Transfer learning to model inertial confinement fusion experiments

12/14/2018
by   K. D. Humbird, et al.
0

Inertial confinement fusion (ICF) experiments are designed using computer simulations that are approximations of reality, and therefore must be calibrated to accurately predict experimental observations. In this work, we propose a novel nonlinear technique for calibrating from simulations to experiments, or from low fidelity simulations to high fidelity simulations, via "transfer learning". Transfer learning is a commonly used technique in the machine learning community, in which models trained on one task are partially retrained to solve a separate, but related task, for which there is a limited quantity of data. We introduce the idea of hierarchical transfer learning, in which neural networks trained on low fidelity models are calibrated to high fidelity models, then to experimental data. This technique essentially bootstraps the calibration process, enabling the creation of models which predict high fidelity simulations or experiments with minimal computational cost. We apply this technique to a database of ICF simulations and experiments carried out at the Omega laser facility. Transfer learning with deep neural networks enables the creation of models that are more predictive of Omega experiments than simulations alone. The calibrated models accurately predict future Omega experiments, and are used to search for new, optimal implosion designs.

READ FULL TEXT

page 1

page 2

research
05/26/2022

Transfer learning driven design optimization for inertial confinement fusion

Transfer learning is a promising approach to creating predictive models ...
research
06/09/2023

Data-Link: High Fidelity Manufacturing Datasets for Model2Real Transfer under Industrial Settings

High-fidelity datasets play a pivotal role in imbuing simulators with re...
research
03/19/2021

Cognitive simulation models for inertial confinement fusion: Combining simulation and experimental data

The design space for inertial confinement fusion (ICF) experiments is va...
research
05/28/2022

Transfer Learning as a Method to Reproduce High-Fidelity NLTE Opacities in Simulations

Simulations of high-energy density physics often need non-local thermody...
research
10/28/2020

Exploring the potential of transfer learning for metamodels of heterogeneous material deformation

From the nano-scale to the macro-scale, biological tissue is spatially h...
research
10/06/2017

Agile Calibration Process of Full-Stack Simulation Frameworks for V2X Communications

Computer simulations and real-world car trials are essential to investig...
research
12/08/2020

Data-driven learning of nonlocal models: from high-fidelity simulations to constitutive laws

We show that machine learning can improve the accuracy of simulations of...

Please sign up or login with your details

Forgot password? Click here to reset