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Metamodel-based Global Optimization Using Fuzzy Clustering for Design Space Reduction 被引量:13

Metamodel-based Global Optimization Using Fuzzy Clustering for Design Space Reduction
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摘要 High fidelity analysis are utilized in modern engineering design optimization problems which involve expensive black-box models.For computation-intensive engineering design problems,efficient global optimization methods must be developed to relieve the computational burden.A new metamodel-based global optimization method using fuzzy clustering for design space reduction(MGO-FCR) is presented.The uniformly distributed initial sample points are generated by Latin hypercube design to construct the radial basis function metamodel,whose accuracy is improved with increasing number of sample points gradually.Fuzzy c-mean method and Gath-Geva clustering method are applied to divide the design space into several small interesting cluster spaces for low and high dimensional problems respectively.Modeling efficiency and accuracy are directly related to the design space,so unconcerned spaces are eliminated by the proposed reduction principle and two pseudo reduction algorithms.The reduction principle is developed to determine whether the current design space should be reduced and which space is eliminated.The first pseudo reduction algorithm improves the speed of clustering,while the second pseudo reduction algorithm ensures the design space to be reduced.Through several numerical benchmark functions,comparative studies with adaptive response surface method,approximated unimodal region elimination method and mode-pursuing sampling are carried out.The optimization results reveal that this method captures the real global optimum for all the numerical benchmark functions.And the number of function evaluations show that the efficiency of this method is favorable especially for high dimensional problems.Based on this global design optimization method,a design optimization of a lifting surface in high speed flow is carried out and this method saves about 10 h compared with genetic algorithms.This method possesses favorable performance on efficiency,robustness and capability of global convergence and gives a new optimization strategy for engineering design optimization problems involving expensive black box models. High fidelity analysis are utilized in modern engineering design optimization problems which involve expensive black-box models.For computation-intensive engineering design problems,efficient global optimization methods must be developed to relieve the computational burden.A new metamodel-based global optimization method using fuzzy clustering for design space reduction(MGO-FCR) is presented.The uniformly distributed initial sample points are generated by Latin hypercube design to construct the radial basis function metamodel,whose accuracy is improved with increasing number of sample points gradually.Fuzzy c-mean method and Gath-Geva clustering method are applied to divide the design space into several small interesting cluster spaces for low and high dimensional problems respectively.Modeling efficiency and accuracy are directly related to the design space,so unconcerned spaces are eliminated by the proposed reduction principle and two pseudo reduction algorithms.The reduction principle is developed to determine whether the current design space should be reduced and which space is eliminated.The first pseudo reduction algorithm improves the speed of clustering,while the second pseudo reduction algorithm ensures the design space to be reduced.Through several numerical benchmark functions,comparative studies with adaptive response surface method,approximated unimodal region elimination method and mode-pursuing sampling are carried out.The optimization results reveal that this method captures the real global optimum for all the numerical benchmark functions.And the number of function evaluations show that the efficiency of this method is favorable especially for high dimensional problems.Based on this global design optimization method,a design optimization of a lifting surface in high speed flow is carried out and this method saves about 10 h compared with genetic algorithms.This method possesses favorable performance on efficiency,robustness and capability of global convergence and gives a new optimization strategy for engineering design optimization problems involving expensive black box models.
出处 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2013年第5期928-939,共12页 中国机械工程学报(英文版)
基金 supported by National Natural Science Foundation of China(Grant No.51105040) Aeronautic Science Foundation of China(Grant No.2011ZA72003) Excellent Young Scholars Research Fund of Beijing Institute of Technology(Grant No.2010Y0102)
关键词 global optimization metamodel-based optimization reduction of design space fuzzy clustering global optimization metamodel-based optimization reduction of design space fuzzy clustering
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  • 1SHAN S Q, WANG G G. Survey of modeling and optimization strategies for high-dimensional design problems[C]//12th AIAAIISSMO MUltidisciplinary Analysis and Optimization Conference, Victoria, Canada, September 10-12,2008: 1-24.
  • 2JONES D, SCHONLAU M, WELCH W. Efficient global optimization of expensive black-box functions[J]. Journal of Global Optimization, 1998, 13(4): 455-492.
  • 3ADEL Y, DONG Z M. Trends, features, and tests of common and recently introduced global optimization methods[J]. Engineering Optimization, 2010, 42(8): 691-718.
  • 4SHAN S Q, WANG G G. Metamodeling for high dimensional simulation-based design problems[J]. Journal of Mechanical Design, 2010, 132(5): 1-11.
  • 5SACKS J, SCHILLER S B, WELCH W 1. Designs and analysis of computer experiments[J]. Statistical Science, 1989,4(4): 409-435.
  • 6FANG Kaitai, MA Changxing, WINKER P. Centered L2-discrepancy of random sampling and Latin hypercube design and construction of uniform designs[J]. Mathematics of Computation, 2002, 71(237): 275-296.
  • 7MORRIS M D, MITCHELL T J. Exploratory designs for computer experiments[J]. Journal of Statistical Planning and Inference, 1995, 43(3): 381-402.
  • 8EDWIN R D, BART H. Maximin Latin hypercube designs in two dimensions[J]. Operations Research, 2005, 55(1): 158-169.
  • 9XIONG Fenfen, XIONG Y, CHEN W, et al. Optimizing Latin hypercube design for sequential sampling of computer experiments[J]. Engineering Optimization, 2009, 41(8): 793-810.
  • 10MYERS R H. Response surface methodology-Current status and future directions[J]. Journal of Quality Technology, 1999, 31 (1): 30-44.

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  • 1穆雪峰,姚卫星,余雄庆,刘克龙,薛飞.多学科设计优化中常用代理模型的研究[J].计算力学学报,2005,22(5):608-612. 被引量:149
  • 2赵华,王敏杰,杨为,李友群,赵世平.箱式发射导弹适配器[J].战术导弹技术,2007(4):42-50. 被引量:19
  • 3聂毅,余雄庆.翼面隐身结构电磁散射特性稳健优化设计研究[J].航空学报,2007,28(B08):104-108. 被引量:6
  • 4WANG G G,SHAN S.Review of metamodeling techniques in support of engineering design optimization[J].Journal of Mechanical Design,2007,129(4):370-380.
  • 5JIN R,CHEN W,SIMPSON T W.Comparative studies of metamodeling techniques under multiple modeling critieria[J].Struct.Multidisc.Optim.,2001,23:1-13.
  • 6FORRESTER A I J,KEANE A J.Recent advances in surrogate-based optimization[J].Progress in Aerospace Sciences,2009,45(1):50-79.
  • 7ALEXANDROV N M,DENNIS J E,LEWIS R M,et al.A trust-region framework for managing the use of approximation models in optimization[J].Structural Optimization,1998,15(1):16-23.
  • 8JONES D R,SCHONLAU M,WELCH W J.Efficient global optimization of expensive black-box functions[J].Journal of Global Optimization,1998,13(4):455-492.
  • 9SASENA M J,PAPALAMBROS P,GOOVAERTS P.Exploration of metamodeling sampling criteria for constrained global optimization[J].Engineering Optimization,2002,34(3):263-278.
  • 10WANG G G,DONG Z M,AITCHISON P.Adaptive response surface method—a global optimization scheme for approximation-based design problems[J].Engineering Optimization,2001,33(6):707-733.

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