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NTIS 바로가기Geophysics, v.87 no.4, 2022년, pp.IM143 - IM156
Zhu, Donglin (CNPC, BGP Inc., BGP Research and Development Center, Zhuozhou, China. (corresponding author)) , Li, Lei (CNPC, BGP Inc., BGP Research and Development Center, Zhuozhou, China.) , Guo, Rui (CNPC, BGP Inc., BGP Research and Development Center, Zhuozhou, China.) , Tao, Chunfeng (CNPC, BGP Inc., BGP Research and Development Center, Zhuozhou, China.) , Zhan, Shifan (CNPC, BGP Inc., Zhuozhou, China.)
Depicting faults in seismic data is one of the key steps in seismic structure interpretation. However, the manual identification of faults is a time-consuming and tedious process. In conventional methods, seismic attributes associated with the reflection continuities or discontinuities of seismic d...
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