A Multi-Point Geostatistical Modeling Method Based on 2D Training Image Partition Simulation

In this paper, a multi-point geostatistical (MPS) method based on variational function partition simulation is proposed to solve the key problem of MPS 3D modeling using 2D training images. The new method uses the FILTERSIM algorithm framework, and the variational function is used to construct simul...

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Main Authors: Yifei Zhao, Jianhong Chen, Shan Yang, Kang He, Hideki Shimada, Takashi Sasaoka
Format: Article
Language:English
Published: MDPI AG 2023-12-01
Series:Mathematics
Subjects:
Online Access:https://www.mdpi.com/2227-7390/11/24/4900
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author Yifei Zhao
Jianhong Chen
Shan Yang
Kang He
Hideki Shimada
Takashi Sasaoka
author_facet Yifei Zhao
Jianhong Chen
Shan Yang
Kang He
Hideki Shimada
Takashi Sasaoka
author_sort Yifei Zhao
collection DOAJ
description In this paper, a multi-point geostatistical (MPS) method based on variational function partition simulation is proposed to solve the key problem of MPS 3D modeling using 2D training images. The new method uses the FILTERSIM algorithm framework, and the variational function is used to construct simulation partitions and training image sequences, and only a small number of training images close to the unknown nodes are used in the partition simulation to participate in the MPS simulation. To enhance the reliability, a new covariance filter is also designed to capture the diverse features of the training patterns and allow the filter to downsize the training patterns from any direction; in addition, an information entropy method is used to reconstruct the whole 3D space by selecting the global optimal solution from several locally similar training patterns. The stability and applicability of the new method in complex geological modeling are demonstrated by analyzing the parameter sensitivity and algorithm performance. A geological model of a uranium deposit is simulated to test the pumping of five reserved drill holes, and the results show that the accuracy of the simulation results of the new method is improved by 11.36% compared with the traditional MPS method.
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spelling doaj.art-b3fd9e00837d43c3a4e092477c717fa62023-12-22T14:23:14ZengMDPI AGMathematics2227-73902023-12-011124490010.3390/math11244900A Multi-Point Geostatistical Modeling Method Based on 2D Training Image Partition SimulationYifei Zhao0Jianhong Chen1Shan Yang2Kang He3Hideki Shimada4Takashi Sasaoka5School of Resource and Safety Engineering, Central South University, Changsha 410083, ChinaSchool of Resource and Safety Engineering, Central South University, Changsha 410083, ChinaSchool of Resource and Safety Engineering, Central South University, Changsha 410083, ChinaKey Laboratory of Geological Survey and Evaluation of Ministry of Education, China University of Geosciences (Wuhan), Wuhan 430078, ChinaDepartment of Earth Resources Engineering, Faculty of Engineering, Kyushu University, Fukuoka 819-0382, JapanDepartment of Earth Resources Engineering, Faculty of Engineering, Kyushu University, Fukuoka 819-0382, JapanIn this paper, a multi-point geostatistical (MPS) method based on variational function partition simulation is proposed to solve the key problem of MPS 3D modeling using 2D training images. The new method uses the FILTERSIM algorithm framework, and the variational function is used to construct simulation partitions and training image sequences, and only a small number of training images close to the unknown nodes are used in the partition simulation to participate in the MPS simulation. To enhance the reliability, a new covariance filter is also designed to capture the diverse features of the training patterns and allow the filter to downsize the training patterns from any direction; in addition, an information entropy method is used to reconstruct the whole 3D space by selecting the global optimal solution from several locally similar training patterns. The stability and applicability of the new method in complex geological modeling are demonstrated by analyzing the parameter sensitivity and algorithm performance. A geological model of a uranium deposit is simulated to test the pumping of five reserved drill holes, and the results show that the accuracy of the simulation results of the new method is improved by 11.36% compared with the traditional MPS method.https://www.mdpi.com/2227-7390/11/24/4900multi-point geostatisticstraining imagevariogramFILTERSIMinformation entropy
spellingShingle Yifei Zhao
Jianhong Chen
Shan Yang
Kang He
Hideki Shimada
Takashi Sasaoka
A Multi-Point Geostatistical Modeling Method Based on 2D Training Image Partition Simulation
Mathematics
multi-point geostatistics
training image
variogram
FILTERSIM
information entropy
title A Multi-Point Geostatistical Modeling Method Based on 2D Training Image Partition Simulation
title_full A Multi-Point Geostatistical Modeling Method Based on 2D Training Image Partition Simulation
title_fullStr A Multi-Point Geostatistical Modeling Method Based on 2D Training Image Partition Simulation
title_full_unstemmed A Multi-Point Geostatistical Modeling Method Based on 2D Training Image Partition Simulation
title_short A Multi-Point Geostatistical Modeling Method Based on 2D Training Image Partition Simulation
title_sort multi point geostatistical modeling method based on 2d training image partition simulation
topic multi-point geostatistics
training image
variogram
FILTERSIM
information entropy
url https://www.mdpi.com/2227-7390/11/24/4900
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