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首页> 外文期刊>Journal of Lightwave Technology >Compressed Neural Network Equalization Based on Iterative Pruning Algorithm for 112-Gbps VCSEL-Enabled Optical Interconnects
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Compressed Neural Network Equalization Based on Iterative Pruning Algorithm for 112-Gbps VCSEL-Enabled Optical Interconnects

机译:基于迭代修剪算法的112-GBPS VCSEL的光学互连压缩神经网络均衡

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摘要

Advanced nonlinear digital signal processing technologies, which bring significant performance gain for high-speed optical interconnects, are highly constrained by huge complexity in the actual deployment. Fully connected neural network-based equalizer has shown powerful efficacy to deal with the complex linear and nonlinear impairments for VCSEL-enabled multi-mode optical interconnects, but it also contains a number of redundancies with little impact on performance improvement. In this article, we experimentally demonstrate a compressed neural network equalization using the iterative pruning algorithm for 112-Gbps VCSEL-enabled PAM-4 and PAM-8 transmissions over 100-m MMF. We also study the impact of threshold and pruning span on the performance of proposed algorithms. The results show up to 71% connection compression by use of the iterative pruning algorithms and maximum 28.4% improvement compared with the one-shot pruning algorithm.
机译:高级非线性数字信号处理技术,为高速光学互连带来显着的性能增益,在实际部署中受到巨大复杂性的高度约束。完全连接的神经网络的均衡器已经显示出强大的功效,以处理支持VCSEL的多模式光学互连的复杂线性和非线性损伤,但它还包含许多对性能改进影响的冗余。在本文中,我们通过以超过100MMMF的PAM-4和PAM-8传输进行了针对112 Gbps VCSEL的PAM-4和PAM-8传输进行了压缩的神经网络均衡。我们还研究了阈值和修剪跨度对所提出的算法性能的影响。与单次修剪算法相比,通过使用迭代修剪算法和最大改善最高可达71%的连接压缩和最大的28.4%。

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