基于深度学习的二维VSP数据纵横波分离研究OA
P-and S-wavefield separation for 2D VSP data based on deep learning
纵横(P/S)波分离是多分量垂直地震剖面(VSP)地震数据处理中的关键环节之一.传统的 VSP波场分离方法多依赖信号分析或偏振投影等技术实现波模式的分解.然而在实际观测过程中,强烈的垂向速度变化及井身倾斜等复杂因素显著增加了波场分离的难度.对此,结合弹性波动理论与亥姆霍兹分解理论,构建了适用于复杂观测条件下的多分量 VSP数据 P/S波标签库,提出了基于深度神经网络的 VSP波场分离方法.该方法利用 U-Net网络结构提取二维 VSP数据中的 P/S波场特征,实现了无需依赖模型参数的 P/S波分离.模拟数据与实际数据的实验结果表明,在结合目标数据特性构建训练样本的基础上,深度学习方法能够有效完成二维多分量 VSP数据的 P/S波分离.此外,通过分析井源距和井身倾斜等因素对神经网络性能的影响,针对性地提出了提升网络泛化性能的策略,为多分量VSP地震数据的P/S波分离提供了有效的技术支撑.
P-and S-wavefield separation is a key step in multicomponent VSP data processing.Conventionally,this is achieved through signal analysis or polarization projection to decompose different wave types.However,factors such as strong vertical velocity variations and borehole deviation significantly increase the complexity of wavefield separation.To address this issue,a deep neural network-based method is proposed.This method integrates elastic wave theory with Helmholtz decomposition to construct P-and S-wave labels for multicomponent VSP data under complex acquisition conditions.A U-Net architecture is then leveraged to extract P-and S-wavefield features in 2D VSP data and consequently achieve model-independent wavefield separation.Experimental results from synthetic and field data show that the deep learning method effectively separates P-from S-waves in 2D VSP data when using training samples constructed with target features.Furthermore,by analyzing the impact of factors such as offset and deviation on network performance,targeted strategies are proposed to improve the network's generalization ability.These findings provide effective support for P-and S-wave separation in multicomponent VSP data.
黄河;孟涛;王腾飞;程玖兵;徐蔚亚;朱成宏
页岩油气富集机理与高效开发全国重点实验室,北京 100083||中国石化油气藏地球物理重点实验室,北京 100083||同济大学海洋与地球科学学院,上海 200092同济大学海洋与地球科学学院,上海 200092同济大学海洋与地球科学学院,上海 200092同济大学海洋与地球科学学院,上海 200092页岩油气富集机理与高效开发全国重点实验室,北京 100083||中国石化油气藏地球物理重点实验室,北京 100083页岩油气富集机理与高效开发全国重点实验室,北京 100083||中国石化油气藏地球物理重点实验室,北京 100083
能源科技
VSPP/S波分离深度学习数据标签构建卷积神经网络
VSPP-and S-wavefield separationdeep learningdata label constructionconvolutional neural network
《石油物探》 2026 (3)
442-458,17
国家自然科学基金项目(42574147,42204110,42474140)和中国石化油气藏地球物理重点实验室开放基金项目(33550000-22-ZC0613-0289)共同资助. This research is financially supported by the National Natural Science Foundation of China(Grant Nos.42574147,42204110,42474140)and Open Fund of Sinopec Key Laboratory of Oil and Gas Reservoir Geophysics(Grant No.33550000-22-ZC0613-0289).
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