Skip to main content
U.S. Department of Energy
Office of Scientific and Technical Information

Statistical characterization of experimental magnetized liner inertial fusion stagnation images using deep-learning-based fuel–background segmentation

Journal Article · · Journal of Plasma Physics

Significant variety is observed in spherical crystal x-ray imager (SCXI) data for the stagnated fuel–liner system created in Magnetized Liner Inertial Fusion (MagLIF) experiments conducted at the Sandia National Laboratories Z-facility. As a result, image analysis tasks involving, e.g., region-of-interest selection (i.e. segmentation), background subtraction and image registration have generally required tedious manual treatment leading to increased risk of irreproducibility, lack of uncertainty quantification and smaller-scale studies using only a fraction of available data. We present a convolutional neural network (CNN)-based pipeline to automate much of the image processing workflow. This tool enabled batch preprocessing of an ensemble of Nscans = 139 SCXI images across Nexp = 67 different experiments for subsequent study. The pipeline begins by segmenting images into the stagnated fuel and background using a CNN trained on synthetic images generated from a geometric model of a physical three-dimensional plasma. The resulting segmentation allows for a rules-based registration. Our approach flexibly handles rarely occurring artifacts through minimal user input and avoids the need for extensive hand labelling and augmentation of our experimental dataset that would be needed to train an end-to-end pipeline. Here we also fit background pixels using low-degree polynomials, and perform a statistical assessment of the background and noise properties over the entire image database. Our results provide a guide for choices made in statistical inference models using stagnation image data and can be applied in the generation of synthetic datasets with realistic choices of noise statistics and background models used for machine learning tasks in MagLIF data analysis. We anticipate that the method may be readily extended to automate other MagLIF stagnation imaging applications.

Research Organization:
Sandia National Laboratories (SNL-NM), Albuquerque, NM (United States)
Sponsoring Organization:
USDOE National Nuclear Security Administration (NNSA)
Grant/Contract Number:
NA0003525
OSTI ID:
1889106
Report Number(s):
SAND2022-11169J; 709345
Journal Information:
Journal of Plasma Physics, Journal Name: Journal of Plasma Physics Journal Issue: 5 Vol. 88; ISSN 0022-3778
Publisher:
Cambridge University PressCopyright Statement
Country of Publication:
United States
Language:
English

References (18)

Designing accurate emulators for scientific processes using calibration-driven deep models journal November 2020
Pulsed-power-driven cylindrical liner implosions of laser preheated fuel magnetized with an axial field journal May 2010
Pulsed-coil magnet systems for applying uniform 10–30 T fields to centimeter-scale targets on Sandia's Z facility journal December 2014
X-ray continuum as a measure of pressure and fuel–shell mix in compressed isobaric hydrogen implosion cores journal February 2015
Diagnosing magnetized liner inertial fusion experiments on Za) journal May 2015
High energy X-ray pinhole imaging at the Z facility journal June 2016
Deep learning for NLTE spectral opacities journal May 2020
Quantification of MagLIF morphology using the Mallat scattering transformation journal November 2020
Development of a deep learning based automated data analysis for step-filter x-ray spectrometers in support of high-repetition rate short-pulse laser-driven acceleration experiments journal July 2021
Deep-learning-enabled Bayesian inference of fuel magnetization in magnetized liner inertial fusion journal September 2021
Estimation of stagnation performance metrics in magnetized liner inertial fusion experiments using Bayesian data assimilation journal May 2022
Improved surrogates in inertial confinement fusion with manifold and cycle consistencies journal April 2020
Full-Pulse Tomographic Reconstruction with Deep Neural Networks journal February 2018
Onset of Hydrodynamic Mix in High-Velocity, Highly Compressed Inertial Confinement Fusion Implosions journal August 2013
Experimental Demonstration of Fusion-Relevant Conditions in Magnetized Liner Inertial Fusion journal October 2014
Three-dimensional electromagnetic model of the pulsed-power Z -pinch accelerator journal January 2010
Survey on deep learning with class imbalance journal March 2019
Z-Beamlet: a multikilojoule, terawatt-class laser system journal January 2005

Similar Records

Overcoming small minirhizotron datasets using transfer learning
Journal Article · Fri Jun 19 00:00:00 EDT 2020 · Computers and Electronics in Agriculture · OSTI ID:1773850

Transfer Learning approach to parking lot classification in aerial imagery
Conference · Sun Aug 06 00:00:00 EDT 2017 · OSTI ID:1491126