Яндекс.Метрика

K. Gadylshin,I.Silvestrov,A.Bakulin

Том: 1st International Meeting for Applied Geoscience and Energy. SEG Technical Program Expanded Abstracts (Denver, 26 September - 1 October 2021)
Том: 2021-September , Год издания: 2021
Многотомное издание: 1st International Meeting for Applied Geoscience and Energy. SEG Technical Program Expanded Abstracts (Denver, 26 September - 1 October 2021)
Страницы: 1596-1600

Аннотация

Wavefront attributes, such as local dips and curvatures of seismic events, are used in different seismic data processing methods, from prestack data enhancement to migration to tomography. The attributes' estimation for prestack data is a time-consuming and computationally expensive process. We propose a new approach based on U-Net convolutional neural network that directly map prestack seismic data to the local wavefront attributes. Using a 3D real data example, we demonstrate that this deep-learning-based approach can reduce the computational time by two orders of magnitude compared to a classical coherency-based optimization technique while preserving a reasonable quality of results.
индекс в базе ИАЦ: 033396