Geostatistics on stratigraphic grids.

Antoine Bertoncello and Jef Caers and Pierre Biver and Guillaume Caumon. ( 2008 )
in: Proc. 28th Gocad Meeting, Nancy

Abstract

For computational reasons, practical implementations of many geostatistical algorithms are designed for Cartesian grids. However, many applications in folded or faulted geological structures with complex stratigraphy, require unstructured grids containing blocks with varying support. The current practice deals with these grids by defining a physical space, where all structural geological features are incorporated (stratigraphic grid) and an original depositional space, where geostatistical algorithms are applied (typically a Cartesian grid). Therefore, these two spaces need to be linked, which is not straightforward. The traditional method consists of a direct mapping between the two spaces, fast and easy to complete. However, this method does not ensure the respect of the target statistics in the real space. In addition, it assumes that all the cells of the stratigraphic grid have the same volume. Hence, important global measures such as NTG or OOIP can become biased. The method introduced in this paper aims at overcoming these problems. It consists first, of sampling the stratigraphic grid with a regular lattice of points. These points are then mapped in the depositional space into a set of irregularly spaced points (due to the unfolding and unfaulting affecting the grid-geometry). Thus, the repartition of the points in the depositional space reflects implicitly the model geometry. Performing estimation/simulation on this set of points and then mapping back the result ensures reproduction of target statistics in the real space and properly accounts for the support effect. As a consequence, variances are correctly modeled, the estimated/simulated values are smoothed according to the volume of the cells and statistics are respected.

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    BibTeX Reference

    @inproceedings{224_bertoncello,
     abstract = { For computational reasons, practical implementations of many geostatistical algorithms are
    designed for Cartesian grids. However, many applications in folded or faulted geological structures
    with complex stratigraphy, require unstructured grids containing blocks with varying support. The
    current practice deals with these grids by defining a physical space, where all structural geological
    features are incorporated (stratigraphic grid) and an original depositional space, where geostatistical
    algorithms are applied (typically a Cartesian grid). Therefore, these two spaces need to be linked,
    which is not straightforward. The traditional method consists of a direct mapping between the
    two spaces, fast and easy to complete. However, this method does not ensure the respect of the
    target statistics in the real space. In addition, it assumes that all the cells of the stratigraphic
    grid have the same volume. Hence, important global measures such as NTG or OOIP can become
    biased. The method introduced in this paper aims at overcoming these problems. It consists
    first, of sampling the stratigraphic grid with a regular lattice of points. These points are then
    mapped in the depositional space into a set of irregularly spaced points (due to the unfolding
    and unfaulting affecting the grid-geometry). Thus, the repartition of the points in the depositional
    space reflects implicitly the model geometry. Performing estimation/simulation on this set of points
    and then mapping back the result ensures reproduction of target statistics in the real space and
    properly accounts for the support effect. As a consequence, variances are correctly modeled, the
    estimated/simulated values are smoothed according to the volume of the cells and statistics are
    respected. },
     author = { Bertoncello, Antoine AND Caers, Jef AND Biver, Pierre AND Caumon, Guillaume },
     booktitle = { Proc. 28th Gocad Meeting, Nancy },
     title = { Geostatistics on stratigraphic grids. },
     year = { 2008 }
    }