Science-based, data-driven developments in plasma processing for material synthesis and device-integration technologies
M Kambara, S Kawaguchi, HJ Lee… - Japanese Journal of …, 2022 - iopscience.iop.org
Low-temperature plasma-processing technologies are essential for material synthesis and
device fabrication. Not only the utilization but also the development of plasma-related …
device fabrication. Not only the utilization but also the development of plasma-related …
Foundations of machine learning for low-temperature plasmas: methods and case studies
Abstract Machine learning (ML) and artificial intelligence have proven to be an invaluable
tool in tackling a vast array of scientific, engineering, and societal problems. The main …
tool in tackling a vast array of scientific, engineering, and societal problems. The main …
Condensed Matter Systems Exposed to Radiation: Multiscale Theory, Simulations, and Experiment
This roadmap reviews the new, highly interdisciplinary research field studying the behavior
of condensed matter systems exposed to radiation. The Review highlights several recent …
of condensed matter systems exposed to radiation. The Review highlights several recent …
Grand challenges in low temperature plasmas
Low temperature plasmas (LTPs) enable to create a highly reactive environment at near
ambient temperatures due to the energetic electrons with typical kinetic energies in the …
ambient temperatures due to the energetic electrons with typical kinetic energies in the …
Fast dynamic 1D simulation of divertor plasmas with neural PDE surrogates
Managing divertor plasmas is crucial for operating reactor scale tokamak devices due to
heat and particle flux constraints on the divertor target. Simulation is an important tool to …
heat and particle flux constraints on the divertor target. Simulation is an important tool to …
Machine learning for advancing low-temperature plasma modeling and simulation
J Trieschmann, L Vialetto… - Journal of Micro …, 2023 - spiedigitallibrary.org
Machine learning has had an enormous impact in many scientific disciplines. It has also
attracted significant interest in the field of low-temperature plasma (LTP) modeling and …
attracted significant interest in the field of low-temperature plasma (LTP) modeling and …
Solving the Orszag–Tang vortex magnetohydrodynamics problem with physics-constrained convolutional neural networks
A Bormanis, CA Leon, A Scheinker - Physics of Plasmas, 2024 - pubs.aip.org
We study the 2D Orszag–Tang vortex magnetohydrodynamics (MHD) problem through the
use of physics-constrained convolutional neural networks (PCNNs) for forecasting the …
use of physics-constrained convolutional neural networks (PCNNs) for forecasting the …
Physics-separating artificial neural networks for predicting initial stages of Al sputtering and thin film deposition in Ar plasma discharges
T Gergs, T Mussenbrock… - Journal of Physics D …, 2023 - iopscience.iop.org
Simulations of Al thin film sputter depositions rely on accurate plasma and surface
interaction models. Establishing the latter commonly requires a higher level of abstraction …
interaction models. Establishing the latter commonly requires a higher level of abstraction …
[HTML][HTML] A multifidelity Bayesian optimization method for inertial confinement fusion design
Due to their cost, experiments for inertial confinement fusion (ICF) heavily rely on numerical
simulations to guide design. As simulation technology progresses, so too can the fidelity of …
simulations to guide design. As simulation technology progresses, so too can the fidelity of …
Coupling multi-fidelity xRAGE with machine learning for graded inner shell design optimization in double shell capsules
Bayesian optimization has shown promise for the design optimization of inertial confinement
fusion targets. Specifically, in Vazirani et al.[Phys. Plasmas 28, 122709 (2021)], optimal …
fusion targets. Specifically, in Vazirani et al.[Phys. Plasmas 28, 122709 (2021)], optimal …