Abstract
Abstract. Multiple-point geostatistics are widely used to simulate
complex spatial structures based on a training image. The practical
applicability of these methods relies on the possibility of finding optimal
training images and parametrization of the simulation algorithms. While
methods for automatically selecting training images are available,
parametrization can be cumbersome. Here, we propose to find an optimal set
of parameters using only the training image as input. The difference between
this and previous work that used parametrization optimization is that it
does not require the definition of an objective function. Our approach is
based on the analysis of the errors that occur when filling artificially
constructed patterns that have been borrowed from the training image. Its
main advantage is to eliminate the risk of overfitting an objective
function, which may result in variance underestimation or in verbatim copy
of the training image. Since it is not based on optimization, our approach
finds a set of acceptable parameters in a predictable manner by using the
knowledge and understanding of how the simulation algorithms work. The
technique is explored in the context of the recently developed QuickSampling
algorithm, but it can be easily adapted to other pixel-based multiple-point
statistics algorithms using pattern matching, such as direct sampling or
single normal equation simulation (SNESIM).
Funder
Schweizerischer Nationalfonds zur Förderung der Wissenschaftlichen Forschung
Cited by
1 articles.
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