1 민배현 ; 권서윤 ; 박가영 ; 정대인 ; 정대인, "석유가스 개발사업의 인공지능기술 활용 현황 및 전망" 한국자원공학회 57 (57): 295-308, 2020
2 권서윤 ; 지민수 ; 박가영 ; 민배현 ; 정훈영, "북해 Volve 유전 현장자료의 공공데이터화와 저류층 모델에 대한 분석" 한국자원공학회 58 (58): 353-363, 2021
3 김길영, "미고결 퇴적층내 가스하이드레이트 포화도 계산" 한국지구물리.물리탐사학회 15 (15): 102-115, 2012
4 지민수 ; 권서윤 ; 박가영 ; 민배현 ; Nguyen Xuan Huy, "물리검층자료를 활용한 딥러닝 기반 수포화도 예측" 한국자원공학회 58 (58): 215-226, 2021
5 김영민 ; 이원석, "동해 울릉분지 UBGH2-6 하이드레이트 지층 및 포화율 분포 특성을 고려한 시뮬레이션 연구" 한국자원공학회 59 (59): 69-90, 2022
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1 민배현 ; 권서윤 ; 박가영 ; 정대인 ; 정대인, "석유가스 개발사업의 인공지능기술 활용 현황 및 전망" 한국자원공학회 57 (57): 295-308, 2020
2 권서윤 ; 지민수 ; 박가영 ; 민배현 ; 정훈영, "북해 Volve 유전 현장자료의 공공데이터화와 저류층 모델에 대한 분석" 한국자원공학회 58 (58): 353-363, 2021
3 김길영, "미고결 퇴적층내 가스하이드레이트 포화도 계산" 한국지구물리.물리탐사학회 15 (15): 102-115, 2012
4 지민수 ; 권서윤 ; 박가영 ; 민배현 ; Nguyen Xuan Huy, "물리검층자료를 활용한 딥러닝 기반 수포화도 예측" 한국자원공학회 58 (58): 215-226, 2021
5 김영민 ; 이원석, "동해 울릉분지 UBGH2-6 하이드레이트 지층 및 포화율 분포 특성을 고려한 시뮬레이션 연구" 한국자원공학회 59 (59): 69-90, 2022
6 박가영 ; 권서윤 ; 지민수 ; 민배현 ; Nguyen Xuan Huy ; 김광현 ; 김성일 ; 이경북, "가스하이드레이트 저류층 모델링을 위한 심층학습 기반 물리검층 해석의 최신 기술동향 분석" 한국자원공학회 58 (58): 161-178, 2021
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