Machine Learning for Detection of 3D Features using sparse X-ray data
- URL: http://arxiv.org/abs/2206.02564v1
- Date: Thu, 2 Jun 2022 22:36:54 GMT
- Title: Machine Learning for Detection of 3D Features using sparse X-ray data
- Authors: Bradley T. Wolfe, Michael J. Falato, Xinhua Zhang, Nga T. T.
Nguyen-Fotiadis, J.P. Sauppe, P. M. Kozlowski, P. A. Keiter, R. E. Reinovsky,
S. A. Batha, and Zhehui Wang
- Abstract summary: In inertial confinement fusion experiments, the neutron yield and other parameters cannot be completely accounted for with one and two dimensional models.
This discrepancy suggests that there are three dimensional effects which may be significant.
Sources of these effects include defects in the shells and shell interfaces, the fill tube of the capsule, and the joint feature in double shell targets.
We utilize convolutional neural networks to produce different 3D representations of ICF implosions from the experimental data.
- Score: 6.295613527861694
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In many inertial confinement fusion experiments, the neutron yield and other
parameters cannot be completely accounted for with one and two dimensional
models. This discrepancy suggests that there are three dimensional effects
which may be significant. Sources of these effects include defects in the
shells and shell interfaces, the fill tube of the capsule, and the joint
feature in double shell targets. Due to their ability to penetrate materials,
X-rays are used to capture the internal structure of objects. Methods such as
Computational Tomography use X-ray radiographs from hundreds of projections in
order to reconstruct a three dimensional model of the object. In experimental
environments, such as the National Ignition Facility and Omega-60, the
availability of these views is scarce and in many cases only consist of a
single line of sight. Mathematical reconstruction of a 3D object from sparse
views is an ill-posed inverse problem. These types of problems are typically
solved by utilizing prior information. Neural networks have been used for the
task of 3D reconstruction as they are capable of encoding and leveraging this
prior information. We utilize half a dozen different convolutional neural
networks to produce different 3D representations of ICF implosions from the
experimental data. We utilize deep supervision to train a neural network to
produce high resolution reconstructions. We use these representations to track
3D features of the capsules such as the ablator, inner shell, and the joint
between shell hemispheres. Machine learning, supplemented by different priors,
is a promising method for 3D reconstructions in ICF and X-ray radiography in
general.
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