Invertible Fourier Neural Operators for Tackling Both Forward and Inverse Problems
About
Fourier Neural Operator (FNO) is a powerful and popular operator learning method. However, FNO is mainly used in forward prediction, yet a great many applications rely on solving inverse problems. In this paper, we propose an invertible Fourier Neural Operator (iFNO) for jointly tackling the forward and inverse problems. We developed a series of invertible Fourier blocks in the latent channel space to share the model parameters, exchange the information, and mutually regularize the learning for the bi-directional tasks. We integrated a variational auto-encoder to capture the intrinsic structures within the input space and to enable posterior inference so as to mitigate challenges of illposedness, data shortage, noises that are common in inverse problems. We proposed a three-step process to combine the invertible blocks and the VAE component for effective training. The evaluations on seven benchmark forward and inverse tasks have demonstrated the advantages of our approach.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| ODE Trajectory Fitting | GRN 40 parameters | MSE0.0299 | 9 | |
| ODE Trajectory Fitting | POLLU 25 parameters | MSE0.0701 | 9 | |
| ODE Parameter Recovery | GRN 40 parameters | Mean Error0.0233 | 9 | |
| ODE Parameter Recovery | POLLU 25 parameters | Mean Error0.0643 | 9 |