Machine learning discovery of optimal quadrature rules for isogeometric analysis

被引:3
作者
Teijeiro, Tomas [1 ]
Taylor, Jamie M. [2 ]
Hashemian, Ali [1 ]
Pardo, David [1 ,3 ,4 ]
机构
[1] BCAM Basque Ctr Appl Math, ,Basque Country, Bilbao, Basque Country, Spain
[2] CUNEF Univ, Dept Metodos Cuantitat, Madrid, Spain
[3] Univ Basque Country UPV EHU, ,Basque Country, Leioa, Basque Country, Spain
[4] Ikerbasque Basque Fdn Sci, Bilbao, Basque Country, Spain
关键词
Numerical integration; Optimal quadrature rules; Machine learning; Dynamic programming; Isogeometric analysis; VIBRATION ANALYSIS; FINITE-ELEMENTS; SPLINE SPACES; GEOMETRY; NURBS; COST;
D O I
10.1016/j.cma.2023.116310
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
We propose the use of machine learning techniques to find optimal quadrature rules for the construction of stiffness and mass matrices in isogeometric analysis (IGA). We initially consider 1D spline spaces of arbitrary degree spanned over uniform and non-uniform knot sequences, and then the generated optimal rules are used for integration over higher-dimensional spaces using tensor products. The quadrature rule search is posed as an optimization problem and solved by a machine learning strategy based on adaptive gradient-descent. However, since the optimization space is highly non-convex, the success of the search strongly depends on the number of quadrature points and the parameter initialization. Thus, we use a dynamic programming strategy that initializes the parameters from the optimal solution over the spline space with a lower number of knots. With this method, we found optimal quadrature rules for spline spaces when using IGA discretizations with up to 50 uniform elements and polynomial degrees up to 8, showing the generality of the approach in this scenario. For non-uniform partitions, the method also finds an optimal rule in a reasonable number of test cases. We also assess the generated optimal rules in two practical case studies, namely, the eigenvalue problem of the Laplace operator and the eigenfrequency analysis of freeform curved beams, where the latter problem shows the applicability of the method to curved geometries. In particular, the proposed method results in savings with respect to traditional Gaussian integration of up to 44% in 1D, 68% in 2D, and 82% in 3D spaces.(c) 2023 Elsevier B.V. All rights reserved.
引用
收藏
页数:20
相关论文
共 50 条
[41]   Classification Rules Explain Machine Learning [J].
Cristani, Matteo ;
Olvieri, Francesco ;
Workneh, Tewabe Chekole ;
Pasetto, Luca ;
Tomazzoli, Claudio .
ICAART: PROCEEDINGS OF THE 14TH INTERNATIONAL CONFERENCE ON AGENTS AND ARTIFICIAL INTELLIGENCE - VOL 3, 2022, :897-904
[42]   Generation of fuzzy rules by machine learning [J].
Sel, D ;
Juricic, D ;
Hvala, N .
ARTIFICIAL INTELLIGENCE IN REAL-TIME CONTROL 1995 (AIRTC'95), 1996, :131-136
[43]   Classification rules discovery from selected trees for thinning with the C4.5 machine learning system [J].
Minowa, Y .
JOURNAL OF FOREST RESEARCH, 2005, 10 (03) :221-231
[44]   Coupling isogeometric analysis with deep learning for stability evaluation of rectangular tunnels [J].
Toan, Nguyen-Minh ;
Tram, Bui-Ngoc ;
Shiau, Jim ;
Nguyen, Tan ;
Trung, Nguyen-Thoi .
TUNNELLING AND UNDERGROUND SPACE TECHNOLOGY, 2023, 140
[45]   Machine Learning Accelerates the Discovery of Design Rules and Exceptions in Stable Metal-Oxo Intermediate Formation [J].
Nandy, Aditya ;
Zhu, Jiazhou ;
Janet, Jon Paul ;
Duan, Chenru ;
Getman, Rachel B. ;
Kulik, Heather J. .
ACS CATALYSIS, 2019, 9 (09) :8243-8255
[46]   A cheap preconditioner based on fast diagonalization method for matrix-free weighted-quadrature isogeometric analysis applied to nonlinear transient heat transfer problems [J].
Fuentes, Joaquin Cornejo ;
Elguedj, Thomas ;
Dureisseix, David ;
Duval, Arnaud .
COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2023, 414
[47]   Machine learning for membrane design and discovery [J].
Yin, Haoyu ;
Xu, Muzi ;
Luo, Zhiyao ;
Bi, Xiaotian ;
Li, Jiali ;
Zhang, Sui ;
Wang, Xiaonan .
GREEN ENERGY & ENVIRONMENT, 2024, 9 (01) :54-70
[48]   The Rise of Machine Learning in Polymer Discovery [J].
Yan, Cheng ;
Li, Guoqiang .
ADVANCED INTELLIGENT SYSTEMS, 2023, 5 (04)
[49]   Machine Learning in Drug Discovery and Development [J].
Wale, Nikil .
DRUG DEVELOPMENT RESEARCH, 2011, 72 (01) :112-119
[50]   A machine learning platform for the discovery of materials [J].
Belle, Carl E. ;
Aksakalli, Vural ;
Russo, Salvy P. .
JOURNAL OF CHEMINFORMATICS, 2021, 13 (01)