2024
DOI: 10.1107/s1600577524003850
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Automated spectrometer alignment via machine learning

Peter Feuer-Forson,
Gregor Hartmann,
Rolf Mitzner
et al.

Abstract: During beam time at a research facility, alignment and optimization of instrumentation, such as spectrometers, is a time-intensive task and often needs to be performed multiple times throughout the operation of an experiment. Despite the motorization of individual components, automated alignment solutions are not always available. In this study, a novel approach that combines optimisers with neural network surrogate models to significantly reduce the alignment overhead for a mobile soft X-ray spectrometer is p… Show more

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