A dynamic surrogate-assisted evolutionary algorithm framework for expensive structural optimization

被引:46
作者
Yu, Mingyuan [1 ]
Li, Xia [2 ]
Liang, Jing [3 ]
机构
[1] Chongqing Univ, Sch Automat, Chongqing 400000, Peoples R China
[2] Zhengzhou Univ, Sch Affiliated Hosp 3, Zhengzhou 450052, Henan, Peoples R China
[3] Zhengzhou Univ, Sch Elect Engn, Zhengzhou 450001, Henan, Peoples R China
基金
中国国家自然科学基金;
关键词
Evolutionary algorithm; Adaptive surrogate model; Expensive optimization; Reliability; GLOBAL OPTIMIZATION; PARTICLE SWARM; SAMPLING STRATEGY; ENSEMBLE; DESIGN; MODELS; METAMODELS;
D O I
10.1007/s00158-019-02391-8
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
In the expensive structural optimization, the data-driven surrogate model has been proven to be an effective alternative to physical simulation (or experiment). However, the static surrogate-assisted evolutionary algorithm (SAEA) often becomes powerless and inefficient when dealing with different types of expensive optimization problems. Therefore, how to select high-reliability surrogates to assist an evolutionary algorithm (EA) has always been a challenging task. This study aimed to dynamically provide an optimal surrogate for EA by developing a brand-new SAEA framework. Firstly, an adaptive surrogate model (ASM) selection technology was proposed. In ASM, according to different integration criteria from the strategy pool, elite meta-models were recombined into multiple ensemble surrogates in each iteration. Afterward, a promising model was adaptively picked out from the model pool based on the minimum root of mean square error (RMSE). Secondly, we investigated a novel ASM-based EA framework, namely ASMEA, where the reliability of all models was updated in real-time by generating new samples online. Thirdly, to verify the performance of the ASMEA framework, two instantiation algorithms are widely compared with several state-of-the-art algorithms on a commonly used benchmark test set. Finally, a real-world antenna structural optimization problem was solved by the proposed algorithms. The results demonstrate that the proposed framework is able to provide a high-reliability surrogate to assist EA in solving expensive optimization problems.
引用
收藏
页码:711 / 729
页数:19
相关论文
共 52 条
[11]   A multiobjective optimization based framework to balance the global exploration and local exploitation in expensive optimization [J].
Feng, Zhiwei ;
Zhang, Qingbin ;
Zhang, Qingfu ;
Tang, Qiangang ;
Yang, Tao ;
Ma, Yang .
JOURNAL OF GLOBAL OPTIMIZATION, 2015, 61 (04) :677-694
[12]   Performance assessment of a cross-validation sampling strategy with active surrogate model selection [J].
Garbo, Andrea ;
German, Brian J. .
STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2019, 59 (06) :2257-2272
[13]   Adaptive surrogate model with active refinement combining Kriging and a trust region method [J].
Gaspar, B. ;
Teixeira, A. P. ;
Guedes Soares, C. .
RELIABILITY ENGINEERING & SYSTEM SAFETY, 2017, 165 :277-291
[14]   Ensemble of surrogates [J].
Goel, Tushar ;
Haftka, Raphael T. ;
Shyy, Wei ;
Queipo, Nestor V. .
STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2007, 33 (03) :199-216
[15]   A Multi-Objective Approach to Subarrayed Linear Antenna Arrays Design Based on Memetic Differential Evolution [J].
Goudos, Sotirios K. ;
Gotsis, Konstantinos A. ;
Siakavara, Katherine ;
Vafiadis, Elias E. ;
Sahalos, John N. .
IEEE TRANSACTIONS ON ANTENNAS AND PROPAGATION, 2013, 61 (06) :3042-3052
[16]   Propofol post-conditioning after temporary clipping reverses oxidative stress in aneurysm surgery [J].
Guo, Di ;
Li, Yanli ;
Wang, Haiyun ;
Wang, Xinyue ;
Hua, Wei ;
Tang, Qingkai ;
Miao, Lumin ;
Wang, Guolin .
INTERNATIONAL JOURNAL OF NEUROSCIENCE, 2019, 129 (02) :155-164
[17]   Metamodel-assisted optimization based on multiple kernel regression for mixed variables [J].
Herrera, Manuel ;
Guglielmetti, Aurore ;
Xiao, Manyu ;
Coelho, Rajan Filomeno .
STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2014, 49 (06) :979-991
[18]  
Jin Y, 2002, GECCO GEN EV COMP C
[19]   Surrogate-assisted evolutionary computation: Recent advances and future challenges [J].
Jin, Yaochu .
SWARM AND EVOLUTIONARY COMPUTATION, 2011, 1 (02) :61-70
[20]   A framework for evolutionary optimization with approximate fitness functions [J].
Jin, YC ;
Olhofer, M ;
Sendhoff, B .
IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION, 2002, 6 (05) :481-494