神经形态工程学
材料科学
突触
平面的
可塑性
光电子学
突触重量
突触可塑性
长时程增强
纳米尺度
纳米技术
神经可塑性
计算机科学
神经促进
峰值时间相关塑性
光电流
光电导性
记忆电阻器
钥匙(锁)
电子工程
变质塑性
促进
工作(物理)
人工神经网络
晶体管
电压
作者
Zhiyuan Ren,S L Wang,Bingheng Meng,Huan Liu,Qing An,Longxing Su,Rui Chen
标识
DOI:10.1021/acsami.5c21253
摘要
Understanding how atomic-scale defect dynamics influence system-level neuromorphic behavior is crucial for the rational design of oxide-based optoelectronic synapses. In this study, a planar ZnO synapse has been introduced where the nanosecond-scale oxygen-vacancy carrier lifetime is directly linked to second-scale persistent photoconductivity (PPC) decay and key synaptic plasticity parameters. By combining steady-state and time-resolved spectroscopies with electrical measurements, a dynamic framework that spans multiple time scales has been developed: long-lived defect states slow PPC decay, which in turn regulates paired-pulse facilitation retention and the efficiency of short-to-long-term plasticity transitions. This framework allows for predictive tuning of the synaptic weight by controlling defect occupation and release kinetics. The optimized ZnO synapse operating at 0.1 V demonstrates robust long-term potentiation and achieves 90.8% recognition accuracy in handwritten digit recognition. This work presents a cross-time scale design strategy that bridges atomic-level defect engineering with neuromorphic system performance, paving a route toward artificial vision hardware.
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