Multi-fidelity optimization of metal sheets concerning manufacturability in deep-drawing processes

被引:6
作者
Kaps, Arne [1 ]
Lehrer, Tobias [1 ,2 ]
Lepenies, Ingolf [3 ]
Wagner, Marcus [2 ]
Duddeck, Fabian [1 ]
机构
[1] Tech Univ Munich, TUM Sch Engn & Design, Arcisstr 21, D-80333 Munich, Germany
[2] Ostbayer TH Regensburg, Dept Mech Engn, Galgenbergstr 30, D-93053 Regensburg, Germany
[3] SCALE GmbH, Dresden, Germany
关键词
Multi-fidelity optimization; Efficient global optimization; Sheet metal forming; Deep drawing; EFFICIENT GLOBAL OPTIMIZATION; DESIGN; SURROGATE; SIMULATION; EVOLUTION; STRAIN; PARTS;
D O I
10.1007/s00158-023-03631-8
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Multi-fidelity optimization, which complements an expensive high-fidelity function with cheaper low-fidelity functions, has been successfully applied in many fields of structural optimization. In the present work, an exemplary cross-die deep-drawing optimization problem is investigated to compare different objective functions and to assess the performance of a multi-fidelity efficient global optimization technique. To that end, hierarchical kriging is combined with an infill criterion called variable-fidelity expected improvement. Findings depend significantly on the choice of objective function, highlighting the importance of careful consideration when defining an objective function. We show that one function based on the share of bad elements in a forming limit diagram is not well suited to optimize the example problem. In contrast, two other definitions of objective functions, the average sheet thickness reduction and an averaged limit violation in the forming limit diagram, confirm the potential of a multi-fidelity approach. They significantly reduce computational cost at comparable result quality or even improve result quality compared to a single-fidelity optimization.
引用
收藏
页数:16
相关论文
共 50 条
[41]   Accelerating extrusion-based additive manufacturing optimization processes with surrogate-based multi-fidelity models [J].
Zhou, Xunfei ;
Hsieh, Sheng-Jen ;
Wang, Jia-Chang .
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2019, 103 (9-12) :4071-4083
[42]   An experimental study on the deep-drawing of metal-wire cloth [J].
Gotoh, M ;
Yamashita, M ;
Itoh, M .
JOURNAL OF MATERIALS PROCESSING TECHNOLOGY, 2003, 138 (1-3) :564-571
[43]   Multi-fidelity neural optimization machine for Digital Twins [J].
Chen, Jie ;
Meng, Changyu ;
Gao, Yi ;
Liu, Yongming .
STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2022, 65 (12)
[44]   A NOVEL MULTI-FIDELITY SURROGATE FOR TURBOMACHINERY DESIGN OPTIMIZATION [J].
Wang, Qineng ;
Song, Liming ;
Guo, Zhendong ;
Li, Jun ;
Feng, Zhenping .
PROCEEDINGS OF ASME TURBO EXPO 2023: TURBOMACHINERY TECHNICAL CONFERENCE AND EXPOSITION, GT2023, VOL 13D, 2023,
[45]   Multi-fidelity Bayesian Optimization of SWATH Hull Forms [J].
Bonfiglio, Luca ;
Perdikaris, Paris ;
Brizzolara, Stefano .
JOURNAL OF SHIP RESEARCH, 2020, 64 (02) :154-170
[46]   Classification-based Optimization with Multi-Fidelity Evaluations [J].
Wu, Kai ;
Liu, Jing .
2019 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC), 2019, :1126-1131
[47]   MULTI-FIDELITY MACHINE LEARNING FOR UNCERTAINTY QUANTIFICATION AND OPTIMIZATION [J].
Zhang, Ruda ;
Alemazkoor, Negin .
JOURNAL OF MACHINE LEARNING FOR MODELING AND COMPUTING, 2024, 5 (04) :77-94
[48]   Scaling Properties of Multi-Fidelity Shape Optimization Algorithms [J].
Koziel, Slawomir ;
Leifsson, Leifur .
PROCEEDINGS OF THE INTERNATIONAL CONFERENCE ON COMPUTATIONAL SCIENCE, ICCS 2012, 2012, 9 :832-841
[49]   A review on multi-fidelity hyperparameter optimization in machine learning [J].
Won, Jonghyeon ;
Lee, Hyun-Suk ;
Lee, Jang-Won .
ICT EXPRESS, 2025, 11 (02) :245-257
[50]   Evolutionary optimization of deep-drawing processes on servo screw presses with freely programmable force and motion functions [J].
Kriechenbauer, Sebastian ;
Mueller, Peter ;
Mauermann, Reinhard ;
Drossel, Welf-Guntram .
54TH CIRP CONFERENCE ON MANUFACTURING SYSTEMS 2021-TOWARDS DIGITALIZED MANUFACTURING 4.0, CMS 2021, 2021, 104 :1482-1487