شماره ركورد
1024984
عنوان مقاله
Large-scale Inversion of Magnetic Data Using Golub-Kahan Bidiagonalization with Truncated Generalized Cross Validation for Regularization Parameter Estimation صفحه
عنوان به زبان ديگر
Large-scale Inversion of Magnetic Data Using Golub-Kahan Bidiagonalization with Truncated Generalized Cross Validation for Regularization Parameter Estimation
پديد آورندگان
Saeed، Vatankhah University of Tehran- Iran
تعداد صفحه
11
از صفحه
29
تا صفحه
39
كليدواژه
Regularization parameter estimation , Sparse inversion ion , M S Golub-Kahan bidiagonalization
چكيده فارسي
In this paper a fast method for large-scale sparse inversion of magnetic data is considered. The L1-norm stabilizer is used to generate models with sharp and distinct interfaces. To deal with the non-linearity introduced by the L1-norm, a model-space iteratively reweighted least squares algorithm is used. The original model matrix is factorized using the Golub-Kahan bidiagonalization that projects the problem onto a Krylov subspace with a significantly reduced dimension. The model matrix of the projected system inherits the ill-conditioning of the original matrix, but the spectrum of the projected system accurately captures only a portion of the full spectrum. Equipped with the singular value decomposition of the projected system matrix, the solution of the projected problem is expressed using a filtered singular value expansion. This expansion depends on a regularization parameter which is determined using the method of Generalized Cross Validation (GCV), but here it is used for the truncated spectrum. This new technique, Truncated GCV (TGCV), is more effective compared with the standard GCV method. Numerical results using a synthetic example and real data demonstrate the efficiency of the presented algorithm
سال انتشار
1397
عنوان نشريه
فيزيك زمين و فضا
فايل PDF
7514174
عنوان نشريه
فيزيك زمين و فضا
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