Nonlinear dimensionality reduction for parametric problems: A kernel proper orthogonal decomposition

被引:11
|
作者
Diez, Pedro [1 ,2 ]
Muixi, Alba [2 ]
Zlotnik, Sergio [1 ,2 ]
Garcia-Gonzalez, Alberto [1 ]
机构
[1] Univ Politecn Cataluna, Lab Calcul Numer LaCaN, Jordi Girona 1, E-08034 Barcelona, Spain
[2] CIMNE, Int Ctr Numer Methods Engn, Barcelona, Spain
关键词
kPCA; nonlinear multidimensionality reduction; parametric problems; reduced-order models; MODEL ORDER REDUCTION; ORIENTED ERROR ASSESSMENT; APPROXIMATION; PGD;
D O I
10.1002/nme.6831
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Reduced-order models are essential tools to deal with parametric problems in the context of optimization, uncertainty quantification, or control and inverse problems. The set of parametric solutions lies in a low-dimensional manifold (with dimension equal to the number of independent parameters) embedded in a large-dimensional space (dimension equal to the number of degrees of freedom of the full-order discrete model). A posteriori model reduction is based on constructing a basis from a family of snapshots (solutions of the full-order model computed offline), and then use this new basis to solve the subsequent instances online. Proper orthogonal decomposition (POD) reduces the problem into a linear subspace of lower dimension, eliminating redundancies in the family of snapshots. The strategy proposed here is to use a nonlinear dimensionality reduction technique, namely, the kernel principal component analysis (kPCA), in order to find a nonlinear manifold, with an expected much lower dimension, and to solve the problem in this low-dimensional manifold. Guided by this paradigm, the methodology devised here introduces different novel ideas, namely, 1) characterizing the nonlinear manifold using local tangent spaces, where the reduced-order problem is linear and based on the neighboring snapshots, 2) the approximation space is enriched with the cross-products of the snapshots, introducing a quadratic description, 3) the kernel for kPCA is defined ad hoc, based on physical considerations, and 4) the iterations in the reduced-dimensional space are performed using an algorithm based on a Delaunay tessellation of the cloud of snapshots in the reduced space. The resulting computational strategy is performing outstandingly in the numerical tests, alleviating many of the problems associated with POD and improving the numerical accuracy.
引用
收藏
页码:7306 / 7327
页数:22
相关论文
共 50 条
  • [41] Kernel based nonlinear dimensionality reduction and classification for genomic microarray
    Li, Xuehua
    Shu, Lan
    [J]. SENSORS, 2008, 8 (07): : 4186 - 4200
  • [42] Kernel-based nonlinear dimensionality reduction for electrocardiogram recognition
    Xuehua Li
    Lan Shu
    Hongli Hu
    [J]. Neural Computing and Applications, 2009, 18 : 1013 - 1020
  • [43] The applicability of model order reduction based on proper orthogonal decomposition to problems in dynamic thermoelasticity with multiple subdomains
    Maxam, D.
    Deokar, R.
    Tamma, K. K.
    [J]. JOURNAL OF THERMAL STRESSES, 2019, 42 (06) : 744 - 768
  • [44] HIERARCHICAL MODEL REDUCTION DRIVEN BY A PROPER ORTHOGONAL DECOMPOSITION FOR PARAMETRIZED ADVECTION-DIFFUSION-REACTION PROBLEMS
    PASINI, M. A. S. S. I. M. I. L. I. A. N. O. L. U. P. O.
    PEROTTO, S. I. M. O. N. A.
    [J]. ELECTRONIC TRANSACTIONS ON NUMERICAL ANALYSIS, 2022, 55 : 187 - 212
  • [45] Bridging proper orthogonal decomposition methods and augmented Newton-Krylov algorithms: An adaptive model order reduction for highly nonlinear mechanical problems
    Kerfriden, P.
    Gosselet, P.
    Adhikari, S.
    Bordas, S. P. A.
    [J]. COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2011, 200 (5-8) : 850 - 866
  • [46] Proper orthogonal decomposition(POD) dimensionality reduction combined with machine learning to predict the vibration characteristics of stay cables at different lengths
    Chen, Rui
    Min, Guangyun
    Hu, Maoming
    Yang, Shuguang
    Cai, Mengqi
    [J]. Measurement: Journal of the International Measurement Confederation, 2025, 242
  • [47] Intelligent flow field reconstruction based on proper orthogonal decomposition dimensionality reduction and improved multi-branch convolution fusion
    Yang, Maotao
    Wang, Gang
    Guo, Mingming
    Tian, Ye
    Zhong, Zhiwen
    Xu, Mengqi
    Li, Linjing
    Le, Jialing
    Zhang, Hua
    [J]. PHYSICS OF FLUIDS, 2023, 35 (11)
  • [48] On the computation of Proper Generalized Decomposition modes of parametric elliptic problems
    Azaïez M.
    Chacón Rebollo T.
    Gómez Mármol M.
    [J]. SeMA Journal, 2020, 77 (1) : 59 - 72
  • [49] Model Order Reduction of Nonlinear Circuit using Proper Orthogonal Decomposition and Nonlinear Autoregressive with eXogenous input (NARX) Neural Network
    Nagaraj, S.
    Seshachalam, D.
    Hucharaddi, Sunil
    [J]. PROCEEDINGS OF THE 2018 16TH ACM/IEEE INTERNATIONAL CONFERENCE ON FORMAL METHODS AND MODELS FOR SYSTEM DESIGN (MEMOCODE), 2018, : 47 - 50
  • [50] The use of proper orthogonal decomposition for the simulation of highly nonlinear hygrothermal performance
    Hou, Tianfeng
    Roels, Staf
    Janssen, Hans
    [J]. 4TH CENTRAL EUROPEAN SYMPOSIUM ON BUILDING PHYSICS (CESBP 2019), 2019, 282