神经形态工程学
记忆电阻器
材料科学
丝绸
生物电子学
纳米技术
生物相容性
冯·诺依曼建筑
丝素
电子材料
计算机科学
电子工程
人工神经网络
工程类
生物传感器
人工智能
复合材料
冶金
操作系统
作者
Momo Zhao,Saisai Wang,Dingwei Li,Rui Wang,Fanfan Li,Mengqi Wu,Kun Liang,Huihui Ren,Xiaorui Zheng,Chengchen Guo,Xiaohua Ma,Bowen Zhu,Hong Wang,Yue Hao
标识
DOI:10.1002/aelm.202101139
摘要
Abstract Memristors based neuromorphic devices can efficiently process complex information and fundamentally overcome the bottleneck of traditional computing based on von Neumann architecture. Meanwhile, natural biomaterials have attracted significant attention for biologically integrated electronic devices due to their excellent biocompatibility, mechanical flexibility, and controllable biodegradability. Thus, biomaterial‐based memristors may have a transformative impact on bridging electronic neuromorphic systems and biological systems. However, the working voltage in biological system is low, but the operation voltages of conventional memristors are high, violating the energy‐efficient biological system. Here, high‐performance silk fibroin‐based threshold switching (TS) memristors are demonstrated, which reveal an on‐current of 1 mA, a low threshold voltage ( V th ) of 0.17 V, a high selectivity of 3 × 10 6 , and a steep turn‐on slope of <2.5 mV dec –1 . Meanwhile, the silk TS devices depict outstanding device uniformity and stability even at high humidity (80%) and temperature (70 °C) environments. The silk TS devices exhibit typical short‐term plasticity (STP) of biological synapses including pair‐pulse facilitation (PPF). More importantly, a leaky integrate‐and‐fire (LIF) artificial neuron is successfully realized based on the volatile characteristics of silk TS memristors. These achievements pave the way for utilizing silk biomaterials in advanced bioelectronics and neuromorphic computing.
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