Abstract:
The paper discusses how to verify the quality of approximate solutions to partial differential equations constructed by deep neural networks. A posterior error estimates of the functional type, that have been developed for a wide range of boundary value problems, are used to solve this problem. It is shown, that they allow one to construct guaranteed two-sided estimates of global errors and get distribution of local errors the error over the domain. The corresponding results of numerical experiments are presented for a boundary value problem of an elliptic type. They show that the estimates provide much more reliable information than the so-called loss function, which is commonly used as a quality criterion training neural network models.
Key words and phrases:A posteriori error estimates, neural networks, deep learning, boundary value problems.