Using machine learning to predict dinitrogen molecule density by analyzing transient-dependent nonlinear pulse propagation in an air-filled hollow core photonic crystal fiber
R E Jimenez-Mejia,
Carlos Alvarez Ocampo,
Rodrigo Acuna Herrera
Abstract:Pulse propagation in air-filled hollow core photonic crystal fibers has been well investigated within the last decade to generate nonlinear phenomena such as pulse compression, frequency conversion,
supercontinuum generation, among others, in a highly reliable and reproducible manner.
In this work, we extend the analysis to take into account the recently evidenced pulse-width dependency of the nonlinear refraction index of air and the effects of the molecular composition of air. Our study focus… Show more
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