A learning-based optimal uncertainty quantification method and its application to ballistic impact problems

被引:1
|
作者
Sun, Xingsheng [1 ]
Liu, Burigede [2 ]
机构
[1] Univ Kentucky, Lexington, KY USA
[2] Univ Cambridge, Cambridge, England
关键词
Optimal uncertainty quantification; Machine learning; Neural network; Ballistic impact; Certification and design; AZ31B MG alloy; TERMINAL BALLISTICS; IDENTIFICATION; VERIFICATION; VALIDATION; FRAMEWORK; SYSTEMS; INPUTS;
D O I
10.1016/j.mechmat.2023.104727
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
This paper concerns the study of optimal (supremum and infimum) uncertainty bounds for systems where the input (or prior) probability measure is only partially/imperfectly known (e.g., with only statistical moments and/or on a coarse topology) rather than fully specified. Such partial knowledge provides constraints on the input probability measures. The theory of Optimal Uncertainty Quantification allows us to convert the task into a constraint optimization problem where one seeks to compute the least upper/greatest lower bound of the system's output uncertainties by finding the extremal probability measure of the input. Such optimization requires repeated evaluation of the system's performance indicator (input to performance map) and is high -dimensional and non-convex by nature. Therefore, it is difficult to find the optimal uncertainty bounds in practice. In this paper, we examine the use of machine learning, especially deep neural networks, to address the challenge. We achieve this by introducing a neural network classifier to approximate the performance indicator combined with the stochastic gradient descent method to solve the optimization problem. We demonstrate the learning-based framework on the uncertainty quantification of the impact of magnesium alloys, which are promising light-weight structural and protective materials. Finally, we show that the approach can be used to construct maps for the performance certificate and safety design in engineering practice.
引用
收藏
页数:10
相关论文
共 50 条
  • [31] A machine learning-based probabilistic computational framework for uncertainty quantification of actuation of clustered tensegrity structures
    Yipeng Ge
    Zigang He
    Shaofan Li
    Liang Zhang
    Litao Shi
    Computational Mechanics, 2023, 72 : 431 - 450
  • [32] A machine learning-based probabilistic computational framework for uncertainty quantification of actuation of clustered tensegrity structures
    Ge, Yipeng
    He, Zigang
    Li, Shaofan
    Zhang, Liang
    Shi, Litao
    COMPUTATIONAL MECHANICS, 2023, 72 (03) : 431 - 450
  • [33] Learning-PDE-Based Approximate Optimal Control for an MHD System With Uncertainty Quantification
    Chen, Tehuan
    Ren, Zhigang
    Lin, Guang
    Xu, Chao
    IEEE TRANSACTIONS ON SYSTEMS MAN CYBERNETICS-SYSTEMS, 2022, 52 (11): : 7185 - 7192
  • [34] A learning-based method for optimal dynamic privileged parking permit policy
    Yuan, Yun
    Li, Yitong
    Li, Xin
    Wang, Xin
    COMPUTER-AIDED CIVIL AND INFRASTRUCTURE ENGINEERING, 2024, 39 (18) : 2721 - 2736
  • [35] A learning-based projection method for model order reduction of transport problems?
    Peng, Zhichao
    Wang, Min
    Li, Fengyan
    JOURNAL OF COMPUTATIONAL AND APPLIED MATHEMATICS, 2023, 418
  • [36] Robust data-driven uncertainty quantification method and its application in compressor cascade
    Wang H.
    Gao L.
    Yang G.
    Wu B.
    Hangkong Xuebao/Acta Aeronautica et Astronautica Sinica, 2023, 44 (17):
  • [37] Uncertainty Quantification in Deep Learning Context: Application to Insurance
    Ablad, Mouad
    Frikh, Bouchra
    Ouhbi, Brahim
    2020 6TH IEEE CONGRESS ON INFORMATION SCIENCE AND TECHNOLOGY (IEEE CIST'20), 2020, : 110 - 115
  • [38] Learning-Based Attenuation Quantification in Abdominal Ultrasound
    Kim, Myeong-Gee
    Oh, SeokHwan
    Kim, Youngmin
    Kwon, Hyuksool
    Bae, Hyeon-Min
    MEDICAL IMAGE COMPUTING AND COMPUTER ASSISTED INTERVENTION - MICCAI 2021, PT VII, 2021, 12907 : 14 - 23
  • [39] A deep hybrid transfer learning-based evolutionary algorithm and its application in the optimization of high-order problems
    Zhang, Ting-Ting
    Hao, Guo-Sheng
    Lim, Meng-Hiot
    Gu, Feng
    Wang, Xia
    SOFT COMPUTING, 2023, 27 (14) : 9661 - 9672
  • [40] A deep hybrid transfer learning-based evolutionary algorithm and its application in the optimization of high-order problems
    Ting-Ting Zhang
    Guo-Sheng Hao
    Meng-Hiot Lim
    Feng Gu
    Xia Wang
    Soft Computing, 2023, 27 : 9661 - 9672