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NTIS 바로가기지구물리와 물리탐사 = Geophysics and geophysical exploration, v.23 no.2, 2020년, pp.97 - 114
최우창 (인하대학교 에너지자원공학과) , 이강훈 (인하대학교 에너지자원공학과) , 조상인 (인하대학교 에너지자원공학과) , 최병훈 (인하대학교 에너지자원공학과) , 편석준 (인하대학교 에너지자원공학과)
Recently, many studies have been actively conducted on the application of machine learning in all branches of science and engineering. Studies applying machine learning are also rapidly increasing in all sectors of seismic exploration, including interpretation, processing, and acquisition. Among the...
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