Perovskite‐Nanowire‐Array‐Based Continuous‐State Programmable Artificial Synapse for Neuromorphic Computing

Author:

Zhang Yuting1,Ma Zichao12,Chen Zhesi1,Poddar Swapnadeep1,Zhu Yudong13,Han Bing3,Chan Chak Lam Jonathan1,Ding Yucheng1,Kong Xiangpeng4,Fan Zhiyong1567ORCID

Affiliation:

1. Department of Electronic & Computer Engineering The Hong Kong University of Science and Technology Clear Water Bay, Kowloon Hong Kong SAR China

2. School of Microelectronics South China University of Technology No. 777, Xingye Avenue Guangzhou Guangdong 511442 P. R. China

3. Department of Materials Science and Engineering Southern University of Science and Technology No. 1088, Xueyuan Rd. Shenzhen Guangdong 518055 P. R. China

4. Shandong Institute for Product Quality Inspection Jinan Shandong 250100 P. R. China

5. Department of Electronic & Computer Engineering State Key Laboratory of Advanced Displays and Optoelectronics Technologies HKUST Clear Water Bay, Kowloon Hong Kong SAR China

6. Department of Chemical and Biological Engineering The Hong Kong University of Science and Technology Clear Water Bay, Kowloon Hong Kong SAR China

7. Shanghai Artificial Intelligence Laboratory Shanghai P.R. China

Abstract

Perovskite‐based memristors with tunable nonvolatile states are developed to mimic the synaptic interconnects of biological nervous systems and map neuromorphic computing networks to integrated circuits. To emulate the plasticity of synaptic structures, memristors with robust multilevel resistive states are fabricated in this work using high‐density polycrystalline MAPbCl3 nanowires (NWs) array that vertically integrated using solution method. In particular, the fabricated memristors exhibit both short‐ and long‐term plasticity and traits akin to biological synapses. A fabricated memristor device is precisely programmed to 18 resistive states and each state exhibits stable data retention of more than 100 000 s. Furthermore, a matrix processing unit using a 4‐by‐4 memristor array is fabricated as the hardware core of an encoder–decoder artificial neural network to demonstrate high accuracy and reliable in‐image font conversion. The resistive states of the 16 memristors are precisely programmed to the corresponding resistance values for specific synaptic weights of the artificial‐neural‐network‐trained offline. In addition, experimental characterization and first‐principles simulations attribute the continuous programmability and high reliability features of the memristors to the confinement mechanisms of the horizontal grain‐boundary structure in polycrystalline perovskite NWs.

Funder

Science, Technology and Innovation Commission of Shenzhen Municipality

Publisher

Wiley

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