• 文献标题:   An ITO-graphene heterojunction integrated absorption modulator on Si-photonics for neuromorphic nonlinear activation
  • 文献类型:   Article
  • 作  者:   AMIN R, GEORGE JK, WANG H, MAITI R, MA ZZ, DALIR H, KHURGIN JB, SORGER VJ
  • 作者关键词:  
  • 出版物名称:   APL PHOTONICS
  • ISSN:   2378-0967
  • 通讯作者地址:  
  • 被引频次:   9
  • DOI:   10.1063/5.0062830
  • 出版年:   2021

▎ 摘  要

The high demand for machine intelligence of doubling every three months is driving novel hardware solutions beyond charging of electrical wires, given a resurrection to application specific integrated circuit (ASIC)-based accelerators. These innovations include photonic-based ASICs (P-ASICs) due to prospects of performing optical linear (and also nonlinear) operations, such as multiply-accumulate for vector matrix multiplications or convolutions, without iterative architectures. Such photonic linear algebra enables picosecond delay when photonic integrated circuits are utilized via "on-the-fly" mathematics. However, the neuron's full function includes providing a nonlinear activation function, known as thresholding, to enable decision making on inferred data. Many P-ASIC solutions perform this nonlinearity in the electronic domain, which brings challenges in terms of data throughput and delay, thus breaking the optical link and introducing increased system complexity via domain crossings. This work follows the notion of utilizing enhanced light-matter interactions to provide efficient, compact, and engineerable electro-optic neuron nonlinearity. Here, we introduce and demonstrate a novel electro-optic device to engineer the shape of this optical nonlinearity to resemble a leaky rectifying linear unit-the most commonly used nonlinear activation function in neural networks. We combine the counter-directional transfer functions from heterostructures made out of two electro-optic materials to design a diode-like nonlinear response of the device. Integrating this nonlinearity into a photonic neural network, we show how the electrostatics of this thresholder's gating junction improves machine learning inference accuracy and the energy efficiency of the neural network. (c) 2021 Author(s). All article content, except where otherwise noted, is licensed under a Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).