Machine learning techniques for sequential learning engineering design optimisation

被引:1
|
作者
Humphrey, L. R. [1 ]
Dubas, A. J. [1 ]
Fletcher, L. C. [1 ]
Davis, A. [1 ]
机构
[1] United Kingdom Atom Energy Author, Culham Campus, Abingdon OX14 3DB, Oxon, England
关键词
machine learning; design optimisation; FEM;
D O I
10.1088/1361-6587/ad11fb
中图分类号
O35 [流体力学]; O53 [等离子体物理学];
学科分类号
070204 ; 080103 ; 080704 ;
摘要
When designing a fusion power plant, many first-of-a-kind components are required. This presents a large potential design space across as many dimensions as the component's parameters. In addition, multiphysics, multiscale, high-fidelity simulations are required to reliably capture a component's performance under given boundary conditions. Even with high performance computing (HPC) resources, it is not possible to fully explore a component's design space. Thus, effective interpolation between data points via machine learning (ML) techniques is essential. With sequential learning engineering optimisation, ML techniques inform the selection of simulation parameters which give the highest expected improvement for the model: balancing exploitation of the current best design with exploration of uncertain areas in the design space. In this paper, the application of an ML-driven design of experiment procedure for the sequential learning engineering design optimisation of a fusion component is shown. A parameterised divertor monoblock is taken as a typical example of a fusion component requiring HPC simulation to model. The component's geometry is then optimised using Bayesian optimisation, seeking the design which minimises the stress experienced by the component under operational conditions.
引用
收藏
页数:19
相关论文
共 50 条
  • [1] LEARNING DESIGN CONCEPTS USING MACHINE LEARNING TECHNIQUES
    MAHER, ML
    LI, H
    AI EDAM-ARTIFICIAL INTELLIGENCE FOR ENGINEERING DESIGN ANALYSIS AND MANUFACTURING, 1994, 8 (02): : 95 - 111
  • [2] Machine Learning Techniques and Drug Design
    Gertrudes, J. C.
    Maltarollo, V. G.
    Silva, R. A.
    Oliveira, P. R.
    Honorio, K. M.
    da Silva, A. B. F.
    CURRENT MEDICINAL CHEMISTRY, 2012, 19 (25) : 4289 - 4297
  • [3] A Comparative Evaluation of Supervised Machine Learning Classification Techniques for Engineering Design Applications
    Sharpe, Conner
    Wiest, Tyler
    Wang, Pingfeng
    Seepersad, Carolyn Conner
    JOURNAL OF MECHANICAL DESIGN, 2019, 141 (12)
  • [4] Machine learning for enzyme engineering, selection and design
    Feehan, Ryan
    Montezano, Daniel
    Slusky, Joanna S. G.
    PROTEIN ENGINEERING DESIGN & SELECTION, 2021, 34
  • [5] Machine Learning for the Discovery, Design, and Engineering of Materials
    Duan, Chenru
    Nandy, Aditya
    Kulik, Heather J.
    ANNUAL REVIEW OF CHEMICAL AND BIOMOLECULAR ENGINEERING, 2022, 13 : 405 - 429
  • [6] Concurrent engineering and machine learning techniques in medical science
    Vijayakumar, D.R.K.
    Concurrent Engineering Research and Applications, 2022, 30 (01): : 3 - 4
  • [7] Machine learning for enzyme engineering, selection and design
    Feehan, Ryan
    Montezano, Daniel
    Slusky, Joanna S. G
    Slusky, Joanna S. G (slusky@ku.edu), 1600, Oxford University Press (34):
  • [8] Special Issue: Machine Learning for Engineering Design
    Panchal, Jitesh H.
    Fuge, Mark
    Liu, Ying
    Missoum, Samy
    Tucker, Conrad
    JOURNAL OF MECHANICAL DESIGN, 2019, 141 (11)
  • [9] Machine Learning Techniques for Solving Constrained Engineering Problems
    Garbaya, Amel
    Kallel, Imen
    Fakhfakh, Mourad
    Siarry, Patrick
    2022 2ND INTERNATIONAL CONFERENCE ON INNOVATIVE RESEARCH IN APPLIED SCIENCE, ENGINEERING AND TECHNOLOGY (IRASET'2022), 2022, : 967 - 970
  • [10] Application of machine learning techniques to chip design
    Sudhakaran, Sunil
    2024 IEEE WORKSHOP ON MICROELECTRONICS AND ELECTRON DEVICES, WMED, 2024, : XV - XV