Projection pursuit adaptation on polynomial chaos expansions

被引:19
作者
Zeng, Xiaoshu [1 ]
Ghanem, Roger [1 ]
机构
[1] Univ Southern Calif, 210 KAP Hall, Los Angeles, CA 90089 USA
基金
美国能源部;
关键词
Surrogate modeling; Polynomial chaos expansion; Projection pursuit; High-dimensional models; Dimension reduction; Data-driven; DIMENSIONALITY REDUCTION; RESPONSE DETERMINATION; UNCERTAINTY; REGRESSION; SELECTION; DESIGN; MODELS;
D O I
10.1016/j.cma.2022.115845
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The present work addresses the issue of accurate stochastic approximations in high-dimensional parametric space using tools from uncertainty quantification (UQ). The basis adaptation method and its accelerated algorithm in polynomial chaos expansions (PCE) were recently proposed to construct low-dimensional approximations adapted to specific quantities of interest (QoI). The present paper addresses one difficulty with these adaptations, namely their reliance on quadrature point sampling, which limits the reusability of potentially expensive samples. Projection pursuit (PP) is a statistical tool to find the "interesting" projections in high-dimensional data and thus bypass the curse-of-dimensionality. In the present work, we combine the fundamental ideas of basis adaptation and projection pursuit regression (PPR) to propose a novel method to simultaneously learn the optimal low-dimensional spaces and PCE representation from given data. While this projection pursuit adaptation (PPA) can be entirely data-driven, the constructed approximation exhibits mean-square convergence to the solution of an underlying governing equation and thus captures the supports and probability distributions associated with the physics constraints. The proposed approach is demonstrated on a borehole problem and a structural dynamics problem, demonstrating the versatility of the method and its ability to discover low-dimensional manifolds with high accuracy with limited data. In addition, the method can learn surrogate models for different quantities of interest while reusing the same data set. (c) 2022 Elsevier B.V. All rights reserved.
引用
收藏
页数:27
相关论文
共 72 条
[1]   A stochastic collocation method for elliptic partial differential equations with random input data [J].
Babuska, Ivo ;
Nobile, Fabio ;
Tempone, Raul .
SIAM JOURNAL ON NUMERICAL ANALYSIS, 2007, 45 (03) :1005-1034
[2]  
Baldi P., 2012, JMLR WORKSHOP C P, P37
[3]   Supervised projection pursuit - A dimensionality reduction technique optimized for probabilistic classification [J].
Barcaru, Andrei .
CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2019, 194
[4]   Multi-output local Gaussian process regression: Applications to uncertainty quantification [J].
Bilionis, Ilias ;
Zabaras, Nicholas .
JOURNAL OF COMPUTATIONAL PHYSICS, 2012, 231 (17) :5718-5746
[5]   Adaptive sparse polynomial chaos expansion based on least angle regression [J].
Blatman, Geraud ;
Sudret, Bruno .
JOURNAL OF COMPUTATIONAL PHYSICS, 2011, 230 (06) :2345-2367
[6]   An adaptive algorithm to build up sparse polynomial chaos expansions for stochastic finite element analysis [J].
Blatman, Geraud ;
Sudret, Bruno .
PROBABILISTIC ENGINEERING MECHANICS, 2010, 25 (02) :183-197
[7]   Feature selection in machine learning: A new perspective [J].
Cai, Jie ;
Luo, Jiawei ;
Wang, Shulin ;
Yang, Sheng .
NEUROCOMPUTING, 2018, 300 :70-79
[8]   Probabilistic analysis of wind-induced vibration mitigation of structures by fluid viscous dampers [J].
Chen, Jianbing ;
Zeng, Xiaoshu ;
Peng, Yongbo .
JOURNAL OF SOUND AND VIBRATION, 2017, 409 :287-305
[9]   A GF-discrepancy for point selection in stochastic seismic response analysis of structures with uncertain parameters [J].
Chen, Jianbing ;
Yang, Junyi ;
Li, Jie .
STRUCTURAL SAFETY, 2016, 59 :20-31
[10]  
Cohen A., 2017, The SMAI Journal of computational mathematics, V3, P181, DOI DOI 10.5802/SMAI-JCM.24