High-energy density hohlraum design using forward and inverse deep neural networks

被引:2
|
作者
McClarren, Ryan G. [1 ]
Tregillis, I. L. [2 ]
Urbatsch, Todd J. [2 ]
Dodd, E. S. [2 ]
机构
[1] Univ Notre Dame, 365 Fitzpatrick Hall, Notre Dame, IN 46556 USA
[2] Los Alamos Natl Lab, Los Alamos, NM USA
关键词
High energy density physics; Opacity measurements; Hohlraum modeling; Scientific machine learning; IRON OPACITY; CALIBRATION;
D O I
10.1016/j.physleta.2021.127243
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
We present the results of a study where we use machine learning to enhance hohlraum design for opacity measurement experiments. Opacity experiments on laser facilities use hohlraums, which, when their interior walls are illuminated by the National Ignition Facility (NIF) lasers, produce a high radiation flux that heats a central sample to a temperature that is constant over a measurement time window. Given a baseline hohlraum design and a computational model, we train a deep neural network to predict the time evolution of the radiation temperature as measured by the Dante diagnostic. This enables us to rapidly explore design space and determine the effect of adjusting design parameters. We also construct an "inverse" machine learning model that predicts the design parameters given a desired time history of radiation temperature. Calculations using the machine learning model demonstrate that improved performance over the baseline hohlraum could reduce sensitivities and uncertainties in experimental opacity measurements. (C) 2021 Elsevier B.V. All rights reserved.
引用
收藏
页数:7
相关论文
共 50 条
  • [1] Inverse Design of Nanophotonic Devices using Deep Neural Networks
    Kojima, Keisuke
    Tang, Yingheng
    Koike-Akino, Toshiaki
    Wang, Ye
    Jha, Devesh
    Parsons, Kieran
    Tahersima, Mohammad H.
    Sang, Fengqiao
    Klamkin, Jonathan
    Qi, Minghao
    2020 ASIA COMMUNICATIONS AND PHOTONICS CONFERENCE (ACP) AND INTERNATIONAL CONFERENCE ON INFORMATION PHOTONICS AND OPTICAL COMMUNICATIONS (IPOC), 2020,
  • [2] Jet flavor classification in high-energy physics with deep neural networks
    Guest, Daniel
    Collado, Julian
    Baldi, Pierre
    Hsu, Shih-Chieh
    Urban, Gregor
    Whiteson, Daniel
    PHYSICAL REVIEW D, 2016, 94 (11)
  • [3] Jet substructure classification in high-energy physics with deep neural networks
    Baldi, Pierre
    Bauer, Kevin
    Eng, Clara
    Sadowski, Peter
    Whiteson, Daniel
    PHYSICAL REVIEW D, 2016, 93 (09)
  • [4] Neural networks enabled forward and inverse design of reconfigurable metasurfaces
    Tanriover, Ibrahim
    Hadibrata, Wisnu
    Scheuer, Jacob
    Aydin, Koray
    OPTICS EXPRESS, 2021, 29 (17) : 27219 - 27227
  • [5] Deep Neural Networks for Inverse Design of Nanophotonic Devices
    Kojima, Keisuke
    Tahersima, Mohammad H.
    Koike-Akino, Toshiaki
    Jha, Devesh K.
    Tang, Yingheng
    Wang, Ye
    Parsons, Kieran
    JOURNAL OF LIGHTWAVE TECHNOLOGY, 2021, 39 (04) : 1010 - 1019
  • [6] Inverse design of colored daytime radiative coolers using deep neural networks
    Keawmuang, Harit
    Badloe, Trevon
    Lee, Chihun
    Park, Junkyeong
    Rho, Junsuk
    SOLAR ENERGY MATERIALS AND SOLAR CELLS, 2024, 271
  • [7] THE USE OF NEURAL NETWORKS IN HIGH-ENERGY PHYSICS
    DENBY, B
    NEURAL COMPUTATION, 1993, 5 (04) : 505 - 549
  • [8] Parameterized neural networks for high-energy physics
    Baldi, Pierre
    Cranmer, Kyle
    Faucett, Taylor
    Sadowski, Peter
    Whiteson, Daniel
    EUROPEAN PHYSICAL JOURNAL C, 2016, 76 (05):
  • [9] Parameterized neural networks for high-energy physics
    Pierre Baldi
    Kyle Cranmer
    Taylor Faucett
    Peter Sadowski
    Daniel Whiteson
    The European Physical Journal C, 2016, 76
  • [10] Generative Deep Neural Networks for Inverse Materials Design Using Backpropagation and Active Learning
    Chen, Chun-Teh
    Gu, Grace X.
    ADVANCED SCIENCE, 2020, 7 (05)