Self-Supervised, Active Learning Seismic Full Waveform Inversion

IF 3 2区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS Geophysics Pub Date : 2023-12-20 DOI:10.1190/geo2023-0308.1
D. Colombo, E. Turkoglu, E. Sandoval-Curiel, Taqi Alyousuf
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Abstract

We develop a recursive, self-supervised machine learning inversion for fast and accurate full waveform inversion of land seismic data. Machine learning generalization is enhanced by using virtual super gathers of field data for training. These are obtained from midpoint-offset sorting and stacking after applying surface-consistent corrections from the decomposition of the transmitted wavefield. The procedure implements reinforcement learning concepts by adopting an inversion agent to interact with the environment and explore the model space under a data misfit optimization policy. The generated parameter distributions and related forward responses are used as new training samples for supervised learning. The active learning paradigm is further embedded in the procedure where queries on data diversity and uncertainty are used to generate fully informative reduced sets for training. The procedure is recursive. At each cycle, the physics-based inversion is coupled to the machine learning predictions via penalty terms that promote a long-term data misfit reduction. The resulting self-supervised, active learning, physics-driven deep learning inversion generalizes well with field data. The method is applied to perform full waveform inversion of a complex land seismic dataset characterized by transcurrent faulting and related structures. High signal-to-noise virtual super gathers are inverted with a 1.5D Laplace-Fourier full waveform inversion scheme. The active learning inversion procedure utilizes a small fraction of data for training while achieving sharper velocity reconstructions and a lower data misfit when compared to previous results. Active learning full waveform inversion is highly generalizable and effective for land seismic velocity model building and for other inversion scenarios.
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自我监督、主动学习地震全波形反演
我们开发了一种递归、自监督机器学习反演法,用于快速、准确地反演陆地地震数据的全波形。通过使用野外数据的虚拟超级采集进行训练,增强了机器学习的通用性。这些数据是通过中点偏移排序和堆叠获得的,并在对透射波场分解后应用了与地表一致的修正。该程序通过采用反演代理与环境互动,并在数据错配优化策略下探索模型空间,从而实现强化学习概念。生成的参数分布和相关的前向响应被用作监督学习的新训练样本。主动学习范式被进一步嵌入到程序中,其中对数据多样性和不确定性的查询被用来生成用于训练的完全信息缩减集。该程序是递归的。在每个循环中,基于物理的反演都会通过惩罚项与机器学习预测相结合,从而促进长期的数据失配减少。由此产生的自监督、主动学习、物理驱动的深度学习反演能很好地概括现场数据。该方法被应用于对一个复杂的陆地地震数据集进行全波形反演,该数据集的特点是断层交错和相关结构。采用 1.5D 拉普拉斯-傅里叶全波形反演方案对高信噪比虚拟超级集束进行反演。与之前的结果相比,主动学习反演程序利用了一小部分数据进行训练,同时获得了更清晰的速度重建和更低的数据误差。主动学习全波形反演具有很强的通用性,可有效用于陆地地震速度模型的建立和其他反演方案。
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来源期刊
Geophysics
Geophysics 地学-地球化学与地球物理
CiteScore
6.90
自引率
18.20%
发文量
354
审稿时长
3 months
期刊介绍: Geophysics, published by the Society of Exploration Geophysicists since 1936, is an archival journal encompassing all aspects of research, exploration, and education in applied geophysics. Geophysics articles, generally more than 275 per year in six issues, cover the entire spectrum of geophysical methods, including seismology, potential fields, electromagnetics, and borehole measurements. Geophysics, a bimonthly, provides theoretical and mathematical tools needed to reproduce depicted work, encouraging further development and research. Geophysics papers, drawn from industry and academia, undergo a rigorous peer-review process to validate the described methods and conclusions and ensure the highest editorial and production quality. Geophysics editors strongly encourage the use of real data, including actual case histories, to highlight current technology and tutorials to stimulate ideas. Some issues feature a section of solicited papers on a particular subject of current interest. Recent special sections focused on seismic anisotropy, subsalt exploration and development, and microseismic monitoring. The PDF format of each Geophysics paper is the official version of record.
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