Predicting N221204 observables from an ensemble of N210808 simulations

ORAL

Abstract

In October 2022 the Cognitive Simulation group at LLNL had generated tens-of-thousands of 2d radiation hydrodynamic simulations of the 1.35 MJ neutron yield shot (N210808) for a Bayesian-SuperPostShot (BSPS) analysis. The BSPS analysis informs the team what the likely range of input parameters (laser fluctuations, preheat, m-band fraction etc.) are and how these are correlated amongst themselves. Using experimental data from N210808 and the accompanying repeat shots led to the ability to create an input-variability model based on the 1.9 MJ laser energy design. The variability model was modified slightly to consider the design changes for the December 2022 2.05 MJ laser energy design. An efficient multivariate integration method known as stochastic collocation was used to sample the variability model which led to a small set of new hydrodynamic simulations. The new simulations were then used in conjunction with the machine-learning technique “transfer learning” to create a modified machine-learned surrogate appropriate for the 2.05 MJ laser-energy design (N221204). The modified surrogate ultimately formed the basis for the CogSim prediction that N221204 had approximately a 50% chance of igniting.

*This work was performed under the auspices of the U.S. Department of Energy by Lawrence Livermore National Laboratory under contract DE-AC52-07NA27344. LLNL-ABS-851515

Presenters

  • Michael K Kruse

    • Lawrence Livermore Natl Lab

Authors

  • Michael K Kruse

    • Lawrence Livermore Natl Lab
  • Eugene Kur

    • Lawrence Livermore National Laboratory
    • LLNL
  • Jim A Gaffney

    • Lawrence Livermore National Laboratory
  • Kelli D Humbird

    • Lawrence Livermore Natl Lab
    • Lawrence Livermore National Laboratory
  • Bogdan Kustowski

    • Lawrence Livermore National Laboratory
  • Ryan C Nora

    • Lawrence Livermore National Laboratory
  • Brian K Spears

    • LLNL