Physics Informed, Automated and Highly Parallel Bayesian Optimization of Direct-Drive Implosions
ORAL
Abstract
Finding the optimal implosion design on existing experimental facilities for inertial confinement fusion requires an exhaustive search of the vast design parameter space. This is infeasible both with experiments and simulations. Consequently, a large fraction of the experimentally realizable design space remains unexplored, and new design schemes are challenging to optimize in a reasonable time-frame. On the OMEGA laser facility, predictive machine learning models have been developed to accurately forecast the result of an experiment using only inexpensive simulations and the large dataset of prior experimental data. However, the full design space remains vast enough to be unassailable with simple optimization techniques. Here, we develop a new physics-informed and optimally parallel Bayesian Optimization algorithm that can entirely optimize the target and pulse shape of a direct-drive ICF implosion under a given design paradigm. We use this algorithm to find a markedly improved design for the performance implosions on OMEGA that is predicted to hydro-equivalently scale to ignition at 2.15 MJ.
*This material is based upon work supported by the Department of Energy [National Nuclear Security Administration] University of Rochester “National Inertial Confinement Program” under Award Number(s) DE-NA0004144 and by the Department of Energy Fusion Energy Sciences under Award Number DE-SC0024381
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Presenters
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Varchas Gopalaswamy
- Laboratory for Laser Energetics, University of Rochester
- Laboratory for Laser Energetics - Rochester