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Purifying Electron Spectra from Noisy Pulses with Machine Learning Using Synthetic Hamilton Matrices

Sajal Kumar Giri, Ulf Saalmann, Jan M. Rost

2020Physical Review Letters23 citationsDOIOpen Access PDF

Abstract

Photoelectron spectra obtained with intense pulses generated by free-electron lasers through self-amplified spontaneous emission are intrinsically noisy and vary from shot to shot. We extract the purified spectrum, corresponding to a Fourier-limited pulse, with the help of a deep neural network. It is trained on a huge number of spectra, which was made possible by an extremely efficient propagation of the Schrödinger equation with synthetic Hamilton matrices and random realizations of fluctuating pulses. We show that the trained network is sufficiently generic such that it can purify atomic or molecular spectra, dominated by resonant two- or three-photon ionization, nonlinear processes which are particularly sensitive to pulse fluctuations. This is possible without training on those systems.

Topics & Concepts

Spectral lineIonizationPulse (music)LaserPhysicsAtomic physicsArtificial neural networkElectronPhotonFourier transformNonlinear systemComputational physicsComputer scienceOpticsQuantum mechanicsArtificial intelligenceIonDetectorAdvanced X-ray Imaging TechniquesLaser-Matter Interactions and ApplicationsAdvanced Electron Microscopy Techniques and Applications