This content is not included in your SAE MOBILUS subscription, or you are not logged in.

Towards Optimization of Multi-material Structure: Metamodeling of Mixed-Variable Problems

Journal Article
2016-01-0302
ISSN: 1946-3979, e-ISSN: 1946-3987
Published April 05, 2016 by SAE International in United States
Towards Optimization of Multi-material Structure: Metamodeling of Mixed-Variable Problems
Sector:
Citation: Xu, H., Chuang, C., and Yang, R., "Towards Optimization of Multi-material Structure: Metamodeling of Mixed-Variable Problems," SAE Int. J. Mater. Manf. 9(2):400-409, 2016, https://doi.org/10.4271/2016-01-0302.
Language: English

References

  1. Cui X. , Wang S. , and Hu S. J. A method for optimal design of automotive body assembly using multi-material construction Materials & Design, 29 381 387 2008
  2. Jambor A. and Beyer M. New cars-new materials Materials & design, 18 203 209 1997
  3. Carle D. and Blount G. The suitability of aluminium as an alternative material for car bodies Materials & design, 20 267 272 1999
  4. Hahn O. , Kurzok J. , and Timmermann R. Joining of multimaterial constructions Proceedings of Chinese-German Ultralight Symposium Beijing, China 2001 151 162
  5. Simpson T. W. , Peplinski J. D. , Koch P. N. , and Allen J. K. Metamodels for computer-based engineering design: survey and recommendations Engineering with Computers, 17 129 150 2001
  6. Jin R. , Chen W. , and Simpson T. W. Comparative studies of metamodelling techniques under multiple modelling criteria Structural and Multidisciplinary Optimization, 23 1 13 Dec 2001
  7. Cheng B. and Titterington D. M. Neural networks: A review from a statistical perspective Statistical science, 2 30 1994
  8. Hajela P. and Berke L. Neural networks in structural analysis and design: an overview Computing Systems in Engineering, 3 525 538 1992
  9. Booker A. J. , Dennis J. Jr , Frank P. D. , Serafini D. B. , Torczon V. , and Trosset M. W. A rigorous framework for optimization of expensive functions by surrogates Structural optimization, 17 1 13 1999
  10. Matheron G. A simple substitute for conditional expectation: the disjunctive kriging Advanced geostatistics in the mining industry Springer 1976 221 236
  11. Sacks J. , Welch W. J. , Mitchell T. J. , and Wynn H. P. Design and analysis of computer experiments Statistical science, 409 423 1989
  12. Friedman J. H. Multivariate adaptive regression splines The annals of statistics, 1 67 1991
  13. Hardy R. L. Multiquadric Equations of Topography and Other Irregular Surfaces Journal of Geophysical Research, 76 1905 1971
  14. Dyn N. , Levin D. , and Rippa S. Numerical Procedures for Surface Fitting of Scattered Data by Radial Functions Siam Journal on Scientific and Statistical Computing, 7 639 659 Apr 1986
  15. Swiler L. P. , Hough P. D. , Qian P. , Xu X. , Storlie C. , and Lee H. Surrogate models for mixed discrete-continuous variables Constraint Programming and Decision Making Springer 2014 181 202
  16. Storlie C. B. , Reich B. J. , Helton J. C. , Swiler L. P. , and Sallaberry C. J. Analysis of computationally demanding models with continuous and categorical inputs Reliability Engineering & System Safety, 113 30 41 2013
  17. Gramacy R. B. and Lee H. K. Bayesian treed Gaussian process models with an application to computer modeling Journal of the American Statistical Association, 103 2008
  18. Gramacy R. B. and Lee H. K. Gaussian processes and limiting linear models Computational Statistics & Data Analysis, 53 123 136 2008
  19. Rumelhart D. E. , Widrow B. , and Lehr M. A. The basic ideas in neural networks Communications of the ACM, 37 87 92 1994
  20. Herrera M. , Guglielmetti A. , Xiao M. , and Coelho R. F. Metamodel-assisted optimization based on multiple kernel regression for mixed variables Structural and multidisciplinary optimization, 49 979 991 2014
  21. Liang K.-Y. , Zeger S. L. , and Qaqish B. Multivariate regression analyses for categorical data Journal of the Royal Statistical Society. Series B (Methodological), 3 40 1992
  22. Lewis R. J. An introduction to classification and regression tree (CART) analysis Annual Meeting of the Society for Academic Emergency Medicine in San Francisco, California 2000 1 14
  23. Olshen L. and Stone C. J. Classification and regression trees Wadsworth International Group, 93 101 1984
  24. Yalçin E. Cokriging and its effect on the estimation precision Journal of the South African Institute of Mining and Metallurgy, 105 223 228 2005
  25. Carr J. R. , Myers D. E. , and Glass C. E. Cokriging-a computer program Computers & Geosciences, 11 111 127 1985
  26. Kennedy M. C. and O'Hagan A. Predicting the output from a complex computer code when fast approximations are available Biometrika, 87 1 13 2000
  27. Xiong F. , Xiong Y. , Chen W. , and Yang S. Optimizing Latin hypercube design for sequential sampling of computer experiments Engineering Optimization, 41 793 810 2009
  28. Robnik-Šikonja M. and Kononenko I. An adaptation of Relief for attribute estimation in regression Machine Learning: Proceedings of the Fourteenth International Conference (ICML’97) 1997 296 304
  29. Kononenko I. Estimating attributes: Analysis and extensions of Relief In De Raedt L. , & Bergadano F. Machine Learning: ECML-94 171 182 Springer Verlag 1994
  30. Kira K. and Rendell L. A. The Feature-Selection Problem -Traditional Methods and a New Algorithm Aaai-92 Proceedings : Tenth National Conference on Artificial Intelligence 129 134 1992
  31. Chickering D. M. Optimal structure identification with greedy search The Journal of Machine Learning Research, 3 507 554 2003
  32. Arendt P. D. , Apley D. W. , and Chen W. Quantification of Model Uncertainty: Calibration, Model Discrepancy, and Identifiability Journal of Mechanical Design, 134 Oct 2012

Cited By