Borehole-Driven 3D Surface Seismic Data Processing Using DAS-VSP Data

Gang Yu, W. Junjun, Yuanzhong Chen, Ximing Wang
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Abstract

A 3D surface seismic data acquisition project was conducted simultaneously with 3D DAS-VSP data acquisition in one well in Jilin Oilfield of Northen China. The 3D surface seismic data acquisition project covered an area of 75 km2, and one borehole (DS32-3) and an armoured optical cable with high temperature single mode fiber were used to acquire the 3D DAS-VSP data simultaneously when the crew was acquiring the 3D surface seismic data. The simultaneously acquired 3D DAS-VSP data were used to extract formation velocity, deconvolution operator, absorption, attenuation (Q value), anisotropy parameters (η, δ, ε) as wel as enhanced the surface seismic data processing including velocity model calibration and modification, static correction, deconvolution, demultiple processing, high frequency restoration, anisotropic migration, and Q-compensation or Q-migration. In this project, anisotropic migration, Q-migration was conducted with the anisotropy parameters (η, δ, ε) data volume and enhanced Q-field data volume obtained from the joint inversion of both the near surface 3D Q-field data volume from uphole data and the mid-deep layer Q-field data volume from all available VSP data in the 3D surface seismic surveey area. The anosotropic migration and Q-migration results show much sharper and focussed faults and and clearer subsutface structure.
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利用DAS-VSP数据处理井眼驱动的三维地面地震数据
在吉林油田某井进行了三维地面地震数据采集与三维DAS-VSP数据采集同时进行的三维地面地震数据采集工程。地面三维地震数据采集项目占地75 km2,在采集地面三维地震数据的同时,采用1口DS32-3井和一根高温单模光纤铠装光缆同时采集DAS-VSP数据。同时获取的三维DAS-VSP数据用于提取地层速度、反褶积算子、吸收、衰减(Q值)、各向异性参数(η、δ、ε),并加强了地面地震数据处理,包括速度模型标定与修正、静校正、反褶积、去多重处理、高频恢复、各向异性偏移、Q补偿或Q偏移。本项目利用地面三维地震调查区所有可用VSP数据联合反演近地表三维q场数据量和中深层q场数据量获得的各向异性参数(η、δ、ε)数据量和增强q场数据量,进行各向异性偏移、q偏移。各向异性运移和q -运移结果显示断层更加尖锐和集中,地下构造更加清晰。
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