Ultrafast Silicon/Graphene Optical Nonlinear Activator for Neuromorphic Computing

Ziwen Zhou, Chen Liu, Weiwei Zhao, Jingze Liu, Ting Jiang, Wenyi Peng, Jiawang Xiong, Hao Wu, Chi Zhang, Yunhong Ding, Francesco Da Ros, Xingyuan Xu, Kun Xu, Siqi Yan, Ming Tang

Research output: Contribution to journalJournal articleResearchpeer-review

Abstract

Optical neural networks (ONNs) have shown great promise in overcoming the speed and efficiency bottlenecks of artificial neural networks. However, the absence of high-speed, energy-efficient nonlinear activators significantly impedes the advancement of ONNs and their extension to ultrafast application scenarios like real-time intelligent signal processing. In this work, a novel silicon/graphene ultrafast all-optical nonlinear activator, leveraging the hybrid integration of silicon slot waveguides, plasmonic slot waveguides, and monolayer graphene is demonstrated. Exploiting the exceptional picosecond-scale photogenerated carrier relaxation time of graphene, the response time of the activator is markedly reduced to ≈93.6 ps, establishing all-optical activator as the fastest known in silicon photonics to knowledge. Moreover, the all-optical nonlinear activator holds a low threshold power of 5.49 mW and a corresponding power consumption per activation of 0.51 pJ. Its feasibility and capability for use in ONNs, manifesting performance comparable with commonly used activation functions are experimentally confirmed. This breakthrough in speed and energy efficiency of all-optical nonlinear activators opens the door to significant improvements in the performance and applicability of ONNs.
Original languageEnglish
Article number2401686
JournalAdvanced Optical Materials
Volume12
Issue number34
ISSN2195-1071
DOIs
Publication statusPublished - 2024

Keywords

  • Graphene silicon hybrid integration
  • Nonlinear activator
  • Optical neuron network
  • Slot waveguide

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