NANASep 23, 2017

Total variation regularization of the $3$-D gravity inverse problem using a randomized generalized singular value decomposition

arXiv:1709.0812523 citationsh-index: 26
Originality Incremental advance
AI Analysis

For geophysicists solving large-scale 3-D gravity inverse problems, this method offers an efficient way to preserve sharp discontinuities in subsurface structures.

The paper presents a fast algorithm for total variation regularization of the 3-D gravity inverse problem, using a randomized generalized singular value decomposition to reduce computational and memory demands while maintaining good accuracy on synthetic examples.

We present a fast algorithm for the total variation regularization of the $3$-D gravity inverse problem. Through imposition of the total variation regularization, subsurface structures presenting with sharp discontinuities are preserved better than when using a conventional minimum-structure inversion. The associated problem formulation for the regularization is non linear but can be solved using an iteratively reweighted least squares algorithm. For small scale problems the regularized least squares problem at each iteration can be solved using the generalized singular value decomposition. This is not feasible for large scale problems. Instead we introduce the use of a randomized generalized singular value decomposition in order to reduce the dimensions of the problem and provide an effective and efficient solution technique. For further efficiency an alternating direction algorithm is used to implement the total variation weighting operator within the iteratively reweighted least squares algorithm. Presented results for synthetic examples demonstrate that the novel randomized decomposition provides good accuracy for reduced computational and memory demands as compared to use of classical approaches.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes