论文标题
使用数据驱动的减少阶模型基于压缩感测的地震波场重建
Seismic Wavefield Reconstruction based on Compressed Sensing using Data-Driven Reduced-Order Model
论文作者
论文摘要
提出了一种基于数据驱动的减速模型(ROM)基于压缩传感的地震波场重建框架,并通过数值实验研究了其特性。数据驱动的ROM是使用单数值分解从波场数据集生成的。空间连续的地震波场是根据稀疏和离散的观察和数据驱动的ROM重建的。基于贪婪算法的线性逆问题的传感器优化方法有效地选择了用于重建的观察位点。提出的框架应用于理论波形的仿真数据,该数据具有水平分层的三层的地下结构。基于无噪声观察的重建证实了所提出方法的有效性。由于波场的ROM被用作先验信息,即使用于重建的传感器数量有限且随机选择,重建误差将减少为本框架的大约较低误差界限。此外,提议的框架获得的重建误差远小于高斯过程回归所获得的误差。对于具有噪声污染的观测值的数值实验,由于观察噪声而导致重建的波场降解,但是即使使用高斯流程回归的重构波场完全崩溃,本框架与所有可用观察位点所获得的重建误差也接近较低的误差。尽管重建误差大于使用所有观察位点获得的重建误差,但可以减少用于重建的观察位点的数量,同时通过将其与传感器优化方法相结合,以最大程度地减少重建数据的恶化和散射。
A seismic wavefield reconstruction framework based on compressed sensing using the data-driven reduced-order model (ROM) is proposed and its characteristics are investigated through numerical experiments. The data-driven ROM is generated from the dataset of the wavefield using the singular value decomposition. The spatially continuous seismic wavefield is reconstructed from the sparse and discrete observation and the data-driven ROM. The observation sites used for reconstruction are effectively selected by the sensor optimization method for linear inverse problems based on a greedy algorithm. The proposed framework was applied to simulation data of theoretical waveform with the subsurface structure of the horizontally-stratified three layers. The validity of the proposed method was confirmed by the reconstruction based on the noise-free observation. Since the ROM of the wavefield is used as prior information, the reconstruction error is reduced to an approximately lower error bound of the present framework, even though the number of sensors used for reconstruction is limited and randomly selected. In addition, the reconstruction error obtained by the proposed framework is much smaller than that obtained by the Gaussian process regression. For the numerical experiment with noise-contaminated observation, the reconstructed wavefield is degraded due to the observation noise, but the reconstruction error obtained by the present framework with all available observation sites is close to a lower error bound, even though the reconstructed wavefield using the Gaussian process regression is fully collapsed. Although the reconstruction error is larger than that obtained using all observation sites, the number of observation sites used for reconstruction can be reduced while minimizing the deterioration and scatter of the reconstructed data by combining it with the sensor optimization method.