High Dimensional Model Representation With Principal Component Analysis

被引:27
|
作者
Hajikolaei, Kambiz Haji [1 ]
Wang, G. Gary [1 ]
机构
[1] Simon Fraser Univ, Sch Mechatron Syst Engn, PDOL, Surrey, BC V3T 0A3, Canada
关键词
high dimension; large scale; metamodeling; HDMR; principal component analysis; sampling; RS-HDMR; ALGORITHM;
D O I
10.1115/1.4025491
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
In engineering design, spending excessive amount of time on physical experiments or expensive simulations makes the design costly and lengthy. This issue exacerbates when the design problem has a large number of inputs, or of high dimension. High dimensional model representation (HDMR) is one powerful method in approximating high dimensional, expensive, black-box (HEB) problems. One existing HDMR implementation, random sampling HDMR (RS-HDMR), can build an HDMR model from random sample points with a linear combination of basis functions. The most critical issue in RS-HDMR is that calculating the coefficients for the basis functions includes integrals that are approximated by Monte Carlo summations, which are error prone with limited samples and especially with nonuniform sampling. In this paper, a new approach based on principal component analysis (PCA), called PCA-HDMR, is proposed for finding the coefficients that provide the best linear combination of the bases with minimum error and without using any integral. Several benchmark problems of different dimensionalities and one engineering problem are modeled using the method and the results are compared with RS-HDMR results. In all problems with both uniform and nonuniform sampling, PCA-HDMR built more accurate models than RS-HDMR for a given set of sample points.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] A Novel Probabilistic Power Flow Algorithm Based on Principal Component Analysis and High-Dimensional Model Representation Techniques
    Li, Hang
    Zhang, Zhe
    Yin, Xianggen
    ENERGIES, 2020, 13 (14)
  • [2] On principal component analysis for high-dimensional XCSR
    Behdad, Mohammad
    French, Tim
    Barone, Luigi
    Bennamoun, Mohammed
    EVOLUTIONARY INTELLIGENCE, 2012, 5 (02) : 129 - 138
  • [3] High Dimensional Principal Component Analysis with Contaminated Data
    Xu, Huan
    Caramanis, Constantine
    Mannor, Shie
    ITW: 2009 IEEE INFORMATION THEORY WORKSHOP ON NETWORKING AND INFORMATION THEORY, 2009, : 246 - +
  • [4] High-dimensional inference with the generalized Hopfield model: Principal component analysis and corrections
    Cocco, S.
    Monasson, R.
    Sessak, V.
    PHYSICAL REVIEW E, 2011, 83 (05):
  • [5] PRINCIPAL COMPONENT ANALYSIS IN VERY HIGH-DIMENSIONAL SPACES
    Lee, Young Kyung
    Lee, Eun Ryung
    Park, Byeong U.
    STATISTICA SINICA, 2012, 22 (03) : 933 - 956
  • [6] Test for high-dimensional outliers with principal component analysis
    Nakayama, Yugo
    Yata, Kazuyoshi
    Aoshima, Makoto
    JAPANESE JOURNAL OF STATISTICS AND DATA SCIENCE, 2024, 7 (02) : 739 - 766
  • [7] Using principal component analysis to estimate a high dimensional factor model with high-frequency data
    Ait-Sahalia, Yacine
    Xiu, Dacheng
    JOURNAL OF ECONOMETRICS, 2017, 201 (02) : 384 - 399
  • [8] High-dimensional principal component analysis with heterogeneous missingness
    Zhu, Ziwei
    Wang, Tengyao
    Samworth, Richard J.
    JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES B-STATISTICAL METHODOLOGY, 2022, 84 (05) : 2000 - 2031
  • [9] Tensor Principal Component Analysis in High Dimensional CP Models
    Han, Yuefeng
    Zhang, Cun-Hui
    IEEE TRANSACTIONS ON INFORMATION THEORY, 2023, 69 (02) : 1147 - 1167
  • [10] Principal component analysis for sparse high-dimensional data
    Raiko, Tapani
    Ilin, Alexander
    Karhunen, Juha
    NEURAL INFORMATION PROCESSING, PART I, 2008, 4984 : 566 - 575