神经形态工程学
MNIST数据库
光子学
等离子体子
调制(音乐)
计算机科学
实现(概率)
材料科学
纳米技术
电子工程
记忆电阻器
纳米尺度
人工神经网络
光电子学
人工智能
物理
工程类
声学
统计
数学
作者
Kevin Portner,Manuel Schmuck,Paul Lehmann,Christoph Weilenmann,Christian Haffner,Ping Ma,J. Leuthold,Mathieu Luisier,Alexandros Emboras
出处
期刊:ACS Nano
[American Chemical Society]
日期:2021-08-30
卷期号:15 (9): 14776-14785
被引量:45
标识
DOI:10.1021/acsnano.1c04654
摘要
The typically nonlinear and asymmetric response of synaptic memristors to positive and negative electrical pulses makes the realization of accurate deep neural networks very challenging. Here, we integrate a two-terminal valence change memory (VCM) into a photonic/plasmonic circuit and show that the switching properties of this memristor become more gradual and symmetric under light irradiation. The added optical input acts on the VCM as a third, independent modulation channel. It locally heats the active area of the device, which enhances the generation of oxygen vacancies and broadens the resulting nanoscale conductive filaments. The measured conductance modulation of the VCM is then inserted into a neural network simulator. Using the MNIST data set of handwritten digits as an application, a light-enhanced recognition accuracy of 93.53% is demonstrated, similar to ideally performing memristors (94.86%) and much higher than those without light (67.37%). Notably, the optical signal does not increase the overall energy consumption by more than 3.2%. Finally, an approach to scale up our electro-optical technology is proposed, which could allow high-density, energy-efficient neuromorphic computing chips.
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