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Machine Learning for Plasma Physics and Fusion Energy

Machine Learning for Plasma Physics and Fusion Energy

The ability of modern experimental and computational plasma science to generate large quantities of complex data, combined with advances in mathematics, analytics and computation, has motivated researchers to explore the application of advanced statistical techniques to problems of plasma science. Such technologies include machine learning (ML), artificial intelligence (AI), dataset generation and curation, and predictive analytics, in both experimental and simulation contexts. Additionally, increased emphasis on ML and related technologies from funding agencies and the continued growth in general scientific machine learning has led to significant interest and activity within the plasma science community. This special issue collects numerous contributions to the Mini-conference on Machine Learning, Data Science, and Artificial Intelligence in Plasma Research from the 63rd Annual Meeting of the APS Division of Plasma Physics, as well as other contributed manuscripts.

Submission deadline: 31 May 2022

Special Issue Editor

Bill Dorland, University of Maryland


Communicating Scientists

Jeph Wang, Los Alamos National Laboratory

Ralph Kube, Princeton Plasma Physics Laboratory

Luc Peterson, Lawrence Livermore National Laboratory

Cristina Rea, Massachusetts Institute of Technology


Research Article