26–27 Sept 2022
DESY Hamburg
Europe/Berlin timezone

Surrogate Modeling of Laser-Plasma Acceleration

Not scheduled
20m
Foyer of the Central Library / Building 04.7 (Forschungszentrum Jülich)

Foyer of the Central Library / Building 04.7

Forschungszentrum Jülich

Poster without speed talk Accelerator Research and Development Conference Dinner with Poster exhibit

Speaker

Manuel Kirchen (MLS (Laser fuer Plasmabeschleunigung))

Description

Laser-plasma acceleration (LPA) promises compact sources of high-brightness electron beams for science and industry. However, transforming LPA into a technology to drive real-world applications remains a challenge. Machine learning techniques could prove decisive in further understanding and improving the performance of these machines. Here, we discuss the application of supervised learning to create surrogate models of the LPA process at LUX. Using simulated and experimental data, we train artificial neural networks to predict the electron beam quality as a function of the drive laser properties. Of the many potential applications of such models, we emphasize their use to study the influence of laser fluctuations on the electron beam stability.

Primary author

Manuel Kirchen (MLS (Laser fuer Plasmabeschleunigung))

Co-authors

Soeren Jalas (UNI/EXP (Uni Hamburg, Institut fur Experimentalphysik)) Frida Brogren (MLS (Laser fuer Plasmabeschleunigung)) Andreas Maier (MLS (Laser fuer Plasmabeschleunigung))

Presentation materials

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