神经形态工程学
尖峰神经网络
材料科学
可扩展性
突触重量
电导
人工神经网络
计算机科学
光电流
调制(音乐)
峰值时间相关塑性
突触后电流
Spike(软件开发)
光电子学
突触
电压
突触后电位
学习规律
突触可塑性
赫比理论
记忆电阻器
电子工程
神经科学
过程(计算)
生物神经网络
纳米尺度
可塑性
人工智能
纳米技术
拓扑(电路)
静电学
作者
Hye‐Jin Yoon,Soeun Park,Yeong Kwon Kim,Juhwan Baek,Ki Han Kim,Seongil Yun,Hyeonchang Son,Jeong-Ho Choi,Byung Chul Jang,Dong‐Ho Kang
标识
DOI:10.1002/adfm.202519498
摘要
Abstract Spiking neural networks (SNNs) represent a promising computing architecture for neuromorphic hardware, as they process and store information through spike signals, closely mimicking the way the human brain operates. However, most synaptic devices recently proposed for hardware SNN implementations are limited to exhibiting analogue tuning within a single conductance polarity, making them inadequate for realizing scalable and energy‐efficient neuromorphic systems. In this study, an optoelectronic synaptic device based on a ReS 2 /WSe 2 / h ‐BN heterostructure, enabling conductance modulation across both positive and negative states within a single device is demonstrated. This bidirectional plasticity originates from electrostatic modulation of the WSe 2 Fermi level, induced by voltage pulses applied through an O 2 plasma‐treated h ‐BN weight‐control layer. The device exhibits reversible photocurrent polarity, reliable potentiation/depression of the postsynaptic current, and stable synaptic weight retention with reproducible multi‐cycle operation. System‐level simulations using a 1024–20–3 SNN architecture confirmed the functional advantage of a bidirectional synapse, with networks achieving over 95% facial recognition accuracy within 20 training epochs, whereas the unidirectional synapse‐based network plateaued below 75%. These findings highlight the potential of optoelectronic synaptic device with bidirectional plasticity as a promising device platform for efficient on‐chip learning in next‐generation neuromorphic hardware system.
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