Robust inversion, dimensionality reduction, and randomized sampling

TitleRobust inversion, dimensionality reduction, and randomized sampling
Publication TypeJournal Article
Year of Publication2012
AuthorsAravkin AY, Friedlander MP, Herrmann FJ, van Leeuwen T
JournalMathematical Programming
Volume134
Pagination101-125
Date Published08
KeywordsFWI, inverse problems, optimization, robust estimation, seismic inversion, stochastic optimization
Abstract

We consider a class of inverse problems in which the forward model is the solution operator to linear ODEs or PDEs. This class admits several dimensionality-reduction techniques based on data averaging or sampling, which are especially useful for large-scale problems. We survey these approaches and their connection to stochastic optimization. The data-averaging approach is only viable, however, for a least-squares misfit, which is sensitive to outliers in the data and artifacts unexplained by the forward model. This motivates us to propose a robust formulation based on the Student's t-distribution of the error. We demonstrate how the corresponding penalty function, together with the sampling approach, can obtain good results for a large-scale seismic inverse problem with 50 % corrupted data.

URLhttp://www.springerlink.com/content/35rwr101h5736340/
DOI10.1007/s10107-012-0571-6