Multitask Seismic Inversion Based on Deformable Convolution and Generative Adversarial Network.

Yanyan Luo, Xudong Liu,He Meng,Yueming Ye,Bangyu Wu

IEEE Geosci. Remote. Sens. Lett.(2024)

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摘要
Seismic inversion is crucial for oil and gas exploration. Recently, the development of deep learning (DL) provides new means for the continuous improvement of seismic inversion. However, field seismic data exhibits non-stationarity and multi-scale features due to wavelet attenuation and dominant frequency variations. Although atrous spatial pyramid pooling (ASPP) module concatenated of dilated convolution greatly facilitates the multi-scale feature learning ability of network, the adjustment of dilation rate, which is a hyperparameter, requires ample ablation experiments, and is a tedious and time-consuming process. To alleviate these issues, the stacked multiple deformable convolution (DConv) layers are employed as the feature extraction module to adaptively capture the multi-scale correspondence between seismic data and elastic parameters in multitask seismic inversion. The sampling grids of DConv can automatically be modulated by adding an learnable offset. Thus DConv can provides flexible and effective receptive field, which is conducive to aggregating pivotal information of seismic data and improving the inversion accuracy. To further enhance the reliability and stability, the proposed method incorporates multi-trace to single-trace (M2S) strategy and the closed-loop wasserstein generative adversarial network with gradient penalty (WGAN-GP) framework. Experiments show that the application of DConv to the inversion of P-wave velocity ( Vp ) and density (ρ) yield superior transverse continuity and vertical resolution. Compared with ASPP, the MSE of the predicted profiles and the true models in synthetic Marmousi2 experiment is degraded by 36% and 32% respectively, and the MSE of the reconstructed seismic data and the real data is reduced by an order of magnitude for the field test.
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关键词
Deformable convolution,generative adversarial network,seismic inversion,multi-trace to single-trace
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