A two-stage support vector regression assisted sequential sampling approach for global metamodeling
暂无分享,去创建一个
Chen Jiang | Liang Gao | Haobo Qiu | Peigen Li | Xiwen Cai | Liang Gao | H. Qiu | Xiwen Cai | Chen Jiang | P. Li
[1] T. Simpson,et al. Analysis of support vector regression for approximation of complex engineering analyses , 2005, DAC 2003.
[2] V. R. Joseph,et al. ORTHOGONAL-MAXIMIN LATIN HYPERCUBE DESIGNS , 2008 .
[3] Tom Dhaene,et al. Efficient space-filling and non-collapsing sequential design strategies for simulation-based modeling , 2011, Eur. J. Oper. Res..
[4] Wen Yao,et al. A gradient-based sequential radial basis function neural network modeling method , 2009, Neural Computing and Applications.
[5] M. Sasena,et al. Exploration of Metamodeling Sampling Criteria for Constrained Global Optimization , 2002 .
[6] Jack P. C. Kleijnen,et al. Regression and Kriging metamodels with their experimental designs in simulation: A review , 2017, Eur. J. Oper. Res..
[7] Liang Gao,et al. Metamodeling for high dimensional design problems by multi-fidelity simulations , 2017 .
[8] R. Haftka,et al. Multiple surrogates: how cross-validation errors can help us to obtain the best predictor , 2009 .
[9] P. Sagaut,et al. Towards an adaptive POD/SVD surrogate model for aeronautic design , 2011 .
[10] Haitao Liu,et al. A survey of adaptive sampling for global metamodeling in support of simulation-based complex engineering design , 2017, Structural and Multidisciplinary Optimization.
[11] Christian B Allen,et al. Comparison of Adaptive Sampling Methods for Generation of Surrogate Aerodynamic Models , 2013 .
[12] G. Venter,et al. An algorithm for fast optimal Latin hypercube design of experiments , 2010 .
[13] M. Thilak,et al. A numerical study on effect of temperature and inertia on tolerance design of mechanical assembly , 2012 .
[14] Li Wei,et al. Adaptive Radial-Basis-Function-Based Multifidelity Metamodeling for Expensive Black-Box Problems , 2017 .
[15] Christian B Allen,et al. Investigation of an adaptive sampling method for data interpolation using radial basis functions , 2010 .
[16] Bo Wang,et al. Surrogate-Based Optimum Design for Stiffened Shells with Adaptive Sampling , 2012 .
[17] Vladimir Vapnik,et al. An overview of statistical learning theory , 1999, IEEE Trans. Neural Networks.
[18] G. G. Wang,et al. Adaptive Response Surface Method Using Inherited Latin Hypercube Design Points , 2003 .
[19] Shapour Azarm,et al. An accumulative error based adaptive design of experiments for offline metamodeling , 2009 .
[20] Chih-Jen Lin,et al. LIBSVM: A library for support vector machines , 2011, TIST.
[21] Thomas J. Santner,et al. The Design and Analysis of Computer Experiments , 2003, Springer Series in Statistics.
[22] Enying Li,et al. Parallel boundary and best neighbor searching sampling algorithm for drawbead design optimization in sheet metal forming , 2010 .
[23] Reinhard Radermacher,et al. Cross-validation based single response adaptive design of experiments for Kriging metamodeling of deterministic computer simulations , 2013 .
[24] Liang Gao,et al. Support Vector enhanced Kriging for metamodeling with noisy data , 2018 .
[25] Gang Li,et al. Fast procedure for Non-uniform optimum design of stiffened shells under buckling constraint , 2017 .
[26] Dick den Hertog,et al. Maximin Latin Hypercube Designs in Two Dimensions , 2007, Oper. Res..
[27] M. Liefvendahl,et al. A study on algorithms for optimization of Latin hypercubes , 2006 .
[28] Bernhard Schölkopf,et al. A tutorial on support vector regression , 2004, Stat. Comput..
[29] Shengli Xu,et al. Sequential sampling designs based on space reduction , 2015 .
[30] M. D. McKay,et al. A comparison of three methods for selecting values of input variables in the analysis of output from a computer code , 2000 .
[31] Andy J. Keane,et al. Recent advances in surrogate-based optimization , 2009 .
[32] Ruichen Jin,et al. On Sequential Sampling for Global Metamodeling in Engineering Design , 2002, DAC 2002.
[33] Daniel Busby,et al. Hierarchical adaptive experimental design for Gaussian process emulators , 2009, Reliab. Eng. Syst. Saf..
[34] S. Rippa,et al. Numerical Procedures for Surface Fitting of Scattered Data by Radial Functions , 1986 .
[35] Wei Chen,et al. A non‐stationary covariance‐based Kriging method for metamodelling in engineering design , 2007 .
[36] George E. P. Box,et al. Empirical Model‐Building and Response Surfaces , 1988 .
[37] Haitao Liu,et al. A Robust Error-Pursuing Sequential Sampling Approach for Global Metamodeling Based on Voronoi Diagram and Cross Validation , 2014 .
[38] Liang Gao,et al. Ensemble of surrogates with hybrid method using global and local measures for engineering design , 2018 .
[39] Xinyu Shao,et al. A variable fidelity information fusion method based on radial basis function , 2017, Adv. Eng. Informatics.
[40] Liang Gao,et al. An adaptive SVR-HDMR model for approximating high dimensional problems , 2015 .
[41] Anirban Chaudhuri,et al. Parallel surrogate-assisted global optimization with expensive functions – a survey , 2016 .
[42] Andrea Grosso,et al. Finding maximin latin hypercube designs by Iterated Local Search heuristics , 2009, Eur. J. Oper. Res..
[43] Robert B. Gramacy,et al. Adaptive Design and Analysis of Supercomputer Experiments , 2008, Technometrics.
[44] Peng Wang,et al. A Sequential Optimization Sampling Method for Metamodels with Radial Basis Functions , 2014, TheScientificWorldJournal.
[45] T. J. Mitchell,et al. Bayesian Prediction of Deterministic Functions, with Applications to the Design and Analysis of Computer Experiments , 1991 .
[46] Dirk Gorissen,et al. A Novel Hybrid Sequential Design Strategy for Global Surrogate Modeling of Computer Experiments , 2011, SIAM J. Sci. Comput..
[47] G. Gary Wang,et al. Review of Metamodeling Techniques in Support of Engineering Design Optimization , 2007 .
[48] Wei Chen,et al. Optimizing Latin hypercube design for sequential sampling of computer experiments , 2009 .
[49] Hui Zhou,et al. An active learning variable-fidelity metamodelling approach based on ensemble of metamodels and objective-oriented sequential sampling , 2016 .
[50] Franz Aurenhammer,et al. Voronoi diagrams—a survey of a fundamental geometric data structure , 1991, CSUR.
[51] Liang Gao,et al. An enhanced RBF-HDMR integrated with an adaptive sampling method for approximating high dimensional problems in engineering design , 2016 .