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Изучение и анализ современных подходов к построению цифровых моделей керна и методов моделирования многофазной фильтрации в масштабах порового пространства

К.М. Герке, Д.В. Корост, М.В. Карсанина, С.Р. Корост, Р.В. Васильев, Е.В. Лаврухин, Д.Р. Гафурова

Обзорная статья

DOI https://doi.org/10.18599/grs.2021.2.20

197-213
rus.

open access

Under a Creative Commons license
В нашем обзоре мы рассматриваем российский и, в основном, зарубежный опыт технологии «цифрового керна», а именно – возможности создания цифровой модели внутреннего строения керна и моделирования в такой модели многофазных потоков в масштабе пор. Помимо детального анализа методик наша работа дает ответ на ключевой для индустрии вопрос: если технология «цифрового керна» действительно позволяет эффективно решать задачи нефтегазового промысла, то почему она до сих пор этого не делает несмотря на обилие научных работ в этой области? В том числе, приведенный в обзоре анализ позволяет прояснить в целом скептическое отношение к технологии, а также ошибки R&D работ, которые привели к такому мнению внутри нефтегазовых компаний. В заключении мы даем краткую оценку развития технологии в ближайшем будущем.
 

петрофизика, структура пустотного пространства, многофазная фильтрация, компьютерная томография (КТ), физико-математическое моделирование

 

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Кирилл Миронович Герке
Институт физики Земли имени О.Ю. Шмидта РАН
Россия, 123242, Москва, Б. Грузинская ул., д. 10, стр. 1

Дмитрий Вячеславович Корост
Московский государственный университет имени М.В. Ломоносова
Россия, 119234, Москва, Ленинские горы, д. 1

Марина Владимировна Карсанина
Институт физики Земли имени О.Ю. Шмидта РАН
Россия, 123242, Москва, Б. Грузинская ул., д. 10, стр. 1

Светлана Радиковна Корост
Московский государственный университет имени М.В. Ломоносова
Россия, 119234, Москва, Ленинские горы, д. 1

Роман Викторович Васильев
Институт физики Земли имени О.Ю. Шмидта РАН
Россия, 123242, Москва, Б. Грузинская ул., д. 10, стр. 1

Ефим Валерьевич Лаврухин
Московский государственный университет имени М.В. Ломоносова
Россия, 119234, Москва, Ленинские горы, д. 1

Дина Ринатовна Гафурова
Московский государственный университет имени М.В. Ломоносова
Россия, 119234, Москва, Ленинские горы, д. 1

 

Для цитирования:

Герке К.М., Корост Д.В., Карсанина М.В., Корост С.Р., Васильев Р.В., Лаврухин Е.В., Гафурова Д.Р. (2021). Изучение и анализ современных подходов к построению цифровых моделей керна и методов моделирования многофазной фильтрации в масштабах порового пространства. Георесурсы, 23(2), c. 197–213. DOI: https://doi.org/10.18599/grs.2021.2.20

For citation:

Gerke K.M., Korost D.V., Karsanina M.V., Korost S.R., Vasiliev R.V., Lavrukhin E.V., Gafurova D.R. (2021). Modern approaches to pore space scale digital modeling of core structure and multiphase flow. Georesursy = Georesources, 23(2), pp. 197–213. DOI: https://doi.org/10.18599/grs.2021.2.20