4.4 Article

Scenario Reduction Applied to Geostatistical Simulations

Journal

MATHEMATICAL GEOSCIENCES
Volume 45, Issue 2, Pages 165-182

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s11004-012-9420-7

Keywords

Stochastic optimization; Multi-stage programming with recourse

Funding

  1. Research Consortium on the Real Options in Mining
  2. Codelco (Chile)

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Having a large number of geostatistical simulations of a mineral or petroleum deposit provides a better idea of its upside potential and downside risk; however, large numbers of simulated realizations of a deposit may pose computational difficulties in subsequent decision-making phases. Hence, depending on the specific case, there can be a need to select a representative subset of conditionally simulated deposit realizations. This paper examines and extends an approach developed by the stochastic optimization community based on stochastic mathematical programming with recourse and is discussed here in the context of mineral deposits while it is possibly suitable for other earth science applications. The approach is based on measuring the distance between simulations and the introduced distance measure between simulated realizations of a mineral deposit is based on the metal above a given set of cutoff grades while a pre-existing mine design is available. The approach is tested on 100 simulations of the Walker Lake data with promising results.

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