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Seismic deconvolution and inversion with erratic data

机译:地震反卷积和反演与不稳定的数据

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If there are some erratic data (e.g. outliers), which may arise from measurement error, or other reasons, in seismic data, the seismic deconvolution and inversion need to be implemented in a way that minimizes their effects. However, the deconvolution and inversion methods based on L2-norm misfit function are highly sensitive to these erratic seismic observations. As an alternative, L1-norm misfit functions are more robust and erratic-resistant. In order to find the solution of the inverse problem constrained by an L1-norm misfit function, an iteratively re-weighted least squares algorithm is used frequently. However, it is relatively time consuming. In this paper, we propose a new method based on the sparse signal representation theory. The overcomplete dictionary used for the sparse representation of seismic data with erratic data is composed of two bases: a wavelet basis used for representing the seismic data to implement deconvolution and a Dirac basis used for representing the erratic data. In addition, at the stage of seismic inversion after deconvolution, total variation and a priori model are used as the regularization constraint terms to estimate inversion results with a blocky and laterally continuous structure. The new method is successfully tested on the noisy synthetic seismic data with erratic data. Finally, the proposed method is performed on a real seismic data section, and the inversion results are reasonable, i.e. consistent with the geologic structure of the original seismic data. Compared to the conventional sparse deconvolution and inversion method, the proposed method not only eliminates the effect of outliers, but also has highly improved computational efficiency.
机译:如果在地震数据中存在一些可能由于测量误差或其他原因而引起的不稳定数据(例如异常值),则需要以使地震影响最小的方式来实现地震波解卷积和反演。然而,基于L2-范数失配函数的反褶积和反演方法对这些不稳定的地震观测高度敏感。作为替代方案,L1范数失配函数更健壮且抗不稳定。为了找到受L1范数失配函数约束的反问题的解,经常使用迭代重新加权的最小二乘算法。但是,这是相对耗时的。本文提出了一种基于稀疏信号表示理论的新方法。用于用稀疏数据稀疏表示地震数据的超完备字典由两个基础组成:用于表示地震数据以实现反卷积的小波基和用于表示不规则数据的Dirac基。另外,在反褶积后的地震反演阶段,将总变化和先验模型用作正则化约束项,以估计具有块状和横向连续结构的反演结果。该新方法已成功地在含噪声数据和不稳定数据的合成地震数据上进行了测试。最后,该方法是在真实地震数据段上进行的,反演结果是合理的,即与原始地震数据的地质结构相吻合。与常规的稀疏解卷积和反演方法相比,该方法不仅消除了离群值的影响,而且计算效率大大提高。

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