Simulation of Geological Contacts from Interpreted Geological Model Using Multiple-Point Statistics

被引:0
|
作者
Alexandre Boucher
Joao Felipe Costa
Luis Gustavo Rasera
Eduardo Motta
机构
[1] LLC,Advanced Resources and Risk Technology
[2] Federal University of Rio Grande do Sul,Mining Engineering Department
[3] Vale Ferrous Department,undefined
来源
Mathematical Geosciences | 2014年 / 46卷
关键词
Mining; Geostatistics; Training image; Uncertainty; Iron ore;
D O I
暂无
中图分类号
学科分类号
摘要
Applications of multiple-point statistics (mps) algorithms to large non-repetitive geological objects such as those found in mining deposits are difficult because most mps algorithms rely on pattern repetition for simulation. In many cases, an interpreted geological model built from a computer-aided design system is readily available but suffers as a training image due to the lack of patterns repetitiveness. Porphyry copper deposits and iron ore formations are good examples of such mining deposits with non-repetitive patterns. This paper presents an algorithm called contactsim that focuses on reproducing the patterns of the contacts between geological types. The algorithm learns the shapes of the lithotype contacts as interpreted by the geologist, and simulates their patterns at a later stage. Defining a zone of uncertainty around the lithological contact is a critical step in contactsim, because it defines both the zones where the simulation is performed and where the algorithm should focus to learn the transitional patterns between lithotypes. A larger zone of uncertainty results in greater variation between realizations. The definition of the uncertainty zone must take into consideration the geological understanding of the deposit, and the reliability of the contact zones. The contactsim algorithm is demonstrated on an iron ore formation.
引用
收藏
页码:561 / 572
页数:11
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