Artificial intelligence for online characterization of ultrashort X-ray free-electron laser pulses.
Kristina DingelThorsten OttoLutz MarderLars FunkeArne HeldSara SavioAndreas HansGregor HartmannDavid MeierJens ViefhausBernhard SickArno EhresmannMarkus IlchenWolfram HelmlPublished in: Scientific reports (2022)
X-ray free-electron lasers (XFELs) as the world's brightest light sources provide ultrashort X-ray pulses with a duration typically in the order of femtoseconds. Recently, they have approached and entered the attosecond regime, which holds new promises for single-molecule imaging and studying nonlinear and ultrafast phenomena such as localized electron dynamics. The technological evolution of XFELs toward well-controllable light sources for precise metrology of ultrafast processes has been, however, hampered by the diagnostic capabilities for characterizing X-ray pulses at the attosecond frontier. In this regard, the spectroscopic technique of photoelectron angular streaking has successfully proven how to non-destructively retrieve the exact time-energy structure of XFEL pulses on a single-shot basis. By using artificial intelligence techniques, in particular convolutional neural networks, we here show how this technique can be leveraged from its proof-of-principle stage toward routine diagnostics even at high-repetition-rate XFELs, thus enhancing and refining their scientific accessibility in all related disciplines.
Keyphrases
- artificial intelligence
- high resolution
- deep learning
- electron microscopy
- single molecule
- machine learning
- convolutional neural network
- big data
- dual energy
- electron transfer
- drinking water
- computed tomography
- healthcare
- social media
- molecular docking
- solar cells
- health information
- living cells
- atomic force microscopy
- clinical practice
- molecular dynamics simulations
- density functional theory
- contrast enhanced
- energy transfer