Application of Hierarchical Matrices to Linear Inverse Problems in Geostatistics

  • Saibaba A
  • Ambikasaran S
  • Yue Li J
  • et al.
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Abstract

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.

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APA

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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