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Comprehensive magnetized collisionless shock observations with deep learning aided diagnostic analysis

ORAL · Invited

Abstract

Collisionless shocks are of great interest to the astrophysics community due to their prevalence throughout astrophysics phenomena, including supernova remnants and planetary bow shocks, and candidacy for particle accelerators of cosmic rays. Despite their ubiquity, key formation and sustentation processes of collisionless shocks are still not fully understood. Laboratory experiments have become a valuable tool to further study these systems in controllable and repeatable conditions. Furthermore, the improvements to and growing accessibility of high repetition rate experiment capabilities potentially offer unparalleled insight into system evolution, but the dynamicity and sheer size of these datasets could render conventional analysis challenging. In this work we demonstrate how deep learning models could serve as potential candidates to help meet the needs of future experiments.

We present results from experimental campaigns at the OMEGA laser facility to study quasi-perpendicular (Tubman et al., in preparation) and quasi-parallel shock formation and highlight how optical Thomson scattering (OTS) is used to measure key plasma parameters to better understand and detect shock formation. Results are compared with particle-in-cell simulations. We then demonstrate how deep learning models can be trained to accelerate and aid OTS analysis by predicting plasma conditions directly from OTS spectra (Pokornik et al., Phys. Plasmas 31, 7 2024) collected from both experimental campaigns and theoretical spectra forward modeled from simulations. We discuss the advantages and limitations of the models and present preliminary work on predicting fully arbitrary particle velocity distributions.

Publication: 1E. R. Tubman, M. Pokornik, C. J. Bruulsema, R. S. Dorst, F. Fiuza, D. P. Higginson, D. J. Larson, M. J.-E. Manuel, K. Moczulski, B. B. Pollock, J. S. Ross, G. F. Swadling, P. Tzeferacos, H. -S. Park. "Observation of ion reflection and shock separation in supercritical, laser-driven, magnetized collisionless conditions", in preparation<br>2Pokornik, M., Higginson, D. P., Swadling, G., Larson, D., Moczulski, K., Pollock, B., Tubman, E., Tzeferacos, P., Park, H. S., Beg, F., Arefiev, A., & Manuel, M. (2024). "A deep learning approach to fast analysis of collective Thomson scattering spectra" Physics of Plasmas, 31(7), 072115. https://doi.org/10.1063/5.0201148<br>3M. Pokornik, R.S. Dorst, E. R. Tubman, C. J. Bruulsema, D.P. Higginson, G. Swadling, D. Larson, M. Manuel, S. Bolaños, B. Pollock, K. Moczulski, P. Tzeferacos, T. Bachmann, F. Fuiza, H. -S. Park, F. Beg, A. Arefiev. "Predicting arbitrary particle velocity distribution functions from Thomson scattering spectra"<br><br>

Presenters

  • Michael Pokornik

    University of California San Diego

Authors

  • Michael Pokornik

    University of California San Diego

  • Robert S Dorst

    Lawrence Livermore National Laboratory

  • Eleanor Tubman

    University of California, Berkeley

  • Colin J Bruulsema

    Lawrence Livermore National Laboratory

  • Drew P Higginson

    Lawrence Livermore National Laboratory

  • George F Swadling

    Lawrence Livermore National Laboratory

  • David Jeffrey Larson

    Lawrence Livermore National Laboratory

  • Mario J Manuel

    General Atomics

  • Simon Bolaños

    University of California, San Diego

  • Kassie Moczulski

    University of Rochester

  • Petros Tzeferacos

    University of Rochester

  • Tristan Bachmann

    University of Rochester

  • Frederico Fiuza

    Instituto Superior Tecnico

  • Hye-Sook Park

    Lawrence Livermore National Laboratory

  • Farhat N Beg

    University of California, San Diego

  • Alexey Arefiev

    University of California, San Diego