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NTIS 바로가기지구물리와 물리탐사 = Geophysics and geophysical exploration, v.24 no.2, 2021년, pp.53 - 66
조준현 (부경대학교 에너지자원공학과) , 하완수 (부경대학교 에너지자원공학과)
Velocity model building is an essential procedure in seismic data processing. Conventional techniques, such as traveltime tomography or velocity analysis take longer computational time to predict a single velocity model and the quality of the inversion results is highly dependent on human expertise....
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