Data-driven Science and Machine Learning Methods in Laser-Plasma Physics
- URL: http://arxiv.org/abs/2212.00026v2
- Date: Wed, 24 May 2023 08:15:05 GMT
- Title: Data-driven Science and Machine Learning Methods in Laser-Plasma Physics
- Authors: Andreas D\"opp, Christoph Eberle, Sunny Howard, Faran Irshad, Jinpu
Lin and Matthew Streeter
- Abstract summary: Recent technological improvements make it possible to gather an increasing amount of data, both in experiments and simulations.
This has sparked interest in using advanced techniques from mathematics, statistics and computer science to deal with, and benefit from, big data.
This paper aims to present an overview of relevant machine learning methods with focus on applicability to laser-plasma physics.
- Score: 4.893345190925178
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Laser-plasma physics has developed rapidly over the past few decades as
high-power lasers have become both increasingly powerful and more widely
available. Early experimental and numerical research in this field was
restricted to single-shot experiments with limited parameter exploration.
However, recent technological improvements make it possible to gather an
increasing amount of data, both in experiments and simulations. This has
sparked interest in using advanced techniques from mathematics, statistics and
computer science to deal with, and benefit from, big data. At the same time,
sophisticated modeling techniques also provide new ways for researchers to
effectively deal with situations in which still only sparse amounts of data are
available. This paper aims to present an overview of relevant machine learning
methods with focus on applicability to laser-plasma physics, including its
important sub-fields of laser-plasma acceleration and inertial confinement
fusion.
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