3D Geological Modeling: Solving as a Classification Problem with the Support Vector Machine
نویسندگان
چکیده
The process of creating multi-unit 3D geological models by successive unit interpolation may be tedious and time-consuming. Here, we propose to automate this procedure through presenting the problem as a classification task and solving it simultaneously with the Support Vector Machine (SVM), a method known from the field of artificial intelligence. Experiments with various input data and kernel parameters demonstrated that the SVM has great potential in 3D reconstructions from sparse geological information. An extended version of this paper has been accepted for publication in “Computers and Geosciences” (Smirnoff et al., 2008).
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