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Reverse-time migration using multidirectional wavefield decomposition method 被引量:3
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作者 Xue Hao Liu Yang 《Applied Geophysics》 SCIE CSCD 2018年第2期222-233,362,363,共14页
反向时间的移植由于复杂速度模型的高成像精确性,没有剧降限制,和改编的优点吸引了越来越多的注意。跨关联的成像方法典型地在与强壮的低频率的噪音生产图象的常规反向时间的移植被使用。Wavefield 分解成像能压制如此的噪音;然而,... 反向时间的移植由于复杂速度模型的高成像精确性,没有剧降限制,和改编的优点吸引了越来越多的注意。跨关联的成像方法典型地在与强壮的低频率的噪音生产图象的常规反向时间的移植被使用。Wavefield 分解成像能压制如此的噪音;然而,一些剩余噪音在成像结果坚持。我们基于传统的 wavefield 分解方法建议一个 2D multidirectional wavefield 分解方法。首先,来源 wavefields 和接收装置 wavefields 分别地被分开成八 subwavefields。第二,跨关联的成像被用于选择 subwavefields 生产 subimages。最后, subimages 被叠产生最后的图象。数字例子建议建议方法能有效地消除低频率的噪音并且生产高质量的成像侧面。 展开更多
关键词 反向时间的移植 multidirectional wavefield 分解 成像 低频率的噪音
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Model-data-driven seismic inversion method based on small sample data
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作者 LIU Jinshui SUN Yuhang LIU Yang 《Petroleum Exploration and Development》 CSCD 2022年第5期1046-1055,共10页
As sandstone layers in thin interbedded section are difficult to identify,conventional model-driven seismic inversion and data-driven seismic prediction methods have low precision in predicting them.To solve this prob... As sandstone layers in thin interbedded section are difficult to identify,conventional model-driven seismic inversion and data-driven seismic prediction methods have low precision in predicting them.To solve this problem,a model-data-driven seismic AVO(amplitude variation with offset)inversion method based on a space-variant objective function has been worked out.In this method,zero delay cross-correlation function and F norm are used to establish objective function.Based on inverse distance weighting theory,change of the objective function is controlled according to the location of the target CDP(common depth point),to change the constraint weights of training samples,initial low-frequency models,and seismic data on the inversion.Hence,the proposed method can get high resolution and high-accuracy velocity and density from inversion of small sample data,and is suitable for identifying thin interbedded sand bodies.Tests with thin interbedded geological models show that the proposed method has high inversion accuracy and resolution for small sample data,and can identify sandstone and mudstone layers of about one-30th of the dominant wavelength thick.Tests on the field data of Lishui sag show that the inversion results of the proposed method have small relative error with well-log data,and can identify thin interbedded sandstone layers of about one-15th of the dominant wavelength thick with small sample data. 展开更多
关键词 small sample data space-variant objective function model-data-driven neural network seismic AVO inversion thin interbedded sandstone identification Paleocene Lishui sag
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