High-Order Data-Driven Spatial Simulation of Categorical Variables

被引:4
|
作者
Minniakhmetov, Ilnur [1 ]
Dimitrakopoulos, Roussos [1 ]
机构
[1] McGill Univ, COSMO, Stochast Mine Planning Lab, Montreal, PQ H3A 0E8, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
Stochastic simulation; Data-driven; Categorical variables; High-order spatial statistics; Spatial model; CONDITIONAL SIMULATION; STOCHASTIC SIMULATION; MODEL;
D O I
10.1007/s11004-021-09943-z
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
Modern approaches for the spatial simulation of categorical variables are largely based on multi-point statistical methods, where a training image is used to derive complex spatial relationships using relevant patterns. In these approaches, simulated realizations are driven by the training image utilized, while the spatial statistics of the actual sample data are ignored. This paper presents a data-driven, high-order simulation approach based on the approximation of high-order spatial indicator moments. The high-order spatial statistics are expressed as functions of spatial distances that are similar to variogram models for two-point methods, while higher-order statistics are connected with lower-orders via boundary conditions. Using an advanced recursive B-spline approximation algorithm, the high-order statistics are reconstructed from the available data and are subsequently used for the construction of conditional distributions using Bayes' rule. Random values are subsequently simulated for all unsampled grid nodes. The main advantages of the proposed technique are its ability to (a) simulate without a training image to reproduce the high-order statistics of the data, and (b) adapt the model's complexity to the information available in the data. The practical intricacies and effectiveness of the proposed approach are demonstrated through applications at two copper deposits.
引用
下载
收藏
页码:23 / 45
页数:23
相关论文
共 50 条
  • [31] Simulation-driven optimization of high-order meshes in ALE hydrodynamics
    Dobrev, Veselin
    Knupp, Patrick
    Kolev, Tzanio
    Mittal, Ketan
    Rieben, Robert
    Tomov, Vladimir
    COMPUTERS & FLUIDS, 2020, 208
  • [32] Model-aware categorical data embedding: a data-driven approach
    Zhao, Wentao
    Li, Qian
    Zhu, Chengzhang
    Song, Jianglong
    Liu, Xinwang
    Yin, Jianping
    SOFT COMPUTING, 2018, 22 (11) : 3603 - 3619
  • [33] Model-aware categorical data embedding: a data-driven approach
    Wentao Zhao
    Qian Li
    Chengzhang Zhu
    Jianglong Song
    Xinwang Liu
    Jianping Yin
    Soft Computing, 2018, 22 : 3603 - 3619
  • [34] Integration of Soft Data Into Geostatistical Simulation of Categorical Variables
    Carle, Steven F.
    Fogg, Graham E.
    FRONTIERS IN EARTH SCIENCE, 2020, 8
  • [35] A New High-Order, Nonstationary, and Transformation Invariant Spatial Simulation Approach
    Abolhassani, Amir Abbas Haji
    Dimitrakopoulos, Roussos
    Ferrie, Frank P.
    GEOSTATISTICS VALENCIA 2016, 2017, 19 : 93 - 106
  • [36] Data-Driven Collective Variables for Enhanced Sampling
    Bonati, Luigi
    Rizzi, Valerio
    Parrinello, Michele
    JOURNAL OF PHYSICAL CHEMISTRY LETTERS, 2020, 11 (08): : 2998 - 3004
  • [37] An adaptive data-driven algorithm with machine learning for modeling high-order nonlinear beam-column finite elements
    Mora Martinez, Edgar David
    Khaji, Naser
    Journal of Building Engineering, 2024, 98
  • [38] A data-driven approach for processing heterogeneous categorical sensor signals
    Calderon, Christopher P.
    Jones, Austin
    Lundberg, Scott
    Paffenroth, Randy
    SIGNAL AND DATA PROCESSING OF SMALL TARGETS 2011, 2011, 8137
  • [39] A statistical framework of data fusion for spatial prediction of categorical variables
    Cao, Guofeng
    Yoo, Eun-hye
    Wang, Shaowen
    STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2014, 28 (07) : 1785 - 1799
  • [40] A statistical framework of data fusion for spatial prediction of categorical variables
    Guofeng Cao
    Eun-hye Yoo
    Shaowen Wang
    Stochastic Environmental Research and Risk Assessment, 2014, 28 : 1785 - 1799