Regularized regressions for parametric models based on separated representations

被引:9
|
作者
Sancarlos, Abel [1 ]
Champaney, Victor [1 ]
Cueto, Elias [2 ]
Chinesta, Francisco [1 ]
机构
[1] ENSAM Inst Technol ESI Grp Chair Adv Modeling & Si, PIMM, 151 Blvd lHop, F-75013 Paris, France
[2] Univ Zaragoza, Aragon Inst Engn Res, Calle Mariano Esquillor s-n, Zaragoza 50018, Spain
关键词
Model order reduction; Proper generalized decomposition; Sparse PGD; Data-driven models; LASSO; Ridge regression; ANOVA; Elastic net; EQUATIONS;
D O I
10.1186/s40323-023-00240-4
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
Regressions created from experimental or simulated data enable the construction of metamodels, widely used in a variety of engineering applications. Many engineering problems involve multi-parametric physics whose corresponding multi-parametric solutions can be viewed as a sort of computational vademecum that, once computed offline, can be then used in a variety of real-time engineering applications including optimization, inverse analysis, uncertainty propagation or simulation based control. Sometimes, these multi-parametric problems can be solved by using advanced model order reduction-MOR-techniques. However, solving these multi-parametric problems can be very costly. In that case, one possibility consists in solving the problem for a sample of the parametric values and creating a regression from all the computed solutions. The solution for any choice of the parameters is then inferred from the prediction of the regression model. However, addressing high-dimensionality at the low data limit, ensuring accuracy and avoiding overfitting constitutes a difficult challenge. The present paper aims at proposing and discussing different advanced regressions based on the proper generalized decomposition (PGD) enabling the just referred features. In particular, new PGD strategies are developed adding different regularizations to the s-PGD method. In addition, the ANOVA-based PGD is proposed to ally them.
引用
收藏
页数:26
相关论文
共 50 条
  • [1] Regularized regressions for parametric models based on separated representations
    Abel Sancarlos
    Victor Champaney
    Elias Cueto
    Francisco Chinesta
    Advanced Modeling and Simulation in Engineering Sciences, 10
  • [2] Enhanced parametric shape descriptions in PGD-based space separated representations
    Kazemzadeh-Parsi, Mohammad Javad
    Ammar, Amine
    Duval, Jean Louis
    Chinesta, Francisco
    ADVANCED MODELING AND SIMULATION IN ENGINEERING SCIENCES, 2021, 8 (01)
  • [3] Enhanced parametric shape descriptions in PGD-based space separated representations
    Mohammad Javad Kazemzadeh-Parsi
    Amine Ammar
    Jean Louis Duval
    Francisco Chinesta
    Advanced Modeling and Simulation in Engineering Sciences, 8
  • [4] Regressions Regularized by Correlations
    Lipovetsky, Stan
    JOURNAL OF MODERN APPLIED STATISTICAL METHODS, 2018, 17 (01)
  • [5] An error estimator for separated representations of highly multidimensional models
    Ammar, A.
    Chinesta, F.
    Diez, P.
    Huerta, A.
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2010, 199 (25-28) : 1872 - 1880
  • [6] Quantum tomography by regularized linear regressions
    Mu, Biqiang
    Qi, Hongsheng
    Petersen, Ian R.
    Shi, Guodong
    AUTOMATICA, 2020, 114
  • [7] Learning Rates of Tikhonov Regularized Regressions Based on Sample Dependent RKHS
    Sheng Bao-Huai
    Chen Zhi-Xiang
    Wang Jian-Li
    Ye Pei-Xin
    JOURNAL OF COMPUTATIONAL ANALYSIS AND APPLICATIONS, 2012, 14 (02) : 341 - 359
  • [8] Toric statistical models: parametric and binomial representations
    Fabio Rapallo
    Annals of the Institute of Statistical Mathematics, 2007, 59 : 727 - 740
  • [9] Toric statistical models: parametric and binomial representations
    Rapallo, Fabio
    ANNALS OF THE INSTITUTE OF STATISTICAL MATHEMATICS, 2007, 59 (04) : 727 - 740
  • [10] Regularized parametric survival modeling to improve risk prediction models
    Hoogland, J.
    Debray, T. P. A.
    Crowther, M. J.
    Riley, R. D.
    Inthout, J.
    Reitsma, J. B.
    Zwinderman, A. H.
    BIOMETRICAL JOURNAL, 2024, 66 (01)