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A Metamodeling Method Based on Support Vector Regression for Robust Optimization 被引量:5

A Metamodeling Method Based on Support Vector Regression for Robust Optimization
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摘要 Metamodeling techniques have been used in robust optimization to reduce the high computational cost of the uncertainty analysis and improve the performance of robust optimization problems with computationally expensive simulation models. Existing metamodels main focus on polynomial regression(PR), neural networks(NN) and Kriging models, these metamodels are not well suited for large-scale robust optimization problems with small size training sets and high nonlinearity. To address the problem, a reduced approximation model technique based on support vector regression(SVR) is introduced in order to improve the accuracy of metamodels. A robust optimization method based on SVR is presented for problems that involve high dimension and nonlinear. First appropriate design parameter samples are selected by experimental design theories, then the response samples are obtained from the simulations such as finite element analysis, the SVR metamodel is constructed and treated as the mean and the variance of the objective performance functions. Combining other constraints, the robust optimization model is formed which can be solved by genetic algorithm (GA). The applicability of the method developed is demonstrated using a case of two-bar structure system study. The performances of SVR were compared with those of PR, Kriging and back-propagation neural networks(BPNN), the comparison results show that the prediction accuracy of the SVR metamodel was higher than those of other metamodels under uncertainty. The robust optimization solutions are near to the real result, and the proposed method is found to be accurate and efficient for robust optimization. This reaserch provides an efficient method for robust optimization problems with complex structure. Metamodeling techniques have been used in robust optimization to reduce the high computational cost of the uncertainty analysis and improve the performance of robust optimization problems with computationally expensive simulation models. Existing metamodels main focus on polynomial regression(PR), neural networks(NN) and Kriging models, these metamodels are not well suited for large-scale robust optimization problems with small size training sets and high nonlinearity. To address the problem, a reduced approximation model technique based on support vector regression(SVR) is introduced in order to improve the accuracy of metamodels. A robust optimization method based on SVR is presented for problems that involve high dimension and nonlinear. First appropriate design parameter samples are selected by experimental design theories, then the response samples are obtained from the simulations such as finite element analysis, the SVR metamodel is constructed and treated as the mean and the variance of the objective performance functions. Combining other constraints, the robust optimization model is formed which can be solved by genetic algorithm (GA). The applicability of the method developed is demonstrated using a case of two-bar structure system study. The performances of SVR were compared with those of PR, Kriging and back-propagation neural networks(BPNN), the comparison results show that the prediction accuracy of the SVR metamodel was higher than those of other metamodels under uncertainty. The robust optimization solutions are near to the real result, and the proposed method is found to be accurate and efficient for robust optimization. This reaserch provides an efficient method for robust optimization problems with complex structure.
出处 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2010年第2期242-251,共10页 中国机械工程学报(英文版)
基金 supported by National Natural Science Foundation of China (Grant No.60572007) National Basic Research Program of China(973 Program,Grant No.613580202)
关键词 support vector regression METAMODELING robust optimization genetic algorithm support vector regression, metamodeling, robust optimization, genetic algorithm
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  • 1MYERS R H, MONTGOMERY D C. Response surface methodology[M]. 2nd ed. New York: Wiley-Interscience, 2002.
  • 2SIMPSON T W, PEPLINSKI J D, KOCH P N, et al. Metamodels for computer-based engineering design: Survey and recommendations[J]. Engineering Computations, 2001, 17(2): 129–150.
  • 3SAKATA S, ASHIDA F, ZAKO M. Structural optimization using Kriging approximation[J]. Computer Methods in Applied Mechanics and Engineering, 2003, 192(7–8): 923–939.
  • 4LEARY S J, BHASKAR A, KEANE A J. A constraint mapping approach to the structural optimization of an expensive model using surrogates[J]. Optimization and Engineering, 2001, 2(4): 385–398.
  • 5PAPADRAKAKIS M, LAGAROS N D, TSOMPANAKIS Y. Structural optimization using evolution strategies and neural networks[J]. Computer Methods in Applied Mechanics and Engineering, 1998, 156(1): 309–333.
  • 6NAKAYAMA H, ARAKAWA M, SASAKI R. Simulation-based optimization using computational intelligence[J]. Optimization and Engineering, 2002, 3(2): 201–214.
  • 7HUSSAIN M F, BARTON R R, JOSHI S B. Metamodeling: radial basis functions, versus polynomials[J]. Eur. J. Oper. Res., 2002, 138(1): 142–154.
  • 8JIN R, CHEN W, SIMPSON T W. Comparative studies of metamodelling techniques under multiple modeling criteria[J]. Structure and Multidisciplinary Optimization, 2001, 23(1): 1–13.
  • 9CHEN W, ALLEN J K, TSUI K L, et al. A procedure for robust design[J]. ASME Journal Mechanical Design, 1996, 118(4): 478–485.
  • 10LEE K H, PARK G J. Robust optimization considering tolerances of design variables[J]. Computers and Structures, 2001, 79(1): 77–86.

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