Reservoir simulation

Simulation Algorithm Benefits by Connecting Geostatistics With Unsupervised Learning

A new geostatistics modeling methodology that connects geostatistics and machine-learning methodologies, uses nonlinear topological mapping to reduce the original high-dimensional data space, and uses unsupervised-learning algorithms to bypass problems with supervised-learning algorithms.

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Fig. 1—SOM mapping from input space to neural grids. (a) The high-dimensional input-data space. (b) The neural network in a one-layer 2D lattice grid; each neuron represents a feature drawn from input-data space. The red square represents a neighborhood region. (c) Activated BMU neighborhood. The red square shows the activated neighborhood region surrounding the BMU, shown as a red circle. The blue circles represent included neighborhood neurons other than the BMU at that iteration. Black circles represent deactivated neurons.

This paper presents a new geostatistics modeling methodology that connects geostatistics and machine-learning methodologies, uses nonlinear topological mapping to reduce the original high-dimensional data space, and uses unsupervised-learning algorithms to bypass problems with supervised-learning algorithms. The algorithm presented is a neural topology-preserving pattern-based geostatistical simulation algorithm that integrates the self-organizing map (SOM) concept and its updated version—growing self-organizing map (GSOM)—with an unsupervised competitive learning structure.

Introduction

In oil and gas reservoir modeling, any model construction faces challenges of limited data to some extent. The heuristic behind all geostatistical techniques is the implicit existence of statistical relationships among available data. “Data” here is a broad term; it could be discrete points, such as porosity or permeability at certain locations, but it also could be training images (TIs), which are used in this work.

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