摘要
In this paper,we propose a machine learning approach via model-operatordata network(MOD-Net)for solving PDEs.A MOD-Net is driven by a model to solve PDEs based on operator representationwith regularization fromdata.For linear PDEs,we use a DNN to parameterize the Green’s function and obtain the neural operator to approximate the solution according to the Green’s method.To train the DNN,the empirical risk consists of the mean squared loss with the least square formulation or the variational formulation of the governing equation and boundary conditions.For complicated problems,the empirical risk also includes a fewlabels,which are computed on coarse grid points with cheap computation cost and significantly improves the model accuracy.Intuitively,the labeled dataset works as a regularization in addition to the model constraints.The MOD-Net solves a family of PDEs rather than a specific one and is much more efficient than original neural operator because few expensive labels are required.We numerically show MOD-Net is very efficient in solving Poisson equation and one-dimensional radiative transfer equation.For nonlinear PDEs,the nonlinear MOD-Net can be similarly used as an ansatz for solving nonlinear PDEs,exemplified by solving several nonlinear PDE problems,such as the Burgers equation.
基金
sponsored by the National Key R&D Program of China Grant No.2019YFA0709503(Z.X.)and No.2020YFA0712000(Z.M.)
the Shanghai Sailing Program(Z.X.)
the Natural Science Foundation of Shanghai Grant No.20ZR1429000(Z.X.)
the National Natural Science Foundation of China Grant No.62002221(Z.X.)
the National Natural Science Foundation of China Grant No.12101401(T.L.)
the National Natural Science Foundation of China Grant No.12101402(Y.Z.)
Shanghai Municipal of Science and Technology Project Grant No.20JC1419500(Y.Z.)
the Lingang Laboratory Grant No.LG-QS-202202-08(Y.Z.)
the National Natural Science Foundation of China Grant No.12031013(Z.M.)
Shanghai Municipal of Science and Technology Major Project No.2021SHZDZX0102
the HPC of School of Mathematical Sciences
the Student Innovation Center at Shanghai Jiao Tong University.