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基于先验约束的深度学习地震波阻抗反演方法
引用本文:宋磊,印兴耀,宗兆云,李炳凯,瞿晓阳,郗晓萍.基于先验约束的深度学习地震波阻抗反演方法[J].石油地球物理勘探,2021,56(4):716-727.
作者姓名:宋磊  印兴耀  宗兆云  李炳凯  瞿晓阳  郗晓萍
作者单位:1. 中国石油大学(华东)地球科学与技术学院, 山东青岛 266580;2. 东方地球物理公司研究院地质研究中心, 河北涿州 072751
基金项目:本项研究受国家自然科学基金项目“裂缝型储层五维地震解释理论与方法研究”(42030103)资助。
摘    要:不同于传统的深度学习反演方法,文中提出一种基于先验约束的深度学习地震波阻抗反演方法:参照地震相类型分割待反演区域,且将区域分割结果作为一种明确的空间约束条件监控网络模型的反演过程;将蕴含丰富低频信息的初始模型作为一种标签以丰富反演结果的低频信息;并使用一种强抗噪性激活函数提高网络模型对噪声数据的适应能力.为降低标签数据...

关 键 词:深度学习  半监督学习  先验约束  抗噪性  波阻抗反演
收稿时间:2020-12-22

Deep learning seismic impedance inversion based on prior constraints
SONG Lei,YIN Xingyao,ZONG Zhaoyun,LI Bingkai,QU Xiaoyang,XI Xiaoping.Deep learning seismic impedance inversion based on prior constraints[J].Oil Geophysical Prospecting,2021,56(4):716-727.
Authors:SONG Lei  YIN Xingyao  ZONG Zhaoyun  LI Bingkai  QU Xiaoyang  XI Xiaoping
Affiliation:1. School of Geosciences, China University of Petroleum(East China), Qingdao, Shandong 266580, China;2. BGP Geological Research Center, BGP, CNPC, Zhuozhou, Hebei 072751, China
Abstract:We propose a deep learning seismic impedance inversion method based on constraints of prior information. Different from traditional deep learning inversion methods, the inversion area is segmented based on the category of seismic face and segmentation regions are applied as an explicit spatial constraint to constrain the inversion process of the network model. Then the initial model is set as a label to enrich the low-frequency information of the inversion result. Finally, a strong anti-noise activation function is used to improve the adaptability of the network model to noisy data. To reduce the difficulty of acquiring label data and ensure the inversion accuracy of the network, semi-supervised learning is adopted to train the network model. The proposed method is tested on the Marmousi2 model, and the test results indicate that it has a good inversion effect and anti-noise performance. Subsequently, it is successfully applied to the real exploration data of an oilfield.
Keywords:deep learning  semi-supervised learning  prior constraints  anti-noise  impedance inversion  
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