Litcius/Paper detail

Data-driven model discovery of ideal four-wave mixing in nonlinear fibre optics

Andrei Ermolaev, Anastasiia Sheveleva, Goëry Genty, Christophe Finot, John M. Dudley

2022Scientific Reports30 citationsDOIOpen Access PDF

Abstract

We show using numerical simulations that data driven discovery using sparse regression can be used to extract the governing differential equation model of ideal four-wave mixing in a nonlinear Schrödinger equation optical fibre system. Specifically, we consider the evolution of a strong single frequency pump interacting with two frequency detuned sidebands where the dynamics are governed by a reduced Hamiltonian system describing pump-sideband coupling. Based only on generated dynamical data from this system, sparse regression successfully recovers the underlying physical model, fully capturing the dynamical landscape on both sides of the system separatrix. We also discuss how analysing an ensemble over different initial conditions allows us to reliably identify the governing model in the presence of noise. These results extend the use of data driven discovery to ideal four-wave mixing in nonlinear Schrödinger equation systems.

Topics & Concepts

Mixing (physics)Nonlinear systemSidebandPhysicsIdeal (ethics)Hamiltonian (control theory)Dynamical systems theoryStatistical physicsCoupling (piping)Nonlinear Schrödinger equationComputer scienceMathematicsQuantum mechanicsMathematical optimizationPhilosophyEngineeringMicrowaveMechanical engineeringEpistemologyAdvanced Fiber Laser TechnologiesModel Reduction and Neural NetworksNonlinear Photonic Systems