Physics-Based Active Learning for Design Space Exploration and Surrogate Construction for Multiparametric Optimization

被引:1
|
作者
Torregrosa, Sergio [1 ,2 ]
Champaney, Victor [3 ]
Ammar, Amine [4 ]
Herbert, Vincent [2 ]
Chinesta, Francisco [3 ]
机构
[1] PIMM Arts & Metiers Inst Technol, 151 Blvd lHopital, F-75013 Paris, France
[2] STELLANTIS, Route Gisy, F-78140 Velizy Villacoublay, France
[3] PIMM Arts & Metiers Inst Technol, CNRS, ESI Chair, 151 Blvd Hop, F-75013 Paris, France
[4] LAMPA Arts & Metiers Inst Technol, ESI Chair, 2 Blvd Ronceray, F-49035 Angers, France
关键词
Active learning (AL); Artificial intelligence (AI); Optimization; Physics based;
D O I
10.1007/s42967-023-00329-y
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
The sampling of the training data is a bottleneck in the development of artificial intelligence (AI) models due to the processing of huge amounts of data or to the difficulty of access to the data in industrial practices. Active learning (AL) approaches are useful in such a context since they maximize the performance of the trained model while minimizing the number of training samples. Such smart sampling methodologies iteratively sample the points that should be labeled and added to the training set based on their informativeness and pertinence. To judge the relevance of a data instance, query rules are defined. In this paper, we propose an AL methodology based on a physics-based query rule. Given some industrial objectives from the physical process where the AI model is implied in, the physics-based AL approach iteratively converges to the data instances fulfilling those objectives while sampling training points. Therefore, the trained surrogate model is accurate where the potentially interesting data instances from the industrial point of view are, while coarse everywhere else where the data instances are of no interest in the industrial context studied.
引用
收藏
页码:1899 / 1923
页数:25
相关论文
共 50 条
  • [31] Physics-based machine learning method and the application to energy consumption prediction in tunneling construction
    Zhou, Siyang
    Liu, Shanglin
    Kang, Yilan
    Cai, Jie
    Xie, Haimei
    Zhang, Qian
    ADVANCED ENGINEERING INFORMATICS, 2022, 53
  • [32] Surrogate-based optimization with clustering-based space exploration for expensive multimodal problems
    Huachao Dong
    Baowei Song
    Peng Wang
    Zuomin Dong
    Structural and Multidisciplinary Optimization, 2018, 57 : 1553 - 1577
  • [33] Surrogate-based optimization with clustering-based space exploration for expensive multimodal problems
    Dong, Huachao
    Song, Baowei
    Wang, Peng
    Dong, Zuomin
    STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2018, 57 (04) : 1553 - 1577
  • [34] Learning Climbing Controllers for Physics-Based Characters
    Kang, Kyungwon
    Gu, Taehong
    Kwon, Taesoo
    COMPUTER GRAPHICS FORUM, 2025,
  • [35] Physics-Based Learning Models for Ship Hydrodynamics
    Weymouth, Gabriel D.
    Yue, Dick K. P.
    JOURNAL OF SHIP RESEARCH, 2013, 57 (01): : 1 - 12
  • [36] Design space dimensionality reduction through physics-based geometry re-parameterization
    András Sóbester
    Stephen Powell
    Optimization and Engineering, 2013, 14 : 37 - 59
  • [37] Physics-based machine learning for materials and molecules
    Ceriotti, Michele
    Engel, Edgar
    Willatt, Michael
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2019, 257
  • [38] Enabling robust offline active learning for machine learning potentials using simple physics-based priors
    Shuaibi, Muhammed
    Sivakumar, Saurabh
    Chen, Rui Qi
    Ulissi, Zachary W.
    MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2021, 2 (02):
  • [39] Design space dimensionality reduction through physics-based geometry re-parameterization
    Sobester, Andras
    Powell, Stephen
    OPTIMIZATION AND ENGINEERING, 2013, 14 (01) : 37 - 59
  • [40] A generalised deep learning-based surrogate model for homogenisation utilising material property encoding and physics-based bounds
    Nakka, Rajesh
    Harursampath, Dineshkumar
    Ponnusami, Sathiskumar A.
    SCIENTIFIC REPORTS, 2023, 13 (01)