Seismic Monitoring of Hydrocarbon Deposits Using a Viscoelastic Medium Model Based on Deep Learning Научная публикация
Конференция |
The International Conference on Computational Sciences and its Applications 03-06 июл. 2023 , Athens |
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Сборник | Computational Science and Its Applications – ICCSA 2023 Workshops
Athens, Greece, July 3–6, 2023, Proceedings Сборник, Springer. 2023. ISBN 9783031371103. |
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Журнал |
Lecture Notes in Computer Science
ISSN: 0302-9743 , E-ISSN: 1611-3349 |
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Вых. Данные | Год: 2023, Том: 14106, Страницы: 59-75 Страниц : 17 DOI: 10.1007/978-3-031-37111-0_5 | ||
Ключевые слова | Viscoelastic medium · full waveform inversion · deep learning · seismic monitoring | ||
Авторы |
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Организации |
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Информация о финансировании (1)
1 | Российский научный фонд | 22-21-00738 |
Реферат:
This paper presents a novel approach to solving the inverse dynamic seismic problem in seismic monitoring for the viscoelastic medium. The proposed method offers a cost-effective alternative to Full Waveform Inversion by using a deep convolutional neural network Unet-type architecture with residual blocks to approximate an inverse problem operator that translates the change in seismic data into the change in velocity models. The operability of the proposed approach is demonstrated through a model example under the assumption that the distribution of the velocity model is known at the initial moment. Furthermore, the results of neural network prediction on a realistic sample with Gullfaks deposit indicate the practical applications of the proposed approach in seismic monitoring. The proposed approach shows significant potential for advancing the state-of-the-art in solving the inverse dynamic seismic problem for the viscoelastic medium, with potential implications for improving seismic monitoring techniques in industry and academia.
Библиографическая ссылка:
Bratchikov D.
, Gadylshin K.
Seismic Monitoring of Hydrocarbon Deposits Using a Viscoelastic Medium Model Based on Deep Learning
В сборнике Computational Science and Its Applications – ICCSA 2023 Workshops Athens, Greece, July 3–6, 2023, Proceedings. – Springer., 2023. – Т.Part III. – C.59-75. – ISBN 9783031371103. DOI: 10.1007/978-3-031-37111-0_5 Scopus OpenAlex
Seismic Monitoring of Hydrocarbon Deposits Using a Viscoelastic Medium Model Based on Deep Learning
В сборнике Computational Science and Its Applications – ICCSA 2023 Workshops Athens, Greece, July 3–6, 2023, Proceedings. – Springer., 2023. – Т.Part III. – C.59-75. – ISBN 9783031371103. DOI: 10.1007/978-3-031-37111-0_5 Scopus OpenAlex
Даты:
Опубликована в печати: | 29 июн. 2023 г. |
Опубликована online: | 29 июн. 2023 г. |
Идентификаторы БД:
Scopus: | 2-s2.0-85165077118 |
OpenAlex: | W4382366382 |
Цитирование в БД:
Пока нет цитирований