具有电光吸收调制器的神经网络激活函数

J. George, A. Mehrabian, R. Amin, P. Prucnal, T. El-Ghazawi, V. Sorger
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引用次数: 5

摘要

神经网络既需要输入的权重,也需要一个非线性激活函数对其和进行操作。神经网络加权在干涉波分复用和环波分复用集成光子学中得到了应用。光学中的直接非线性很难在没有高光功率的情况下实现,而电光非线性可以通过直接耦合光电二极管和电光调制器来实现。直接耦合组件的低电容导致工作速度>10 GHz,功耗相对较低。在这里,我们提出了石墨烯和量子阱电光吸收调制器电容耦合到光电二极管所产生的激活函数的封闭形式方程。我们基于调制器几何和热噪声的分析表明,这种电光神经元产生的信噪比约为60。在具有这些电光节点的前馈神经网络上进行MNIST分类推理测试,QW和石墨烯调制器的激光功率水平分别为5mW和20mW,准确率约为95%。我们的研究结果显示了使用电光模拟(非尖峰)神经元的未来光学和光子神经网络的实际操作性能区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Network Activation Functions with Electro-Optic Absorption Modulators
Neural networks require both a weighting of inputs and a nonlinear activation function operating on their sum. Neural network weighting has been demonstrated in integrated photonics with both interferometric and ring-based wavelength division multiplexing. While direct nonlinearity in optics is difficult to achieve without high optical powers, an electro-optic nonlinearity can be created by directly coupling a photodiode to electro-optic modulator. The low capacitance of directly coupling the components results in operating speeds >10 GHz with relatively low power consumption. Here we present a closed form equation for the activation functions created by graphene and quantum well electro-optic absorption modulators capacitively coupled to photodiodes. Our modulator-geometry based and thermal-noise analysis shows that such electro-optic neurons produce SNRs around 60. Performing an MNIST classification inference test on a feed-forward neural network with these electrooptic nodes, with accuracies of about 95% starting a laser power level around 5mW and 20mW for the QW and Graphene-based modulator, respectively. Our findings show regions of realistic operating performance of future optical and photonic neural networks using electro-optic analogue (non-spiking)neurons.
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