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Experimental control of mode-competition dynamics in a chaotic multimode semiconductor laser for decision making (2312.16798v1)

Published 28 Dec 2023 in physics.optics and nlin.CD

Abstract: Photonic computing has been widely used to accelerate the computational performance in machine learning. Photonic decision-making is a promising approach that uses photonic computing technologies to solve the multi-armed bandit problem based on reinforcement learning. Photonic decision making using chaotic mode competition dynamics has been proposed. However, the experimental conditions for achieving superior decision-making performance have not yet been established. In this study, we experimentally investigate the mode competition dynamics in a chaotic multimode semiconductor laser in the presence of optical feedback and injection. We control chaotic mode-competition dynamics via optical injection, and we found that positive wavelength detuning results in an efficient mode concentration to one of the longitudinal modes with a small optical injection power. We experimentally investigate two-dimensional bifurcation map of the laser dynamics of the total intensity. Complex mixed dynamics are observed in the presence of optical feedback and injection. We experimentally conduct decision making to solve the bandit problem using chaotic mode-competition dynamics. A fast mode concentration property is observed at positive wavelength detuning, which resulted in a fast convergence of the correct decision rate. Our findings could be useful in accelerating the decision-making performance in adaptive optical networks using reinforcement learning.

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