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This article is cited in 5 scientific papers (total in 5 papers)
Interaction of extreme light fields with matter
Using machine-learning methods for analysing the results of numerical simulation of laser-plasma acceleration of electrons
T. M. Volkova, E. N. Nerush, I. Yu. Kostyukov Federal Research Center The Institute of Applied Physics of the Russian Academy of Sciences, Nizhny Novgorod
Abstract:
Using machine-learning methods based on self-organising Kohonen maps, the results of numerical simulation of the acceleration of electrons during the interaction of high-power laser radiation with plasma are analysed and classified. The particle-in-cell (PIC) method is used to simulate the interaction in a wide range of parameters (laser intensity and plasma concentration). For each set of parameters, the spectrum of accelerated electrons is found, based on which the charge, average energy, and relative energy spread of accelerated electrons are calculated. Using the obtained values as input parameters of the map, the classification of various acceleration regimes is performed. The developed scheme can be used to identify the optimal acceleration regimes under more realistic conditions, considering a larger number of parameters.
Keywords:
laser plasma, plasma acceleration methods, particle-incell numerical simulation, machine-learning methods, neural networks, self-organising Kohonen maps.
Received: 15.04.2021 Revised: 08.07.2021
Citation:
T. M. Volkova, E. N. Nerush, I. Yu. Kostyukov, “Using machine-learning methods for analysing the results of numerical simulation of laser-plasma acceleration of electrons”, Kvantovaya Elektronika, 51:9 (2021), 854–860 [Quantum Electron., 51:9 (2021), 854–860]
Linking options:
https://www.mathnet.ru/eng/qe17900 https://www.mathnet.ru/eng/qe/v51/i9/p854
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Abstract page: | 101 | Full-text PDF : | 17 | References: | 19 | First page: | 5 |
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