Bulletin of the American Physical Society
63rd Annual Meeting of the APS Division of Plasma Physics
Volume 66, Number 13
Monday–Friday, November 8–12, 2021; Pittsburgh, PA
Session TO07: ICF: Simulations, Statistics, and Sensitivities
9:30 AM–12:30 PM,
Thursday, November 11, 2021
Room: Rooms 315-316
Chair: Varchas Gopalaswamy, Laboratory for Laser Energetics - Rochester
Abstract: TO07.00007 : Post-shot Simulations with Uncertainty: Fast, Approximate Inference Using NIF Data *
10:42 AM–10:54 AM
Presenter:
Jim A Gaffney
(Lawrence Livermore Natl Lab)
Authors:
Jim A Gaffney
(Lawrence Livermore Natl Lab)
Kelli D Humbird
(Lawrence Livermore Natl Lab)
Michael K Kruse
(Lawrence Livermore Natl Lab)
Eugene Kur
(Lawrence Livermore National Laboratory)
Bogdan Kustowski
(Lawrence Livermore Natl Lab)
Ryan C Nora
(Lawrence Livermore Natl Lab)
Luc Peterson
(Lawrence Livermore Natl Lab)
Brian K Spears
(Lawrence Livermore Natl Lab)
Recent work using deep neural network surrogates and Bayesian inference has extended ‘traditional’ hand tuned postshot simulations to provide joint probability distributions over a large (~10) set of simulation input parameters. The distributions naturally capture uncertainties and allow for large sets of fundamentally different implosions which match observations equally well. While successful, this so-called “Bayesian Superpostshot” (BSPS) has proven too computationally intensive to provide timely interpretation of new experiments.
In this talk we will report on work to accelerate uncertain superpostshot analysis by simultaneously running rad-hydro simulations and Bayesian inference. The new approach aims to balance local and global search of the simulation input space to efficiently choose simulations that better match experimental observations. We will apply this new approach to the tuning of 1-dimensional HYDRA simulations to data collected at the NIF, and discuss the advantages over traditional postshot simulation and large-scale ensemble methods like BSPS. Finally, we will investigate the importance of a full uncertainty model and the influence it has on experimental interpretations.
*Prepared by LLNL under Contract DE-AC52-07NA27344. LLNL-ABS-824178
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