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首页> 外文期刊>IEICE Communications Express >Activation functions of artificial-neural-network-based nonlinear equalizers for optical nonlinearity compensation
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Activation functions of artificial-neural-network-based nonlinear equalizers for optical nonlinearity compensation

机译:基于人工神经网络的光学非线性补偿的激活功能

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摘要

We investigated the performance of artificial neural network (ANN)-based nonlinear equalizers for optical nonlinearity compensation by comparing activation functions, including a sigmoid function, ReLU, and Leaky ReLU. We compared the learning speeds and compensation performances by evaluating the resulting error vector magnitudes of the compensated signals. The performance was investigated using simulated 100-km optical fiber transmission of 10-GSymbol/s 16QAM signals. When the number of hidden-layer units in the ANN was small, the sigmoid function showed better performance in learning speed than ReLU and Leaky ReLU. This point is important because the number of ANN units has to be reduced in order to improve the computational complexity of the ANN-based nonlinear equalizer.
机译:我们通过比较激活函数,包括SIGMOID函数,Relu和泄漏的Relu,研究了用于光学非线性补偿的基于人工神经网络(ANN)的非线性补偿的性能。 通过评估补偿信号的产生误差矢量幅度,比较了学习速度和补偿性能。 使用10-GSYMBOL / S 16QAM信号的模拟100 km光纤传输来研究性能。 当ANN中的隐藏层单元的数量小时,SIGMOID功能比Relu和泄漏的Relu在学习速度方面表现出更好的性能。 这一点是重要的,因为必须减少ANN单元的数量,以提高基于ANN的非线性均衡器的计算复杂性。

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