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Towards AI-driven Experiments at PW-class Laser Facilities

ORAL

Abstract

Today, there are multiple high-intensity short-pulse lasers around the world that are capable of operating at high repetition rate (>1 Hz), representing an opportunity to accelerate the rate of scientific exploration by >3 orders of magnitude. In order to achieve this, diagnostics, targeting, laser control, and diagnostic analysis must all operate at commensurate rates. Machine learning provides a path for achieving this by utilizing fast surrogate models for each piece. While demonstrations of this technology for these purposes have been growing in number, they must now be integrated into a fully autonomous system through artificial intelligence.

Here, we present progress on this front by utilizing a physics-based ML model as the guide for experimental exploration and optimization by; proposing experimental samples, analyzing data, retraining the original model, and proposing new experimental samples with a “human in the loop”. The experiments were carried out at CSU’s ALEPH laser facility where the laser is controlled through spectral phase shaping and MeV-energy electrons and protons are measured with HRR diagnostics. The process was iterated multiple times in order to reduce the model uncertainty while searching for optimal laser settings to increase MeV particle production.

Presenters

  • Derek A Mariscal

    Lawrence Livermore Natl Lab, Lawrence Livermore National Laboratory

Authors

  • Derek A Mariscal

    Lawrence Livermore Natl Lab, Lawrence Livermore National Laboratory

  • Blagoje Z Djordjevic

    Lawrence Livermore National Lab, Lawrence Livermore National Laboratory, Lawrence Livermore Natl Lab

  • Ghassan Zeraouli

    Colorado State University

  • Kelly K Swanson

    Lawrence Livermore National Laboratory

  • Raspberry A Simpson

    Massachusetts Institute of Technology MI, Lawrence Livermore National Laboratory, Massachusetts Institute of Technology

  • Elizabeth S Grace

    Georgia Institute of Technology, Lawrence Livermore National Laboratory

  • Tom Galvin

    LLNL

  • Brian Van Essen

    LLNL

  • Paul C Campbell

    Lawrence Livermore National Laboratory

  • Reed C Hollinger

    Colorado State University

  • Bryan Sullivan

    Colorado State University

  • Ryan Nedbailo

    Colorado State University, Colorado state university

  • Shoujun Wang

    Colorado State University

  • Jorge J Rocca

    Colorado State University

  • Timo Bremer

    Lawrence Livermore National Laboratory, LLNL

  • Rushil Anirudh

    LLNL, Lawrence Livermore National Laboratory

  • Jayaraman J Thiagarajan

    LLNL, Lawrence Livermore National Laboratory

  • Brian K Spears

    Lawrence Livermore Natl Lab, LLNL, Lawrence Livermore National Laboratory, Lawrence Livemore Natl Lab

  • Scott Feister

    California State University, Channel Isl, California State University, Channel Islands, California State University Channel Islands

  • Tammy Ma

    Lawrence Livermore Natl Lab, Lawrence Livermore National Laboratory