Realize low-power artificial photonic synapse based on (Al,Ga)N nanowire/graphene heterojunction for neuromorphic computing

IF 5.3 1区 物理与天体物理 Q1 OPTICS APL Photonics Pub Date : 2023-07-01 DOI:10.1063/5.0152156
Min Zhou, Yukun Zhao, Xiushuo Gu, Qianyi Zhang, Jianya Zhang, Min Jiang, Shulong Lu
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Abstract

The fast development of brain-inspired neuromorphic computing systems has stimulated urgent requirements for artificial synapses with low-power consumption. In this work, a photonic synaptic device based on (Al,Ga)N nanowire/graphene heterojunction has been proposed and demonstrated successfully. In the artificial synaptic device, the incident light, the nanowire/graphene heterojunction, and the light-generated carriers play the roles of action potential, pre-synaptic/post-synaptic membrane, and neurotransmitter in a biological synapse, respectively. As a key synaptic function, the paired pulse facilitation index of the photonic synapse can reach 202%, which can be modulated by the interval time between two adjacent light pulses. It is found that the graphene defects, the surface band bending, and the Al vacancies on the surface of (Al,Ga)N nanowires can be the key reasons contributing to the synaptic characteristics of artificial photonic devices. Hence, the dynamic “learning–forgetting” performance of the artificial synaptic device can resemble the “learning–forgetting” behavior of the human brain. Furthermore, the hand-written digits are set up to mimic a typical characteristic of human perceptual learning. After only three training epochs, the simulated network can achieve a high recognition rate of over 90% based on the experimental conductance for long-term potentiation and long-term depression. In supervised learning processes, such few training times are beneficial to reduce energy consumption significantly. Therefore, in the area of neuromorphic computing technology and artificial intelligence systems requiring low-power consumption, this work paves a potential way to develop the optoelectronic synapse based on semiconductor nanowires.
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基于(Al,Ga)N纳米线/石墨烯异质结实现低功耗人工光子突触用于神经形态计算
脑启发神经形态计算系统的快速发展刺激了对低功耗人工突触的迫切需求。本文提出并成功演示了一种基于(Al,Ga)N纳米线/石墨烯异质结的光子突触器件。在人工突触装置中,入射光、纳米线/石墨烯异质结和光产生的载体分别在生物突触中扮演动作电位、突触前/突触后膜和神经递质的角色。作为关键的突触功能,光子突触的成对脉冲易化指数可达202%,可通过相邻两个光脉冲的间隔时间调节。研究发现石墨烯缺陷、(Al,Ga)N纳米线表面的能带弯曲和Al空位可能是导致人工光子器件突触特性的关键原因。因此,人工突触装置的动态“学习-遗忘”性能可以类似于人脑的“学习-遗忘”行为。此外,手写数字的设置是为了模仿人类感知学习的典型特征。基于长时增强和长时抑制的实验电导,仅经过3次训练,模拟网络就可以达到90%以上的高识别率。在监督学习过程中,如此少的训练次数有利于显著降低能量消耗。因此,在需要低功耗的神经形态计算技术和人工智能系统领域,本研究为开发基于半导体纳米线的光电突触铺平了一条潜在的道路。
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来源期刊
APL Photonics
APL Photonics Physics and Astronomy-Atomic and Molecular Physics, and Optics
CiteScore
10.30
自引率
3.60%
发文量
107
审稿时长
19 weeks
期刊介绍: APL Photonics is the new dedicated home for open access multidisciplinary research from and for the photonics community. The journal publishes fundamental and applied results that significantly advance the knowledge in photonics across physics, chemistry, biology and materials science.
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