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ГОРНОПРОМЫШЛЕННАЯ И НЕФТЕПРОМЫСЛОВАЯ ГЕОЛОГИЯ, ГЕОФИЗИКА
Название Современные тенденции развития программного обеспечения нефтегазогеологического моделирования
DOI 10.17580/gzh.2024.09.04
Автор Нефедов Ю. В., Востриков Н. Н., Грибанов М. А., Яшмолкин А. М.
Информация об авторе

Санкт-Петербургский горный университет императрицы Екатерины II, Санкт-Петербург, Россия

Нефедов Ю. В., доцент, канд. геол.-минерал. наук, yurijnefedov@yandex.ru
Востриков Н. Н., студент
Грибанов М. А., студент
Яшмолкин А. М., студент

 

В подготовке статьи принимал участие аспирант Д. А. Грибанов (Санкт-Петербургский горный университет императрицы Екатерины II).

Реферат

Приведен обзор современных программных средств геологического моделирования месторождений нефти и газа. Рассмотрены действия компаний-разработчиков в условиях жесткого цифрового регулирования последних лет на мировом рынке программного обеспечения. Уточнены конкурентоспособные преимущества передовых программных комплексов нефтегазогеологического моделирования, используемых в российских компаниях. Проанализированы и обобщены основные программные решения для проведения комплексного геологического моделирования. Рассмотрены пути адаптации компаний-разработчиков, предоставляющих программное обеспечение, в условиях жесткого цифрового регулирования. Дан прогноз их дальнейшего развития в условиях современного российского рынка и законодательства.

Ключевые слова Программное обеспечение, Petrel, tNavigator, DELF I, геологическое моделирование, Geoplat Pro, Rock Flow Dynamics, Schlumberger
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