Experimental Study of Deep Neural Network Equalizers Performance in Optical Links
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equalizerapproacheschannelconvolutional-recurrentdeepdemonstratedp-16qamequalizers
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We propose a convolutional-recurrent channel equalizer and experimentally demonstrate 1dB Q-factor improvement both in single-channel and 96 x WDM, DP-16QAM transmission over 450km of TWC fiber. The new equalizer outperforms previous NN-based approaches and a 3-steps-per-span DBP.
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