85-GHz photonics W-band IM/DD PAM4 wireless transmission over 300 m based on nonlinear U-net symmetrical encoder-decoder equalizer

We propose a nonlinear U-Net equalizer based on a fully convolutional neural network for radio-over-fiber (ROF) communication systems. The U-Net encoder generates numerous feature channels through multi-layer downsampling, effectively extracting and transmitting deep temporal information. The symmet...

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Veröffentlicht in:Optics communications Jg. 577; S. 131423
Hauptverfasser: Zhang, Jie, Zhou, Wen, Bian, Chengzhen, Ge, Jingtao, Xu, Sicong, Ma, Yuan, Wang, Qihang, Wang, Siqi, Ou, Zhihang, Hu, Sheng
Format: Journal Article
Sprache:Englisch
Veröffentlicht: Elsevier B.V 01.03.2025
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ISSN:0030-4018
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Zusammenfassung:We propose a nonlinear U-Net equalizer based on a fully convolutional neural network for radio-over-fiber (ROF) communication systems. The U-Net encoder generates numerous feature channels through multi-layer downsampling, effectively extracting and transmitting deep temporal information. The symmetric decoder side uses corresponding upsampling steps to restore resolution, ensuring that the output has the same size as the input, thus generating equalization for each symbol. To mitigate the spatial information loss caused by downsampling, U-Net introduces skip connections, ensuring that the upsampled feature maps retain more shallow temporal information. The symmetric structure facilitates a more balanced transmission of information, achieving equilibrium between global and local information, as well as deep and shallow features. By using our proposed U-Net equalizer, we experimentally demonstrated single-channel 4G baud 85 GHz PAM4 signal transmission over a 300-m wireless link, and its bit error rate (BER) is below the 7% hard-decision forward error correction (HD-FEC) threshold of 3.8 × 10−3. Experimental results show that compared to Volterra and other neural networks, the U-Net equalizer reduces the BER by 42%, reduces computational complexity by 57%, parameters by 13%, and training data size by 8%. To the best of our knowledge, this is the first time such a novel U-Net equalizer in ROF system has been proposed. Its high precision, low complexity, and reduced training data requirements make this equalizer highly promising for future millimeter-wave communication development and applications.
ISSN:0030-4018
DOI:10.1016/j.optcom.2024.131423