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Regularization and Backus-Gilbert estimation in nonlinear inverse problems: Application to magnetotellurics and surface waves.

机译:非线性逆问题中的正则化和Backus-Gilbert估计:在大地电磁和表面波中的应用。

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摘要

Existing methods for solving inverse problems in earth structure determination have not fully exploited the Backus-Gilbert approach to handling nonuniqueness. I develop a theory of linear inference which combines Backus-Gilbert estimation and Tikhonov regularization. I show that, for linear inverse problems, a "regularized least squares" criterion for finding smooth, data-compatible models is equivalent to a Backus-Gilbert criterion for finding optimal estimates of linear spatial averages of earth structure. I attempt to extend the theory to nonlinear problems and show that, under appropriate assumptions, the equivalence of regularized least squares and Backus-Gilbert estimation holds as a first order approximation.;I apply linear inverse methods to the inversion of surface wave dispersion data for one-dimensional shear velocity and the inversion of magnetotelluric data for one- and two-dimensional variations of electrical conductivity. In the surface wave examples, I use a regularized least squares method to invert both synthetic and real data. The inversion method achieves the goals of the Backus-Gilbert approach by finding smooth shear velocity models providing good fits to the data, together with variance and spatial resolution functions which provide a quantitative measure of the uniqueness of the models.;In the one-dimensional magnetotelluric problem, numerical experiments indicate that the effects of nonlinearity on Backus-Gilbert estimates of conductivity are not severe. A theoretical analysis shows that magnetotelluric data are highly nonlinear and discontinuous functionals of two- and three-dimensional conductivity.;I test a regularized least squares method with synthetic and real two-dimensional magnetotelluric data sets. The experiments are successful in that acceptable models are obtained much more readily than with trial-and-error modeling. However, computational constraints severely limited the number of data which could be inverted and the number of iteration steps conducted to find a solution. Further, the regularization functional (roughness measure) was engineered to control oscillations in the iteration sequence, and it is not known what measure of spatial resolution it implies. For these reasons, the models obtained, while quite satisfactory, cannot be considered optimal and lack quantitative measures of uniqueness.
机译:解决地球结构确定中反问题的现有方法尚未完全利用Backus-Gilbert方法来处理非唯一性。我开发了一种结合Backus-Gilbert估计和Tikhonov正则化的线性推理理论。我表明,对于线性反问题,用于查找光滑的,数据兼容的模型的“正则最小二乘”准则等效于用于查找地球结构线性空间平均的最佳估计的Backus-Gilbert准则。我试图将理论扩展到非线性问题,并证明在适当的假设下,正则化最小二乘和Backus-Gilbert估计的等价性是一阶近似值。;我将线性逆方法应用于表面波频散数据的反演电导率的一维和二维变化的一维剪切速度和大地电磁数据的反演。在表面波示例中,我使用正则化最小二乘法来反转合成数据和实数数据。反演方法通过找到可提供良好拟合数据的平滑剪切速度模型以及方差和空间分辨率函数来实现Backus-Gilbert方法的目标,这些函数可定量测量模型的唯一性。大地电磁问题,数值实验表明非线性对电导率的Backus-Gilbert估计的影响并不严重。理论分析表明,大地电磁数据是二维和三维电导率的高度非线性和不连续的函数。我用合成的和实际的二维大地电磁数据集测试了正则化最小二乘法。实验是成功的,因为与反复试验模型相比,获得可接受的模型要容易得多。但是,计算约束严重限制了可以反转的数据数量以及为找到解决方案而进行的迭代步骤的数量。此外,对正则化功能(粗糙度度量)进行了工程设计,以控制迭代序列中的振荡,并且尚不知道它暗示着什么空间分辨率度量。由于这些原因,虽然获得的模型非常令人满意,但不能认为是最佳模型,并且缺乏唯一性的定量度量。

著录项

  • 作者

    Rodi, William L.;

  • 作者单位

    The Pennsylvania State University.;

  • 授予单位 The Pennsylvania State University.;
  • 学科 Geophysics.
  • 学位 Ph.D.
  • 年度 1989
  • 页码 309 p.
  • 总页数 309
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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