Utility of differentiable simulators for innovative target design in ICF/IFE
POSTER
Abstract
ICF/IFE target design is a complex optimisation task, requiring both predictive simulations and many input parameters. Gradient-based optimisation methods are highly efficient when there are many design variables. However, for IFE target design this gradient information needs to propagate through the simulation, which is not possible with current state-of-the-art IFE simulation codes. Automatic differentiation (AD) is a key enabling technology for machine learning applications. It allows for differentiable programming, where accurate gradient information can be computed for any computer program (roughly) automatically. In this work, we discuss the ongoing development of a 1D Lagrangian radiation-hydrodynamics code for laser direct drive simulations, lagr-ADEPT. Because it is written in JAX, it is Pythonic, GPU-native, AD-enabled, and machine learning ready. We discuss its capabilities for prediction, inverse design and uncertainty quantification for implosion targets. We examine how machine learning technologies can be coupled with this code and what this means for future high-gain design studies.
*This research received support through Schmidt Sciences, LLC.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
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Aidan J Crilly
- Imperial College London