Bulletin of the American Physical Society
65th Annual Meeting of the APS Division of Plasma Physics
Monday–Friday, October 30–November 3 2023; Denver, Colorado
Session CP11: Poster Session II:
Machine learning in fundamental, low temperature, HED, and beams
Science Education, Public Engagement and DEI
High School
Undergraduate
2:00 PM - 5:00 PM
Monday, October 30, 2023
Room: Plaza ABC
Abstract: CP11.00009 : Machine Learning-based Diagnostics Optimization
Presenter:
Mariana Alvarado Alvarez
(Los Alamos National Laboratory)
Authors:
Mariana Alvarado Alvarez
(Los Alamos National Laboratory)
Bradley T Wolfe
(Los Alamos National Laboratory)
Tim Wong
(Los Alamos National Laboratory)
Steven H Batha
(Los Alamos Natl Lab)
David P Broughton
(Los Alamos National Laboratory)
Chengkun Huang
(Los Alamos Natl Lab)
Robert E Reinovsky
(Los Alamos Natl Lab)
Jeph Wang
(Los Alamos National Laboratory)
To demonstrate this capability, we propose to optimize a Filter Stack Spectrometer (FSS) using ML. Each stack consists of 10 to 20 filters of varying materials and thicknesses, so the large parameter combination space is representative of the problem discussed here.
The optimization consists of three steps: generating synthetic data from experimental conditions for a given FSS design with a forward model; training a neural network (NN) architecture to reconstruct the experimental conditions from synthetic data; and performing an optimization search loop driven by the reconstruction errors of the NN architecture.
Here we present the results of training a NN based on the Transformer architecture [1] using synthetic data from an established forward model. The trained NN will be later incorporated in an optimization loop performed by ML algorithms such as a genetic algorithm and a generative model with deep reinforcement learning. These algorithms have demonstrated to be effective in similar optimizations [2], in wavefront optimization for coherent control of plasma dynamics [3], and in novel molecule design [4].
References
[1] A. Vaswani et al., Advances in Neural Information Processing Systems 30, (2017).
[2] Honghu Song et al., 2023 JINST 18 P03012.
[3] He, Z.-H. et al., Nature Communications 6:7156
[4] Popova et al., Sci. Adv. 2018;4:eaap7885
Follow Us |
Engage
Become an APS Member |
My APS
Renew Membership |
Information for |
About APSThe American Physical Society (APS) is a non-profit membership organization working to advance the knowledge of physics. |
© 2024 American Physical Society
| All rights reserved | Terms of Use
| Contact Us
Headquarters
1 Physics Ellipse, College Park, MD 20740-3844
(301) 209-3200
Editorial Office
100 Motor Pkwy, Suite 110, Hauppauge, NY 11788
(631) 591-4000
Office of Public Affairs
529 14th St NW, Suite 1050, Washington, D.C. 20045-2001
(202) 662-8700