记忆电阻器
材料科学
神经形态工程学
纳米技术
电压
物理神经网络
人工神经元
信号(编程语言)
神经元
光电子学
电容器
人工神经网络
导电体
突触重量
逻辑门
色散(光学)
阈值电压
突触
计算机科学
固态
电子工程
电阻随机存取存储器
国家(计算机科学)
电网
聚乙烯醇
生物系统
切换时间
生物神经网络
构造(python库)
摇摆
作者
Ronghua Lan,Miliang Zhang,Guoheng Xu,Xiangyu Zhang,Mingzhe Nie,Jiqing Dai,Li Wang,Wenchao Liu,Wenbo Chang,Genglan Zhu,Qi Feng,Junjun Liu,Kai Xiao
标识
DOI:10.1002/adma.202520195
摘要
Biological leaky integrate-and-fire (LIF) neurons are dynamic, living computational systems that modulate signal strength via synaptic plasticity and generate action potentials through somatic firing. To emulate LIF functionality, a memristor capable of reversible analog (synaptic function) and threshold switching (somatic function) states is essential. Here, we present a reconfigurable hydrogel-based memristor that can be configured to emulate either synaptic or somatic functions by tuning its composition. Within the flexible hydrogel matrix, polyvinyl alcohol (PVA) content governs the dispersion state of silver nanoflakes (Ag NF), enabling distinct Ag conductive pathways. In low PVA content, the memristor exhibits analog characteristics; in high PVA content, the memristor shows threshold switching characteristics with a low activation voltage of 0.56 V. Furthermore, by integrating the analog memristor, threshold switching memristor, capacitor, and resistor, we construct an artificial LIF neuron that dynamically adjusts firing probability based on historical stimuli. This system achieves 95.46% accuracy in image classification, closely mimicking biological neuron behavior and advancing hardware for artificial neural networks.
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