神经形态工程学
石墨烯
材料科学
钙钛矿(结构)
记忆电阻器
氧化物
光电子学
电阻随机存取存储器
阴极
纳米技术
传输(电信)
离子
电导
晶体管
氧化镍
费米能量
扩散
能量(信号处理)
肖特基势垒
镍
计算机科学
电铸
聚类分析
无监督学习
电子工程
Atom(片上系统)
量子点
作者
Qingxiu Li,Hui Li,Tao Sun,Minghao Jiang,Yongjun Leng,Zi-Yu Lv,You Zhou,Ye Zhou,Xiaoling Ma,Su-Ting Han
标识
DOI:10.1038/s41467-026-69805-2
摘要
The demand for bio-inspired neuromorphic systems drives research on artificial neuronal devices with dual excitatory/inhibitory capabilities. Although perovskite memristors show promise, interfacial barriers and rapid ion migration hinder modulation. This study addresses these challenges through atomic-scale cathode engineering, developing perovskite-based memristor (Au/Ni1-rGO/MAPbI3/ITO) with nickel single-atom modified reduced graphene oxide (Ni1-rGO) cathode. The Ni-O configuration of Ni1-rGO with a single Ni atom anchored on rGO, modulates the electronic properties of rGO, reducing Schottky barrier via energy band alignment for bipolar current symmetry and spatially confining iodide ion migration through a high diffusion energy barrier (2.912 eV), conferring 780 ms relaxation. The device achieves 1,000 distinct conductance states and emulates interlayer connections and bidirectional signal transmission in feedback neuronal networks. We demonstrate neuromorphic functionalities: unsupervised competitive learning exceeds 50% clustering accuracy, while cooperative learning solves NP-hard problem 6× faster than simulated annealing, establishing an atomic-engineered approach for high-efficiency neuromorphic hardware.
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