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首页> 外文期刊>IEICE Communications Express >Experimental demonstration of SPM compensation using a complex-valued neural network for 40-Gbit/s optical 16QAM signals
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Experimental demonstration of SPM compensation using a complex-valued neural network for 40-Gbit/s optical 16QAM signals

机译:使用复值神经网络对40 Gbit / s 16QAM光学信号进行SPM补偿的实验演示

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摘要

We experimentally demonstrate a novel nonlinearity-mitigation scheme based on a complex-valued neural network (CVNN) which is constructed by artificial neurons with complex-valued input and output. The in-phase (I) and quadrature (Q) components of optical signal are operated as complex values in the CVNN. A 40-Gbit/s optical 16QAM signal distorted by SPM was successfully compensated, improving error vector magnitude (EVM) by about 15%. The learning speed of the nonlinear equalizer was improved by using the CVNN, compared with conventional real-valued neural network (RVNN). Furthermore, the study show that CVNN has the potential to improve the computational complexity of RVNN.
机译:我们通过实验证明了一种基于复杂值神经网络(CVNN)的新型非线性缓解方案,该方案由具有复杂值输入和输出的人工神经元构造而成。光信号的同相(I)和正交(Q)分量在CVNN中作为复数值运行。通过SPM失真的40 Gbit / s光学16QAM信号已得到成功补偿,从而将误差矢量幅度(EVM)提高了约15%。与传统的实值神经网络(RVNN)相比,使用CVNN提高了非线性均衡器的学习速度。此外,研究表明,CVNN具有提高RVNN的计算复杂度的潜力。

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