grid
mu: Vectorized magnetic permeability grid (default 1 everywhere)
Returns:
Sparse matrix representation of the operator.
"""
if mu is None:
mu = numpy.ones_like(epsilon)
Dfx, Dfy = deriv_forward(dxes[0])
Dbx, Dby = deriv_back(dxes[1])
eps_x, eps_y, eps_z = numpy.split(epsilon, 3)
eps_xy = sparse.diags(numpy.hstack((eps_x, eps_y)))
eps_z_inv = sparse.diags(1 / eps_z)
mu_x, mu_y, mu_z = numpy.split(mu, 3)
mu_yx = sparse.diags(numpy.hstack((mu_y, mu_x)))
mu_z_inv = sparse.diags(1 / mu_z)
dv_e = dxes[0][0][:, None, None] * dxes[0][1][None, :, None] * dxes[0][2][None, None, :]
dv_h = dxes[1][0][:, None, None] * dxes[1][1][None, :, None] * dxes[1][2][None, None, :]
ev_xy = numpy.concatenate(numpy.split(e_norm, 3)[:2]) * dv_e
hx, hy, hz = numpy.split(h_norm, 3)
hv_yx_conj = numpy.conj(numpy.concatenate([hy, -hx])) * dv_h
sens_xy1 = (hv_yx_conj @ (omega * omega @ mu_yx)) * ev_xy
sens_xy2 = (hv_yx_conj @ sparse.vstack((Dfx, Dfy)) @ eps_z_inv @ sparse.hstack((Dbx, Dby))) * ev_xy
sens_z = (hv_yx_conj @ sparse.vstack((Dfx, Dfy)) @ (-eps_z_inv * eps_z_inv)) * (sparse.hstack((Dbx, Dby)) @ eps_xy @ ev_xy)
norm = hv_yx_conj @ ev_xy
sens_tot = numpy.concatenate([sens_xy1 + sens_xy2, sens_z]) / (2 * wavenumber * norm)
return sens_tot
def solve_modes( def solve_modes(
mode_numbers: list[int], mode_numbers: list[int],
omega: complex, omega: complex,