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Reconstruction of seismic data using adaptive regularization

机译:使用自适应正则化重建地震数据

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摘要

In seismic data processing, we often need to interpolate/extrapolate missing spatial locations in a domain of interest. The reconstruction problem can be posed as an inverse problem where from inadequate and incomplete data one attempts to recover the complete band-limited seismic wavefield. However, the problem is often ill posed due to factors such as inaccurate knowledge of bandwidth and noise. In this case, regularization can be used to help to obtain a unique and stable solution. In this paper, we formulate band-limited data reconstruction as a minimum norm least squares type problem where an adaptive DFT-weighted norm regularization term is used to constrain the solution. In particular, the regularization term is iteratively updated through using the modified periodogram of the estimated data. The technique allows for adaptive incorporation of prior knowledge of the data such as the spectrum support and the shape of the spectrum. The adaptive regularization can be accelerated using FFTs and an iterative solver like preconditioned conjugate gradient algorithm. Examples on synthetic and real seismic data illustrate improvement of the new method over damped least squares estimation.
机译:在地震数据处理中,我们经常需要在感兴趣的区域内插值/外推缺失的空间位置。可以将重建问题提出为反问题,其中从不足和不完整的数据中尝试恢复完整的带限地震波场。然而,由于诸如对带宽和噪声的不正确了解之类的因素,该问题经常引起。在这种情况下,可以使用正则化来帮助获得唯一且稳定的解决方案。在本文中,我们将带宽受限的数据重构公式化为最小范数最小二乘型问题,其中使用自适应DFT加权范数正则化项来约束解。特别地,通过使用估计数据的修改的周期图来迭代地更新正则项。该技术允许自适应合并数据的先验知识,例如频谱支持和频谱形状。可以使用FFT和类似预条件共轭梯度算法的迭代求解器来加速自适应正则化。合成和真实地震数据的示例说明了新方法相对于阻尼最小二乘估计的改进。

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