Generative neural networks for designing bandwidth schema that minimize Laser Plasma InstabilitiesΑ

ORAL

Abstract

Previous work on the effects of bandwidth on TPD thresholds has quantified the increase in threshold as a function of Δω where Δω is discretized into a finite number of "lines" rather than a continuous distribution. Each of the finite number of lines has 2 free parameters depending on the Δωi , the amplitude Αi and an initial phase shift Φi. In the previous work, each of these were prescribed in a relatively simple but not necessarily optimal manner. Here, we train a generative neural network to provide optimal bandwidth parameters. To train this neural network, we develop a GPU-native differentiable solver in JAX for the enveloped equations, ADEPT-LPSE, to acquire gradients of TPD simulations with respect to the bandwidth. Using a differentiable solver written in an ML-native framework enables us to train neural networks inline that give the optimal bandwidth parameters as a function of intensity, temperature, and scale length in a relatively small number of simulations (O(1000)) in comparison to a purely supervised neural network (O(N^M) where N is number of parameters and M are the number of samples per parameter))

*This material is based upon work supported by the Department of Energy Office of Fusion Energy under Award Numbers DE-SC0024863 and the Department of Energy [National Nuclear Security Administration] University of Rochester "National Inertial Confinement Fusion Program" under Award Number DE-NA0004144. This research used resources of the National Energy Research Scientific Computing Center, a DOE Office of Science User Facility supported by the Office of Science of the U.S. Department of Energy under Contract No. DE-AC02-05CH11231 using NERSC award FES-ERCAP0026741.

Presenters

  • Archis S Joglekar

    • Ergodic LLC

Authors

  • Archis S Joglekar

    • Ergodic LLC