Machine-learning based X-ray spectrometer for High Repetition Rate Analysis of Betatron Radiation
ORAL
Abstract
Betatron radiation produced from a laser-wakefield accelerator is a broadband, hard X-ray (> 1 keV) source that has widely been used in a variety of applications including high resolution imaging and ultrafast spectroscopy. The characterization of betatron radiation is typically performed using X-ray filter packs (XFP), which consist of filters made of multiple materials and thicknesses. The standard analysis procedure utilizes a minimization algorithm that can require several seconds to reconstruct a single spectrum, and is therefore not feasible for real-time analysis of betatron X-ray sources at high repetition rate (> 1 Hz). We present the development deep learning algorithm for the analysis of an XFP spectrometer. The algorithm was developed using PyTorch with a training set of >10000 synthetic XFP images consisting of copper and aluminum filters. We discuss our progress towards fielding the deep learning algorithm for on-line source characterization at the Institut National de la Recherche Scientifique’s Advanced Laser Light Source.
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Presenters
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Nicholas F Beier
University of Alberta
Authors
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Nicholas F Beier
University of Alberta
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Vigneshvar Senthilkumaran
University of Alberta
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Shubho Mohajan
Univ of Alberta
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Ester Kriz
McGill University
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Ghassan Zeraouli
Colorado State University, Lawrence Livermore National Laboratory, Colorado State University
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Sylvain Fourmaux
INRS-EMT, Institut National de la Recherche Scientifique– Énergie Matériaux et Télécommunications (INRS-EMT), INRS - Energie et Materiaux
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Francois Legare
INRS - Energie et Materiaux
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Tammy Ma
Lawrence Livermore Natl Lab
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Amina E Hussein
University of Alberta, Canada, Univ of Alberta