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A Deep Reinforcement Learning Algorithm for Smart Control of Hysteresis Phenomena in a Mode-Locked Fiber Laser

Alexey Kokhanovskiy, Alexey Shevelev, Kirill Serebrennikov, Evgeny Kuprikov, Sergei K. Turitsyn

2022Photonics15 citationsDOIOpen Access PDF

Abstract

We experimentally demonstrate the application of a double deep Q-learning network algorithm (DDQN) for design of a self-starting fiber mode-locked laser. In contrast to the static optimization of a system design, the DDQN reinforcement algorithm is capable of learning the strategy of dynamic adjustment of the cavity parameters. Here, we apply the DDQN algorithm for stable soliton generation in a fiber laser cavity exploiting a nonlinear polarization evolution mechanism. The algorithm learns the hysteresis phenomena that manifest themselves as different pumping-power thresholds for mode-locked regimes for diverse trajectories of adjusting optical pumping.

Topics & Concepts

Reinforcement learningFiber laserComputer scienceNonlinear systemHysteresisLaserPolarization (electrochemistry)Control theory (sociology)OpticsMaterials sciencePhysicsArtificial intelligenceControl (management)ChemistryPhysical chemistryQuantum mechanicsAdvanced Fiber Laser TechnologiesPhotonic and Optical DevicesAdvanced Fiber Optic Sensors
A Deep Reinforcement Learning Algorithm for Smart Control of Hysteresis Phenomena in a Mode-Locked Fiber Laser | Litcius