Mixed Diagnostics for Longitudinal Properties of Electron Bunches in a
Free-Electron Laser
- URL: http://arxiv.org/abs/2201.05769v1
- Date: Sat, 15 Jan 2022 06:32:48 GMT
- Title: Mixed Diagnostics for Longitudinal Properties of Electron Bunches in a
Free-Electron Laser
- Authors: J. Zhu, N. M. Lockmann, M. K. Czwalinna, H. Schlarb
- Abstract summary: Longitudinal properties of electron bunches are critical for the performance of a wide range of scientific facilities.
We leverage the power of artificial intelligence to build a neural network model using experimental data.
We propose a way to significantly improve the CTR spectrometer online measurement by combining the predicted and measured spectra.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Longitudinal properties of electron bunches are critical for the performance
of a wide range of scientific facilities. In a free-electron laser, for
example, the existing diagnostics only provide very limited longitudinal
information of the electron bunch during online tuning and optimization. We
leverage the power of artificial intelligence to build a neural network model
using experimental data, in order to bring the destructive longitudinal phase
space (LPS) diagnostics online virtually and improve the existing current
profile online diagnostics which uses a coherent transition radiation (CTR)
spectrometer. The model can also serve as a digital twin of the real machine on
which algorithms can be tested efficiently and effectively. We demonstrate at
the FLASH facility that the encoder-decoder model with more than one decoder
can make highly accurate predictions of megapixel LPS images and coherent
transition radiation spectra concurrently for electron bunches in a bunch train
with broad ranges of LPS shapes and peak currents, which are obtained by
scanning all the major control knobs for LPS manipulation. Furthermore, we
propose a way to significantly improve the CTR spectrometer online measurement
by combining the predicted and measured spectra. Our work showcases how to
combine virtual and real diagnostics in order to provide heterogeneous and
reliable mixed diagnostics for scientific facilities.
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