材料科学
记忆电阻器
调制(音乐)
光电子学
神经形态工程学
晶体管
神经可塑性
事件(粒子物理)
光电效应
电压
神经科学
电气工程
人工神经网络
计算机科学
物理
心理学
量子力学
机器学习
声学
工程类
作者
Kuan‐Ting Chen,Pei‐Lin Lin,Ya‐Chi Huang,S. C. Chen,Zih‐Siao Liao,Jen‐Sue Chen
标识
DOI:10.1002/adfm.202412452
摘要
Abstract Integrating and implementing spiking neurons and synapse into neuromorphic hardware aligned with spiking neural networks (SNNs) offer significant promise for energy‐efficient operation and decision making. In this work, a stacked artificial synapse and spiking neuron utilizing an indium gallium zinc oxide (IGZO) optosynaptic transistor paired with a vanadium‐based volatile threshold switching memristor are constructed. This compact neuristor encompasses multiple functionalities including the conversion of optical impulses into electrical signals, modifiable post‐synaptic current‐enhanced features, and the implementation of leaky integrate‐and‐fire (LIF) spiking generation behavior, showcasing the capability of information delivery in SNNs. The spiking activity within the proposed configuration can be effectively modulated through the interplay of optical and electrical stimuli. Additionally, the excitatory and inhibitory properties manifested by the spiking behavior underscore the gate‐tunable neuron excitability. Notably, the capacity for accommodating hybrid inputs operation makes achievement of spike‐based associative learning by reviving the Pavlov's dog experiment in the proposed device. Moreover, this research unveils the synaptic weight‐governed spiking activity, demonstrating the sophisticated input–output characteristics of spiking behavior. The stacked memristor and transistor assembly can advance the neuromorphic technologies and lay the foundation for the realization of physical SNNs.
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