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变可信度近似模型及其在复杂装备优化设计中的应用研究进展
引用本文:周奇,杨扬,宋学官,韩忠华,程远胜,胡杰翔,舒乐时,蒋平. 变可信度近似模型及其在复杂装备优化设计中的应用研究进展[J]. 机械工程学报, 2020, 56(24): 219-245. DOI: 10.3901/JME.2020.24.219
作者姓名:周奇  杨扬  宋学官  韩忠华  程远胜  胡杰翔  舒乐时  蒋平
作者单位:1. 华中科技大学航空航天学院 武汉 430074;2. 华中农业大学工学院 武汉 430070;3. 大连理工大学机械工程学院 大连 116024;4. 西北工业大学翼型、叶栅空气动力学国家级重点实验室 西安 710072;5. 西北工业大学航空学院 西安 710072;6. 华中科技大学船舶与海洋工程学院 武汉 430074;7. 华中科技大学数字制造装备与技术国家重点实验室 武汉 430074;8. 华中科技大学机械科学与工程学院 武汉 430074
摘    要:变可信度近似模型通过融合不同精度分析模型的数据,可有效平衡近似模型预测性能和建模成本之间的矛盾,在复杂装备优化设计中受到广泛的关注。综述变可信度近似模型及其在复杂装备优化设计中的应用研究进展。概述三类常用变可信度近似建模方法的基本思想,并介绍变可信度近似建模方法研究的最新进展。回顾面向变可信度近似模型试验设计方法的发展现状,包括一次性试验设计方法和序贯试验设计方法。综述直接影响变可信度近似模型优化设计求解精度和效率的两类近似模型管理策略,探讨基于变可信度近似模型的智能优化和可靠性/稳健性优化这两个领域前沿问题。归纳总结变可信度近似模型应用于复杂装备优化设计的现状。针对变可信度近似建模及其优化设计给出了一些应用建议,并指出未来值得深入研究的方向。

关 键 词:变可信度近似模型  序贯采样  装备优化设计  序贯优化  多学科优化设计
收稿时间:2020-03-09

Survey of Multi-fidelity Surrogate Models and their Applications in the Design and Optimization of Engineering Equipment
ZHOU Qi,YANG Yang,SONG Xueguan,HAN Zhonghua,CHENG Yuansheng,HU Jiexiang,SHU Leshi,JIANG Ping. Survey of Multi-fidelity Surrogate Models and their Applications in the Design and Optimization of Engineering Equipment[J]. Chinese Journal of Mechanical Engineering, 2020, 56(24): 219-245. DOI: 10.3901/JME.2020.24.219
Authors:ZHOU Qi  YANG Yang  SONG Xueguan  HAN Zhonghua  CHENG Yuansheng  HU Jiexiang  SHU Leshi  JIANG Ping
Abstract:Multi-fidelity (MF) surrogate models have attracted significant attention recently in engineering design optimization since they can make a trade-off between high prediction accuracy and low computational cost by augmenting the small number of expensive high-fidelity (HF) samples with a large number of cheap low-fidelity (LF) data. This work summarizes the state-of-the-art of MF surrogate modeling approaches and their applications in engineering design optimization. Firstly, the concept of three types of commonly used MF surrogate models is provided and the developments of extensions of them are reported. Secondly, the design of experiments for the MF surrogate models are summarized, including the one-shot design and sequential design approaches. Thirdly, two model management strategies, which directly determine the accuracy and efficiency of MF surrogate model-assisted design optimization approaches, are presented. Besides, the hot topics, MF surrogate model-assisted intelligent optimization algorithms and reliability/robust optimization are discussed. Fourthly, the applications of MF surrogate models in the practical engineering design domain are summarized. Finally, some suggestions about the usage of the MF surrogate models and their applications are provided, followed by the discussion of the deserved future work.
Keywords:multi-fidelity surrogate model  sequential sampling  equipment design and optimization  sequential optimization  multi-disciplinary design and optimization  
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