Kernel Principal Component Analysis for Efficient, Differentiable Parameterization of Multipoint Geostatistics

被引:0
|
作者
Pallav Sarma
Louis J. Durlofsky
Khalid Aziz
机构
[1] Chevron Energy Technology Company,Department of Energy Resources Engineering
[2] Stanford University,undefined
来源
Mathematical Geosciences | 2008年 / 40卷
关键词
Kernel; Geostatistics; Principal component; Karhunen–Loeve; History-matching; Reservoir characterization;
D O I
暂无
中图分类号
学科分类号
摘要
This paper describes a novel approach for creating an efficient, general, and differentiable parameterization of large-scale non-Gaussian, non-stationary random fields (represented by multipoint geostatistics) that is capable of reproducing complex geological structures such as channels. Such parameterizations are appropriate for use with gradient-based algorithms applied to, for example, history-matching or uncertainty propagation. It is known that the standard Karhunen–Loeve (K–L) expansion, also called linear principal component analysis or PCA, can be used as a differentiable parameterization of input random fields defining the geological model. The standard K–L model is, however, limited in two respects. It requires an eigen-decomposition of the covariance matrix of the random field, which is prohibitively expensive for large models. In addition, it preserves only the two-point statistics of a random field, which is insufficient for reproducing complex structures.
引用
收藏
页码:3 / 32
页数:29
相关论文
共 50 条
  • [41] Multilinear kernel principal component analysis for ear recognition
    Wang, Xiao-Yun
    Liu, Feng-Li
    DESIGN, MANUFACTURING AND MECHATRONICS (ICDMM 2015), 2016, : 857 - 866
  • [42] Accuracy of suboptimal solutions to kernel principal component analysis
    Gnecco, Giorgio
    Sanguineti, Marcello
    COMPUTATIONAL OPTIMIZATION AND APPLICATIONS, 2009, 42 (02) : 265 - 287
  • [43] The Accelerated Power Method for Kernel Principal Component Analysis
    Shi, Weiya
    Zhang, Wenhua
    APPLIED INFORMATICS AND COMMUNICATION, PT 2, 2011, 225 : 563 - +
  • [44] Kernel relative principal component analysis for pattern recognition
    Washizawa, Y
    Hikida, K
    Tanaka, T
    Yamashita, Y
    STRUCTURAL, SYNTACTIC, AND STATISTICAL PATTERN RECOGNITION, PROCEEDINGS, 2004, 3138 : 1105 - 1113
  • [45] Accuracy of suboptimal solutions to kernel principal component analysis
    Giorgio Gnecco
    Marcello Sanguineti
    Computational Optimization and Applications, 2009, 42 : 265 - 287
  • [46] Kernel Principal Component Analysis: Applications, Implementation and Comparison
    Olsson, Daniel
    Georgiev, Pando
    Pardalos, Panos M.
    MODELS, ALGORITHMS, AND TECHNOLOGIES FOR NETWORK ANALYSIS, 2013, 59 : 127 - 148
  • [47] An iterative algorithm for robust kernel principal component analysis
    Wang, Lei
    Pang, Yan-Wei
    Shen, Dao-Yi
    Yu, Neng-Hai
    PROCEEDINGS OF 2007 INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND CYBERNETICS, VOLS 1-7, 2007, : 3484 - +
  • [48] Fault detection based on Kernel Principal Component Analysis
    Nguyen, Viet Ha
    Golinval, Jean-Claude
    ENGINEERING STRUCTURES, 2010, 32 (11) : 3683 - 3691
  • [49] Evolving kernel principal component analysis for fault diagnosis
    Sun, Ruixiang
    Tsung, Fugee
    Qu, Liangsheng
    COMPUTERS & INDUSTRIAL ENGINEERING, 2007, 53 (02) : 361 - 371
  • [50] Dynamic kernel probabilistic principal component analysis model
    Institute of Automation, Jiangnan University, Wuxi 214122, China
    Qinghua Daxue Xuebao/Journal of Tsinghua University, 2008, 48 (SUPPL.): : 1824 - 1828