Inverse Diffusivity
Recovers a space-dependent diffusivity \(D(x)\) represented as a neural network Field, rather
than a single scalar parameter.
Background
Recovering spatially varying material properties from indirect measurements is a central problem
in inverse theory, with applications in thermal conductivity imaging, permeability estimation in
porous media, and non-destructive material testing. Unlike the other PDE templates where the
unknown is a scalar, here the diffusivity \(D(x)\) is a function. The template represents it
as a learnable neural network Field, demonstrating function-valued parameter recovery. The
expanded form of the divergence operator \(\nabla \cdot (D\,\nabla u) = D\,u_{xx} + D'\,u_x\)
shows how the spatial gradient of \(D\) couples to the solution gradient.
Governing Equations
where:
- \(u(x, t)\): temperature / concentration field
- \(D(x)\): spatially varying diffusivity (to recover as a neural network
Field)
Default Configuration
The generated template uses the following values.
Function to recover:
| Symbol | Code constant | True profile |
|---|---|---|
| \(D(x)\) | TRUE_D_FN |
\(0.1 + 0.05\,\sin(2\pi x)\) |
The diffusivity ranges from \(0.05\) to \(0.15\) over the spatial domain.
Initial condition: \(u(x, 0) = \sin(\pi x)\)
Boundary conditions: \(u(0, t) = u(1, t) = 0\) (homogeneous Dirichlet).
Domain: \(x \in [0, 1], \quad t \in [0, 1]\)
Features Demonstrated
- Function-valued parameter recovery (\(D(x)\) as a
Field) - Composable differential operators from
anypinn.lib.diff - PDE inverse problem with spatially varying coefficients
Results
