4.7 Article

Large-scale inverse model analyses employing fast randomized data reduction

Journal

WATER RESOURCES RESEARCH
Volume 53, Issue 8, Pages 6784-6801

Publisher

AMER GEOPHYSICAL UNION
DOI: 10.1002/2016WR020299

Keywords

hydraulic inverse modeling; data reduction; randomization; geostatistical inversion

Funding

  1. Los Alamos National Laboratory
  2. Los Alamos National Laboratory (LANL)
  3. DiaMonD (U.S. Department of Energy Office of Science) [11145687]

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When the number of observations is large, it is computationally challenging to apply classical inverse modeling techniques. We have developed a new computationally efficient technique for solving inverse problems with a large number of observations (e.g., on the order of 10(7) or greater). Our method, which we call the randomized geostatistical approach (RGA), is built upon the principal component geostatistical approach (PCGA). We employ a data reduction technique combined with the PCGA to improve the computational efficiency and reduce the memory usage. Specifically, we employ a randomized numerical linear algebra technique based on a so-called sketching matrix to effectively reduce the dimension of the observations without losing the information content needed for the inverse analysis. In this way, the computational and memory costs for RGA scale with the information content rather than the size of the calibration data. Our algorithm is coded in Julia and implemented in the MADS open-source high-performance computational framework (http://mads.lanl.gov). We apply our new inverse modeling method to invert for a synthetic transmissivity field. Compared to a standard geostatistical approach (GA), our method is more efficient when the number of observations is large. Most importantly, our method is capable of solving larger inverse problems than the standard GA and PCGA approaches. Therefore, our new model inversion method is a powerful tool for solving large-scale inverse problems. The method can be applied in any field and is not limited to hydrogeological applications such as the characterization of aquifer heterogeneity.

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