神经形态工程学
记忆电阻器
材料科学
异质结
电阻随机存取存储器
光电子学
计算机体系结构
电气工程
电子工程
计算机科学
人工神经网络
人工智能
电压
工程类
作者
Qi Liu,Song Gao,Yang Li,Wenjing Yue,Chunwei Zhang,Hao Kan,Guozhen Shen
标识
DOI:10.1002/admt.202201143
摘要
Abstract With the boom of artificial intelligence (AI) and big data, electronics demand faster computing speed and lower power consumption, however, von Neumann architecture of current devices feature severe drawbacks for the further improvement of computing capability due to its design with separated memory and central processing unit (CPU). Fortunately, emerging nonvolatile memory devices, especially memristors, exhibit tremendous advantages in breaking the “memory wall” between memory and CPU by virtue of their in‐computing and neuromorphic computing abilities. Here, a WO 3 /HfO 2 heterojunction‐based memristor is proposed, and the device exhibits extraordinary resistive switching behaviors (e.g., high ON/OFF ratio, stable endurance, long retention time, and multilevel resistance states) and neuromorphic characteristics (long‐term/short‐term synaptic activities). Further, the mechanism underlying the electrical performances of this device is studied. Silver conductive filaments and Schottky barrier models are proposed and explained successfully. Additionally, a multilayer layer perceptron neural network is constructed in terms of the memristor model, and variables embracing learning rate, algorithm, and training epochs, are explored to enhance the recognition accuracy of the network. Undoubtedly, the proposed high‐quality WO 3 /HfO 2 heterojunction‐based memristor contributes to promoting the development of high‐density storage and neuromorphic computing technology, showing fascinating prospects in the era of AI.
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