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NTIS 바로가기지구물리와 물리탐사 = Geophysics and geophysical exploration, v.25 no.2, 2022년, pp.71 - 84
김수정 (경북대학교 지질학과) , 전형구 (경북대학교 지질학과)
When acquiring seismic data, various types of simultaneously recorded seismic noise hinder accurate interpretation. Therefore, it is essential to attenuate this noise during the processing of seismic data and research on seismic noise attenuation. For this purpose, machine learning is extensively us...
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