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Regularization of geophysical ill-posed problems by iteratively re-weighted and refined least squares

机译:通过迭代重新加权和优化最小二乘法对地球物理不适问题进行正则化

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The iteratively re-weighted least squares (IRLS) is a commonly used algorithm which has received significant attention in geophysics and other fields of scientific computing for regularization of discrete ill-posed problems. The IRLS replaces a difficult optimization problem by a sequence of weighted linear systems. The optimum solution of the original problem is usually determined by computing the solution for various regularization parameters lambda, each needing several re-weighted iterations (usually 10-15). In this paper, in order to decrease the required computation time (iterations) while maintaining good properties of the algorithm such as edge-preserving, the IRLS is augmented with a refinement strategy and the value of lambda is progressively updated in a geometrical form during the iterations. The new algorithm, called iteratively re-weighted and refined least squares (IRRLS), can be interpreted as a Landweber iteration with a non-stationary shaping matrix which is updated based on the solution obtained from previous iteration. Two main properties of IRRLS are (1) the regularization parameter is the stopping iteration and (2) it is equipped with a tuning parameter which makes it flexible for recovering models with different smoothness. We show numerically that both the residual and regularization norms are monotone functions of iteration and hence well behaved for automatic determination of stopping parameter. The Stain's unbiased risk estimate (SURE), generalized cross validation (GCV), L-curve analysis, and discrepancy principle (DCP) techniques are employed for automatic determination of optimum iteration. Experimental results from seismic deconvolution and seismic tomography are included showing that the proposed methodology outperforms the conventional IRLS with significantly lower computational burden.
机译:迭代重新加权最小二乘(IRLS)是一种常用算法,在地球物理学和其他科学计算领域中,正则化离散不适定问题已引起广泛关注。 IRLS通过一系列加权线性系统代替了困难的优化问题。原始问题的最佳解决方案通常是通过计算各种正则化参数lambda的解决方案来确定的,每个参数都需要进行几次重新加权的迭代(通常为10-15)。在本文中,为了减少所需的计算时间(迭代次数),同时保持算法的良好属性(如边缘保留),IRLS则采用了一种细化策略进行了扩充,并且在计算过程中以几何形式逐步更新了lambda的值。迭代。新算法称为迭代重新加权和精简最小二乘(IRRLS),可以解释为具有非平稳整形矩阵的Landweber迭代,该矩阵会根据从先前迭代获得的解决方案进行更新。 IRRLS的两个主要属性是(1)正则化参数是停止迭代;(2)配备调整参数,可以灵活地恢复具有不同平滑度的模型。我们从数值上显示,残差和正则化范本都是迭代的单调函数,因此对于自动确定停止参数表现良好。 Stain的无偏风险估计(SURE),广义交叉验证(GCV),L曲线分析和差异原理(DCP)技术用于自动确定最佳迭代。地震反褶积和地震层析成像的实验结果也包括在内,表明所提出的方法优于传统的IRLS,且计算量大为减少。

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