Abstract

The present work proposes a new high-order simulation framework based on statistical learning. The training data consist of the sample data together with a training image, and the learning target is the underlying random field model of spatial attributes of interest. The learning process attempts to find a model with expected high-order spatial statistics that coincide with those observed in the available data, while the learning problem is approached within the statistical learning framework in a reproducing kernel Hilbert space (RKHS). More specifically, the required RKHS is constructed via a spatial Legendre moment (SLM) reproducing kernel that systematically incorporates the high-order spatial statistics. The target distributions of the random field are mapped into the SLM-RKHS to start the learning process, where solutions of the random field model amount to solving a quadratic programming problem. Case studies with a known data set in different initial settings show that sequential simulation under the new framework reproduces the high-order spatial statistics of the available data and resolves the potential conflicts between the training image and the sample data. This is due to the characteristics of the spatial Legendre moment kernel and the generalization capability of the proposed statistical learning framework. A three-dimensional case study at a gold deposit shows practical aspects of the proposed method in real-life applications.

Highlights

  • Stochastic simulations are used to quantify the spatial uncertainty in earth science or engineering applications

  • The present work proposes a new high-order simulation framework based on statistical learning (Vapnik 1995, 1998), which deliberately mitigates the statistical conflicts between the sample data and the training image (TI), and overcomes the limitation of approximating the probability density function (PDF) with the orthogonal expansion series

  • This spatial Legendre moment (SLM)-reproducing kernel Hilbert space (RKHS) is decomposed to lower-dimensional subspaces, such that conditional probability density functions (CPDF) in the context of sequential simulation can be embedded into the corresponding subspaces

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Summary

Introduction

Stochastic simulations are used to quantify the spatial uncertainty in earth science or engineering applications. The present work proposes a new high-order simulation framework based on statistical learning (Vapnik 1995, 1998), which deliberately mitigates the statistical conflicts between the sample data and the TI, and overcomes the limitation of approximating the PDF with the orthogonal expansion series. This SLM-RKHS is decomposed to lower-dimensional subspaces, such that conditional probability density functions (CPDF) in the context of sequential simulation can be embedded into the corresponding subspaces.

Overview of Kernel Space and Embedding a Probability Distribution
Reproducing Kernel Hilbert Space
RKHS Embedding of a Probability Distribution
SLM Reproducing Kernel
Sequential Simulation via Statistical Learning in SLM-Kernel Space
Sequential Simulation Algorithm Based on Statistical Learning in SLM-RKHS
Example 1
Conditional Probability on Different Spatial Patterns
Case Study at a Gold Deposit
Conclusions
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