Machine learning-based analysis of experimental electron beams and gamma energy distributions
M. Yadav, M. Oruganti, S. Zhang, B. Naranjo, G. Andonian, Y. Zhuang,, \"O. Apsimon, C. P. Welsch, and J. B. Rosenzweig

TL;DR
This paper compares multiple data analysis methods, including neural networks, maximum likelihood estimation, and hybrid approaches, to reconstruct electron beam and photon energy distributions from experimental data in high-energy physics.
Contribution
It introduces a hybrid ML-MLE method for more reliable reconstruction of beam and photon properties in high-field experiments.
Findings
Hybrid ML-MLE approach is most effective and generalizable.
Machine learning models perform well even with noisy data.
QR decomposition is useful for high-energy photon analysis.
Abstract
The photon flux resulting from high-energy electron beam interactions with high field systems, such as in the upcoming FACET-II experiments at SLAC National Accelerator Laboratory, may give deep insight into the electron beam's underlying dynamics at the interaction point. Extraction of this information is an intricate process, however. To demonstrate how to approach this challenge with modern methods, this paper utilizes data from simulated plasma wakefield acceleration-derived betatron radiation experiments and high-field laser-electron-based radiation production to determine reliable methods of reconstructing key beam and interaction properties. For these measurements, recovering the emitted 200 keV to 10 GeV photon energy spectra from two advanced spectrometers now being commissioned requires testing multiple methods to finalize a pipeline from their responses to incident electron…
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Taxonomy
TopicsGamma-ray bursts and supernovae · Astrophysics and Cosmic Phenomena · Ionosphere and magnetosphere dynamics
