Яндекс.Метрика

Maxim Protasov, Roman Kenzhin, Danil Dmitrachkov,EvgeniyPavlovskiy

Том: Computational Science and Its Applications - ICCSA 2023. 23rd International Conference (Athens, Greece, July 3-6, 2023)
Том: 13957 , Год издания: 2023
Многотомное издание: Computational Science and Its Applications - ICCSA 2023. 23rd International Conference (Athens, Greece, July 3-6, 2023)
Страницы: 99-109

Аннотация

The presented paper is devoted to the numerical study of the applicability of 1D seismic inversion and 2D machine learning based inversion for fracture model reconstruction. Seismic inversion is used to predict reservoir properties. Standard version is based on a one-dimensional convolutional model, but real geological media are more complex, and therefore it is necessary to determine conditions where seismic inversion gives acceptable results. For this purpose, the work carries out a comparative analysis of one-dimensional and two-dimensional convolutional modeling. Also, machine learning methods have been adopted for 2D fracture model reconstruction. We use UNet architecture and 2D convolutional model to create a training dataset. We perform numerical experiments for a realistic synthetic model from Eastern Siberia and Sigsbee model.
индекс в базе ИАЦ: 027960