This work focuses on developing methods for approximating the solution
operators of a class of parametric partial differential equations via neural
operators. Neural operators have several challenges, including the issue of
generating appropriate training data, cost-accuracy trade-offs, and nontrivial
hyperparameter tuning. The unpredictability of the accuracy of neural operators
impacts their applications in downstream problems of inference, optimization,
and control. A framework is proposed based on the linear variational problem
that gives the correction to the prediction furnished by neural operators. The
operator associated with the corrector problem is referred to as the corrector
operator. Numerical results involving a nonlinear diffusion model in two
dimensions with PCANet-type neural operators show almost two orders of increase
in the accuracy of approximations when neural operators are corrected using the
proposed scheme. Further, topology optimization involving a nonlinear diffusion
model is considered to highlight the limitations of neural operators and the
efficacy of the correction scheme. Optimizers with neural operator surrogates
are seen to make significant errors (as high as 80 percent). However, the
errors are much lower (below 7 percent) when neural operators are corrected
following the proposed method.Comment: 34 pages, 14 figure