posted on 2023-11-30, 06:17authored byJonathan George, Armin Mehrabian, Rubab Amin, Jiawei Meng, Thomas Ferreira de Lima, Alexander N. Tait, Bhavin J. Shastri, Tarek El-Ghazawi, Paul R. Prucnal, Volker J. Sorger
Photonic neural networks benefit from both the high channel capacity- and the wave nature of light acting as an effective weighting mechanism through linear optics. The neuron's activation function, however, requires nonlinearity which can be achieved either through nonlinear optics or electro-optics. Nonlinear optics, while potentially faster, is challenging at low optical power. With electro-optics, a photodiode integrating the weighted products of a photonic perceptron can be paired directly to a modulator, which creates a nonlinear transfer function for efficient operating. Here we model the activation functions of five types of electro-absorption modulators, analyze their individual performance over varying performance parameters, and simulate their combined effect on the inference of the neural network
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