BelNet: basis enhanced learning, a mesh-free neural operator
Zecheng Zhang, Leung Wing Tat, Hayden Schaeffer- General Physics and Astronomy
- General Engineering
- General Mathematics
Operator learning trains a neural network to map functions to functions. An ideal operator learning framework should be mesh-free in the sense that the training does not require a particular choice of discretization for the input functions, allows for the input and output functions to be on different domains, and is able to have different grids between samples. We propose a mesh-free neural operator for solving parametric partial differential equations. The basis enhanced learning network (BelNet) projects the input function into a latent space and reconstructs the output functions. In particular, we construct part of the network to learn the ‘basis’ functions in the training process. This generalized the networks proposed in Chen & Chen (Chen and Chen 1995
IEEE Trans. Neural Netw.
49
, 911–917. (