Optimizing the Performance of Direct-Drive Implosion Experiments Using Meta-Bayesian Optimization

ORAL

Abstract

Finding a laser pulse shape that optimizes the Lawson parameter [1,2,3] for a given target is a challenging problem in inertial confinement fusion due to the predictive gap between simulations and experiments. The Lawson parameter is typically related to the yield and ρR of the implosion and requires an increase in both. Optimizing the yield of cryogenic implosions on OMEGA using a data-driven predictive machine-learning (ML) approach [4,5] has met with considerable success, but increasing the ρR has proven more challenging. It is likely that this is in part due to hydrodynamic instabilities, but is likely also due to the increased sensitivity of the ρR to fine details of the shock timing and entropy spatial profile of the implosion, which in turn are highly sensitive to the front end of the laser pulse. If simulations used for implosion design [6] fail to capture the instability growth, shock transit, or adiabat-setting behavior of the implosion correctly, the response surface between simulations and experiments will sharply differ, making implosion optimization challenging with limited experimental data. We present the use of Neural Acquisition Processes (NAP) [7] which is meta-learned on varying fidelities of simulation databases to optimize synthetic experiments and Omega experiments in a sample efficient manner. NAP uses a transformer neural network to learn the input-output distribution and enables proximal policy optimization reinforcement learning based acquisition function which significantly outperforms Bayesian optimization. Additionally, we present algorithmic improvements of meta-learning variants of decision transformers [8] and use them to solve similar ICF implosion optimization objectives.

*This material is based upon work supported by the Department of Energy National Nuclear Security Administration under Award No. DE-NA0004144, Department of Energy under Award Nos. DE-SC0024381, DE-SC0022132,DE-SC0021072 and DE-SC0024456, the University of Rochester, and the New York State Energy Research and Development Authority.

Publication: FusionMamba: A Framework Utilizing Online Policy Adaptation Modules and Mamba for Optimization of Inertial Confinement Fusion Experiments (In preperation for TMLR)

Presenters

  • Rahman Ejaz

    • Laboratory for Laser Energetics, University of Rochester

Authors

  • Rahman Ejaz

    • Laboratory for Laser Energetics, University of Rochester
  • Varchas Gopalaswamy

    • Laboratory for Laser Energetics, University of Rochester
    • Laboratory for Laser Energetics - Rochester
  • Ricardo Luna

    • Hewlett Packard Labs, Hewlett Packard Enterprise, Milpitas, CA USA
  • Vineet Gundecha

    • Hewlett Packard Labs, Hewlett Packard Enterprise
  • Aarne Lees

    • University of Rochester - Laboratory for Laser Energetics
    • Laboratory for Laser Energetics, University of Rochester
    • University of Rochester
  • Riccardo Betti

    • Laboratory for Laser Energetics, University of Rochester
    • Laboratory for Laser Energy, Rochester, NY, USA.
  • Sahand Ghorbanpour

    • Hewlett Packard Labs, Hewlett Packard Enterprise
  • Soumyendu Sarkar

    • Hewlett Packard Labs, Hewlett Packard Enterprise
  • Christopher Kanan

    • Department of Computer Science, University of Rochester