Nature Communications (Nov 2023)

Prediction on X-ray output of free electron laser based on artificial neural networks

  • Kenan Li,
  • Guanqun Zhou,
  • Yanwei Liu,
  • Juhao Wu,
  • Ming-fu Lin,
  • Xinxin Cheng,
  • Alberto A. Lutman,
  • Matthew Seaberg,
  • Howard Smith,
  • Pranav A. Kakhandiki,
  • Anne Sakdinawat

DOI
https://doi.org/10.1038/s41467-023-42573-z
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 9

Abstract

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Abstract Knowledge of x-ray free electron lasers’ (XFELs) pulse characteristics delivered to a sample is crucial for ensuring high-quality x-rays for scientific experiments. XFELs’ self-amplified spontaneous emission process causes spatial and spectral variations in x-ray pulses entering a sample, which leads to measurement uncertainties for experiments relying on multiple XFEL pulses. Accurate in-situ measurements of x-ray wavefront and energy spectrum incident upon a sample poses challenges. Here we address this by developing a virtual diagnostics framework using an artificial neural network (ANN) to predict x-ray photon beam properties from electron beam properties. We recorded XFEL electron parameters while adjusting the accelerator’s configurations and measured the resulting x-ray wavefront and energy spectrum shot-to-shot. Training the ANN with this data enables effective prediction of single-shot or average x-ray beam output based on XFEL undulator and electron parameters. This demonstrates the potential of utilizing ANNs for virtual diagnostics linking XFEL electron and photon beam properties.