Stochastic simulation by image quilting of process-based geological models

  • Júlio Hoffimann
  • , Céline Scheidt
  • , Adrian Barfod
  • , Jef Caers

    Research output: Contribution to journalArticleResearchpeer-review

    31 Citations (Scopus)

    Abstract

    Process-based modeling offers a way to represent realistic geological heterogeneity in subsurface models. The main limitation lies in conditioning such models to data. Multiple-point geostatistics can use these process-based models as training images and address the data conditioning problem. In this work, we further develop image quilting as a method for 3D stochastic simulation capable of mimicking the realism of process-based geological models with minimal modeling effort (i.e. parameter tuning) and at the same time condition them to a variety of data. In particular, we develop a new probabilistic data aggregation method for image quilting that bypasses traditional ad-hoc weighting of auxiliary variables. In addition, we propose a novel criterion for template design in image quilting that generalizes the entropy plot for continuous training images. The criterion is based on the new concept of voxel reuse—a stochastic and quilting-aware function of the training image. We compare our proposed method with other established simulation methods on a set of process-based training images of varying complexity, including a real-case example of stochastic simulation of the buried-valley groundwater system in Denmark.

    Original languageEnglish
    Pages (from-to)18-32
    Number of pages15
    JournalComputers & Geosciences
    Volume106
    DOIs
    Publication statusPublished - Sept 2017

    Keywords

    • FFT
    • GPGPU
    • Multiple-point statistics
    • Relaxation
    • Shannon entropy
    • Tau model
    • Voxel reuse

    Programme Area

    • Programme Area 2: Water Resources

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