Deep learning-based geophysical joint inversion using partial channel drop method

IF 2.2 3区 地球科学 Q2 GEOSCIENCES, MULTIDISCIPLINARY
Jongchan Oh , Shinhye Kong , Daeung Yoon , Seungwook Shin
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引用次数: 0

Abstract

Joint inversion stands as a critical technique for the precise determination of subsurface structures by mitigating the ill-posedness inherent in separate geophysical inversion procedures. Recently, the integration of deep learning (DL) into joint inversion has shown promise in achieving more precise interpretations. However, existing DL-based joint inversion approaches face challenges, particularly when survey configurations between training and test datasets vary, and are prone to overfitting towards specific types of data. In response to these limitations, we introduce the Partial Channel Drop (PCD) method applied to DL joint inversion, resulting in a DL-PCD joint inversion model. Our study utilizes gravity, magnetic, and direct current resistivity data as the multiple geophysical data sources and employs 3D U-Net for the DL joint inversion model. The PCD method is implemented during the DL joint inversion training process, yielding a robust and versatile DL-based joint inversion model that can adapt to differing data configurations and manage scenarios with missing data while preventing overfitting and consequent bias in inversion results. Our proposed approach demonstrates superior generalization performance and robustness compared to separate inversion and DL joint inversion without the PCD method, exhibiting resilience even when faced with added noise. The results validate the effectiveness of the PCD method in bolstering the generalization performance of DL joint inversion, laying the groundwork for transformative possibilities in future 3D joint inversion research.
利用部分通道下降法进行基于深度学习的地球物理联合反演
联合反演可以减轻单独地球物理反演程序固有的不确定性,是精确测定地下结构的关键技术。最近,将深度学习(DL)整合到联合反演中,有望实现更精确的解释。然而,现有的基于深度学习的联合反演方法面临着挑战,尤其是当训练数据集和测试数据集之间的勘测配置不同时,容易出现对特定类型数据的过拟合。针对这些局限性,我们引入了应用于 DL 联合反演的部分通道下降(PCD)方法,从而产生了 DL-PCD 联合反演模型。我们的研究利用重力、磁力和直流电阻率数据作为多种地球物理数据源,并采用三维 U-Net 建立 DL 联合反演模型。PCD 方法是在 DL 联合反演训练过程中实施的,它产生了一种基于 DL 的稳健且通用的联合反演模型,能够适应不同的数据配置并管理数据缺失的情况,同时防止过拟合和反演结果的偏差。与不使用 PCD 方法的单独反演和 DL 联合反演相比,我们提出的方法具有更优越的泛化性能和鲁棒性,即使在面临额外噪声时也能表现出弹性。结果验证了 PCD 方法在增强 DL 联合反演的泛化性能方面的有效性,为未来三维联合反演研究的变革性可能性奠定了基础。
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来源期刊
Journal of Applied Geophysics
Journal of Applied Geophysics 地学-地球科学综合
CiteScore
3.60
自引率
10.00%
发文量
274
审稿时长
4 months
期刊介绍: The Journal of Applied Geophysics with its key objective of responding to pertinent and timely needs, places particular emphasis on methodological developments and innovative applications of geophysical techniques for addressing environmental, engineering, and hydrological problems. Related topical research in exploration geophysics and in soil and rock physics is also covered by the Journal of Applied Geophysics.
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