Litcius/Paper detail

Real-time reconstruction of high energy, ultrafast laser pulses using deep learning

Matthew Stanfield, Jordan Ott, Christopher Gardner, N. F. Beier, Deano Farinella, Christopher A Mancuso, Pierre Baldi, F. Dollar

2022Scientific Reports20 citationsDOIOpen Access PDF

Abstract

We report a method for the phase reconstruction of an ultrashort laser pulse based on the deep learning of the nonlinear spectral changes induce by self-phase modulation. The neural networks were trained on simulated pulses with random initial phases and spectra, with pulse durations between 8.5 and 65 fs. The reconstruction is valid with moderate spectral resolution, and is robust to noise. The method was validated on experimental data produced from an ultrafast laser system, where near real-time phase reconstructions were performed. This method can be used in systems with known linear and nonlinear responses, even when the fluence is not known, making this method ideal for difficult to measure beams such as the high energy, large aperture beams produced in petawatt systems.

Topics & Concepts

Ultrashort pulseOpticsFluenceLaserPulse (music)Phase (matter)Computer scienceEnergy (signal processing)Nonlinear systemNoise (video)Pulse shapingPhysicsArtificial intelligenceImage (mathematics)Quantum mechanicsDetectorLaser-Plasma Interactions and DiagnosticsLaser-Matter Interactions and ApplicationsAdvanced Fiber Laser Technologies