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2D and 3D prestack seismic data regularization using an accelerated sparse time-invariant Radon transform

机译:使用加速的稀疏时不变Radon变换对2D和3D叠前地震数据进行正则化

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The time-invariant Radon transform (RT) is commonly used to regularize and interpolate sparsely sampled or irregularly acquired prestack seismic data. The sparseness of the Radon model significantly influences the results of regularization. We have developed an effective and efficient method for the regularization and interpolation of 2D as well as 3D prestack seismic data. We used an accelerated sparse time-invariant RT in the mixed frequency-time domain to improve the performance of RT-based seismic data regularization. This 2D sparse RT incorporated the iterative 2D model shrinkage algorithm instead of the traditional iteratively reweighted least-squares (IRLS) algorithm in the time domain, and we computed the forward and inverse RTs in the frequency domain to solve the sparse inverse problem, which dramatically reduced the computational cost while obtaining a high-resolution result. The 2D synthetic and real data examples revealed that our 2D approach can better interpolate beyond aliasing a 2D prestack seismic record that contains a large gap, compared with the least-squares-based RT and the frequency-domain sparse RT methods. To extend the 2D technique to 3D more efficiently, we first formulate the 3D RT as a problem of solving a special matrix equation. Next, we use the iterative 3D model shrinkage algorithm to obtain a high-resolution 3D Radon model. The proposed 3D sparse RT method can be applied in the regularization of 3D prestack gathers, such as in the cable interpolation in a 3D marine survey. We achieved robustness and effectiveness with our 3D approach with successful applications to 3D synthetic and real data.
机译:时不变Radon变换(RT)通常用于对稀疏采样或不规则采集的叠前地震数据进行正则化和插值。 Radon模型的稀疏性严重影响了正则化的结果。我们已经开发出一种有效的方法来对2D以及3D叠前地震数据进行正则化和插值。我们在混合频率-时域中使用加速的稀疏时不变RT来提高基于RT的地震数据正则化的性能。这种2D稀疏RT在时域中采用了迭代2D模型收缩算法,而不是传统的迭代式加权最小二乘(IRLS)算法,并且我们在频域中计算了正向和逆向RT,以解决稀疏的逆问题。在获得高分辨率结果的同时降低了计算成本。 2D合成和真实数据示例显示,与基于最小二乘的RT和频域稀疏RT方法相比,我们的2D方法可以更好地插值,而不会混淆包含较大间隙的2D叠前地震记录。为了将2D技术更有效地扩展到3D,我们首先将3D RT公式化为求解特殊矩阵方程的问题。接下来,我们使用迭代3D模型收缩算法来获得高分辨率3D Radon模型。所提出的3D稀疏RT方法可以应用于3D叠前集的正则化,例如3D海洋勘测中的电缆插值。我们成功地将3D合成和真实数据应用于3D方法,从而实现了鲁棒性和有效性。

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