地震记录
反演(地质)
小波
地质学
卷积神经网络
算法
地震反演
计算机科学
人工神经网络
稳健性(进化)
合成地震记录
地球物理学
反问题
地震学
人工智能
数学
几何学
方位角
化学
数学分析
基因
构造学
生物化学
作者
Vishal Das,Ahinoam Pollack,Uri Wollner,Tapan Mukerji
出处
期刊:Geophysics
[Society of Exploration Geophysicists]
日期:2019-11-01
卷期号:84 (6): R869-R880
被引量:239
标识
DOI:10.1190/geo2018-0838.1
摘要
We have addressed the geophysical problem of obtaining an elastic model of the subsurface from recorded normal-incidence seismic data using convolutional neural networks (CNNs). We train the network on synthetic full-waveform seismograms generated using Kennett’s reflectivity method on earth models that were created under rock-physics modeling constraints. We use an approximate Bayesian computation method to estimate the posterior distribution corresponding to the CNN prediction and to quantify the uncertainty related to the predictions. In addition, we test the robustness of the network in predicting impedances of previously unobserved earth models when the input to the network consisted of seismograms generated using: (1) earth models with different spatial correlations (i.e. variograms), (2) earth models with different facies proportions, (3) earth models with different underlying rock-physics relations, and (4) source-wavelet phase and frequency different than in the training data. Results indicate that the predictions of the trained network are susceptible to facies proportions, the rock-physics model, and source-wavelet parameters used in the training data set. Finally, we apply CNN inversion on the Volve field data set from offshore Norway. P-wave impedance [Formula: see text] inverted for the Volve data set using CNN showed a strong correlation (82%) with the [Formula: see text] log at a well.
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