4.6 Article

Adaptive Bayesian neural networks nonlinear equalizer in a 300-Gbit/s PAM8 transmission for IM/DD OAM mode division multiplexing

Journal

OPTICS LETTERS
Volume 48, Issue 2, Pages 464-467

Publisher

Optica Publishing Group
DOI: 10.1364/OL.480532

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This Letter proposes a Bayesian neural network (BNN) nonlinear equalizer for orbital angular momentum (OAM) mode division multiplexing (MDM) transmission. The BNN equalizer, with probability distributions for weights and biases, effectively mitigates nonlinear distortions and improves system complexity compared to conventional Volterra and convolutional neural network (CNN) equalizers. Experimental results show that the BNN equalizer outperforms the Volterra and CNN equalizers, achieving receiver sensitivity improvements of 1.0 dBm and 2.5 dBm, respectively, and is a promising solution for high-capacity inter-data center interconnects.
The strong stochastic nonlinear impairment induced by random mode coupling appears to be a long-standing performance-limiting problem in the orbital angular momentum (OAM) mode division multiplexing (MDM) of intensity modulation direct detection (IM/DD) transmission systems. In this Letter, we propose a Bayesian neural net-work (BNN) nonlinear equalizer for an OAM-MDM IM/DD transmission with three modes. Unlike conventional Volterra and convolutional neural network (CNN) equalizers with fixed weight coefficients, the weights and biases of the BNN nonlinear equalizer are regarded as probability distribu-tions, which can accurately match the stochastic nonlinear model of the OAM-MDM. The BNN nonlinear equalizer is capable of adaptively updating its weights and biases sample -by-sample, according to the probability distribution. An experiment was conducted on a 300-Gbit/s PAM8 signal with three modes over a 2.6-km OAM-MDM RCF transmission. The experimental results demonstrate that the proposed BNN nonlinear equalizer exhibits promising solutions to effectively mitigate nonlinear distortions, which outperforms conventional Volterra and CNN equalizers with receiver sen-sitivity improvements of 1.0 dBm and 2.5 dBm, respectively, under hard-decision forward error correction (HD-FEC) thresholds. Moreover, compared with the Volterra and CNN equalizers, the complexity of the OAM-MDM is significantly improved through the BNN nonlinear equalizer. The pro-posed BNN nonlinear equalizer is a promising candidate for the high capacity inter-data center interconnects.(c) 2023 Optica Publishing Group

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