Merging Ensemble Simulations and High-repetition-rate experiments for Data-Driven Atomic Physics Studies
ORAL
Abstract
Plasma X-ray spectra contain rich information and features, such as line intensities and widths, which can be used to deduce plasma properties such as temperature and density, however, inferring this information typically requires time-consuming expert analysis coupled with detailed atomic kinetics and/or radiation hydrodynamics simulations. “Big data” generated by ensemble simulations and high-repetition-rate (HRR, >1 Hz) experiments at ultra-intense laser facilities can be coupled through machine learning in order to transform the way that atomic physics is studied in high-energy-density plasma systems. Such an approach could dramatically increase the speed of analysis and fold in uncertainties due to plasma spatio-temporal gradients and evolution. Here we present progress in developing multi-modal, neural-network-based analysis models for rapid analysis of X-ray spectra with confidence bounds to enable temperature and density parameter scans in short-pulse laser experiments.
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Presenters
Derek Mariscal
Lawrence Livermore Natl Lab, Lawrence Livermore National Laboratory
Authors
Derek Mariscal
Lawrence Livermore Natl Lab, Lawrence Livermore National Laboratory
Blagoje Z Djordjevic
Lawrence Livermore Natl Lab
Bruce A Hammel
Lawrence Livermore Natl Lab
Madison E Martin
Lawrence Livermore Natl Lab
Matthew P Hill
Lawrence Livermore National Laboratory, Lawrence Livermore Natl Lab
Richard A London
Lawrence Livermore Natl Lab
Andreas J Kemp
LLNL
Ronnie L Shepherd
Lawrence Livermore Natl Lab
Mike J MacDonald
Lawrence Livermore Natl Lab
Edward V Marley
Lawrence Livermore Natl Lab, Lawrence Livermore National Laboratory