Яндекс.Метрика

Elena Gondyul, Vadim Lisitsa, Kirill Gadylshin, Dmitry Vishnevsky

Том: Computational Science and Its Applications - ICCSA 2023 Workshops. 23rd International Conference (Athens, Greece, July 3-6, 2023)
Том: 14106 , Год издания: 2023
Многотомное издание: Computational Science and Its Applications - ICCSA 2023 Workshops. 23rd International Conference (Athens, Greece, July 3-6, 2023)
Издатель: Springer International Publishing , Место издания: Berlin
Страницы: 19-30

Аннотация

A neural network is used to approximate the transition operator from seismic data modeled on a large computational grid to data obtained on a small one. Thus, we obtain an effective way of suppressing numerical dispersion in numerically modeled seismic fields. This article discusses a method for constructing an optimal training dataset based on the properties of a velocity model. We build a distance matrix for the parts of the model that correspond to the positions of the sources and build a dataset in such a way that the distance between the training set and all sources is limited.
индекс в базе ИАЦ: 027943