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首页> 外文期刊>Journal of Seismic Exploration >SIMPLE AND FAST GRADIENT-BASED IMPEDANCE INVERSION USING TOTAL VARIATION REGULARIZATION
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SIMPLE AND FAST GRADIENT-BASED IMPEDANCE INVERSION USING TOTAL VARIATION REGULARIZATION

机译:基于总变化量调节的基于快速和梯度的阻抗反演

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摘要

We present an algorithm to estimate blocky images of the subsurface acoustic impedance (AI) from poststack seismic data. We regularize the resulting inverse problem, which is inherently ill-posed and non-unique, by means of the total variation semi-norm (TV). This allows us promote stable and blocky solutions which are, by virtue of the capability of TV to handle edges properly, adequate to model layered earth models with sharp contrasts. The use of the TV leads to a convex objective function easily minimized using a gradient-based algorithm that requires, in contrast to other AI inversion methods based on 'I'V regularization, simple matrix-vector multiplications and no direct matrix inversion. The latter makes the algorithm numerically stable, easy to apply, and economic in terms of computational cost. Tests on synthetic and field data show that the proposed method, contrarily to conventional l(2)- or l(1)-norm regularized solutions is able to provide blocky AI images that preserve the subsurface layered structure with good lateral continuity from noisy observations.
机译:我们提出一种算法,用于根据叠后地震数据估算地下声阻抗(AI)的块状图像。我们通过总变化半范数(TV)规范化了反演问题,该反问题本质上是不适定且非唯一的。这使我们能够提倡稳定的解决方案,借助电视正确处理边缘的能力,这些解决方案足以对具有鲜明对比的分层地球模型进行建模。与基于'I'V正则化的其他AI反演方法相比,使用基于梯度的算法很容易将TV的使用导致凸目标函数最小化,而简单的矩阵矢量乘法且没有直接的矩阵反演。后者使得该算法在数值上稳定,易于应用并且在计算成本方面很经济。对合成数据和现场数据的测试表明,与常规的l(2)-或l(1)-范数正则化解决方案相反,所提出的方法能够提供块状AI图像,该图像可以保留嘈杂的观测结果,从而保留具有良好的横向连续性的地下分层结构。

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