Characterizing the uncertainty in the subsurface is an important step for exploration and extraction of natural resources, the storage of nuclear material and gasses such as natural gas or CO 2 . Imaging the subsurface can be posed as an inverse problem and can be solved using the geostatistical approach [Kitanidis P.K. (2007) Geophys. Monogr. Ser. 171, 19-30, doi:10.1029/171GM04; Kitanidis (2011) doi: 10.1002/9780470685853. ch4, pp. 71-85] which is one of the many prevalent approaches. We briefly describe the geostatistical approach in the context ofl inear inverse problems and discuss some of the challenges in the large-scale implementation of this approach.Using the hierarchical matrix approach, we show how to reduce matrix vector products involving the dense covariance matrix from O(m 2 ) to O(mlogm), where m is the number of unknowns. Combined with a matrix-free Krylov subspace solver, this results in a much faster algorithm for solving the system of equations that arise from the geostatistical approach. We illustrate the performance of our algorithm on an application, for monitoring CO 2 concentrations using crosswell seismic tomography. © 2012, IFP Energies nouvelles.
CITATION STYLE
Saibaba, A. K., Ambikasaran, S., Yue Li, J., Kitanidis, P. K., & Darve, E. F. (2012). Application of Hierarchical Matrices to Linear Inverse Problems in Geostatistics. Oil & Gas Science and Technology – Revue d’IFP Energies Nouvelles, 67(5), 857–875. https://doi.org/10.2516/ogst/2012064
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