Abstract
Abstract
Free electron lasers (FELs) are used in various fields of scientific research. Programs and methods are created for their design and calibration. The development of machine learning has opened up opportunities for new methods of research and data analysis. This paper presents a technique for building a neural network for analyzing FEL parameters. We collected numerical simulation data of about 2000 configurations, found the optimal architecture and trained a neural network that can analyze several FEL configurations depending on the undulator and the electron beam parameters in a short time. This technique is capable of simulating more complex systems (FEL with helical undulators, etc.) and can be applied to facilities for their optimization.
Funder
Non-commercial Foundation for the Advancement of Science and Education INTELLECT
Subject
Condensed Matter Physics,Mathematical Physics,Atomic and Molecular Physics, and Optics
Cited by
1 articles.
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