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 UP11: Poster Session VIII:
HED:High Energy Density Plasma Science
MFE: Superconducting Tokamaks; Self-organized configurations II: FRC, RFP, Spheromak; Machine learning techniques in MFE
ICF: Machine learning techniques in ICF
2:00 PM - 5:00 PM
Thursday, November 2, 2023
Room: Plaza ABC
Abstract: UP11.00109 : Exploration of Language Models for ICF Design
Presenter:
Cabot C Cullen
(Los Alamos National Laboratory)
Authors:
Cabot C Cullen
(Los Alamos National Laboratory)
Shanny Lin
(Los Alamos National Laboratory)
Christopher Campbell
(Los Alamos National Laboratory)
Miles Teng-Levy
(Los Alamos National Laboratory)
Zhehui Wang
(LANL)
Eric N Loomis
(Los Alamos Natl Lab)
Determining particle distributions in phase space is an important problem in ICF and plasma physics. If the phase space distribution of a physical system such as an imploding plasma can be determined, then other physical properties can be readily calculated. A straightforward approach is to start with a known distribution of particles and simulate their evolution. However, for a system of many particles, such computations may be NP hard (a popular computer science term which means Non-deterministic Polynomial-time hard). Neural networks may be used as an alternative method to direct first-principles simulation. A neural network is trained on datasets which capture essential information including experimental data. Once the network is trained, it can make predictions based on new data. Here we explore a relatively new and powerful neural network called language models for ICF experimental design. Language models such as ChatGPT have shown an ability to learn language patterns. By training a model on established information and data, we seek to identify patterns in phase space that amount to a high level of scientific understanding. Specializing a model or an AI on specific research areas may also be more effective than more general Large Language Models such as ChatGPT. The specialized language model will be applied to ICF experimental design. Another purpose of the study is to see if by using the ICF-specific language model, humans can better understand the problems that arise in ICF design.
LANL LA-UR-23-26652
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