MT2DInv-Unet: A two-dimensional magnetotelluric inversion method based on deep learning technology

IF 3 2区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS Geophysics Pub Date : 2023-12-20 DOI:10.1190/geo2023-0004.1
Kejia Pan, Weiwei Ling, Jiajing Zhang, Xin Zhong, Zhengyong Ren, Shuanggui Hu, Dongdong He, Jingtian Tang
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Abstract

Traditional gradient-based inversion methods usually suffer from the problems of falling into local minima and relying heavily on initial guesses. Deep learning methods have received increasing attention due to their excellent nonlinear fitting ability. However, given the recent application of deep learning methods in the field of MT inversion, there are currently challenges associated with achieving high inversion resolution and extracting sufficient features. We develop a neural network model (called MT2DInv-Unet) based on the deformable convolution for two-dimensional MT inversion to approximate the nonlinear mapping from the MT response data to the resistivity model. The deformable convolution is achieved by adding an additional offset to each sample point of the conventional convolution operation, which extracts hidden relationships and allows the flexible adjustment of the size and shape of the feature region. Meanwhile, we design the network structure with multi-scale residual blocks, which effectively extract the multi-scale features of the MT response data. This design not only enhances the network performance but also alleviates issues such as vanishing gradients and network degradation. The results of synthetic models show that the proposed network inversion method has stable convergence, good robustness and generalization performance, and performs better than the fully convolutional neural network (FCN) and U-Net network. Finally, the inversion results of field data show that MT2DInv-Unet can effectively obtain a reliable underground resistivity structure, and has a good application prospect in MT inversion.
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MT2DInv-Unet:基于深度学习技术的二维磁位图反演方法
传统的梯度反演方法通常存在陷入局部极小值和严重依赖初始猜测的问题。深度学习方法因其出色的非线性拟合能力而受到越来越多的关注。然而,鉴于深度学习方法最近在 MT 反演领域的应用,目前在实现高反演分辨率和提取足够的特征方面还存在挑战。我们开发了一种基于可变形卷积的神经网络模型(称为 MT2DInv-Unet),用于二维 MT 反演,以近似实现从 MT 响应数据到电阻率模型的非线性映射。可变形卷积是通过在传统卷积运算的每个采样点上增加一个偏移量来实现的,它可以提取隐藏的关系,并允许灵活调整特征区域的大小和形状。同时,我们设计了具有多尺度残差块的网络结构,从而有效提取了 MT 响应数据的多尺度特征。这种设计不仅提高了网络性能,还缓解了梯度消失和网络退化等问题。合成模型的结果表明,所提出的网络反演方法具有稳定的收敛性、良好的鲁棒性和泛化性能,其性能优于全卷积神经网络(FCN)和 U-Net 网络。最后,野外数据反演结果表明,MT2DInv-Unet 可以有效地获得可靠的地下电阻率结构,在 MT 反演中具有良好的应用前景。
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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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