Artificial Neurons Using Ag−In−Zn−S/Sericin Peptide‐Based Threshold Switching Memristors for Spiking Neural Networks

Author:

He Nan12,Yan Jie3,Zhang Zhining4,Qin Haiming3,Hu Ertao1,Wang Xinpeng2,Zhang Hao2,Chen Pu4,Xu Feng1,Sheng Yang5,Zhang Lei4,Tong Yi236ORCID

Affiliation:

1. College of Electronic and Optical Engineering & College of Flexible Electronics (Future Technology) Nanjing University of Posts and Telecommunications 9 Wenyuan Road Nanjing 210023 P. R. China

2. Suzhou Laboratory 388 Ruoshui Road Suzhou 215123 P. R. China

3. College of Integrated Circuit Science and Engineering Nanjing University of Posts and Telecommunications 9 Wenyuan Road Nanjing 210023 P. R. China

4. Department of Chemical Engineering and Waterloo Institute for Nanotechnology University of Waterloo Waterloo Ontario N2L 3G1 Canada

5. Jiangsu Key Laboratory of Environmentally Friendly Polymeric Materials, School of Materials Science and Engineering Changzhou University 21 Gehu Middle Road Changzhou 213164 P. R. China

6. The institute of Semiconductors Chinese Academy of Sciences Beijing 100083 P. R. China

Abstract

AbstractMemristive devices with threshold switching characteristics can be effectively utilized to mimic biological neurons acting as one of the key building blocks for constructing advanced hardware neural networks. In this work, the emulation of leaky integrate‐and‐fire memristive neuron is realized in one single cell with Ag/Ag−In−Zn−S/silk sericin/W architecture without the need for additional auxiliary circuits. The studied devices demonstrate excellent electrical properties, such as stably repeatable threshold switching, concentratedly low threshold voltage (≈0.4 V), and relatively small device‐to‐device variation. In addition, multiple neural features, such as leaky integrate‐and‐fire neuron functionality and strength‐modulated spike frequency characteristic, have been successfully emulated owing to the forming‐free volatile threshold switching effect. The stable volatile threshold switching behaviors and regular firing event may be attributed to the controllable metallic Ag filamentary mechanism. Furthermore, a solid accuracy of 91.44% of the pattern recognition of Modified National Institute of Standards and Technology (MNIST) data is obtained via a trained spiking neural network (SNN) based on the leaky integrate‐and‐fire behavior of sericin‐based device. These achievements shed light on the fact that employing sericin biomaterials has great application potential in advanced neuromorphic computation.

Funder

Ministry of Science and Technology

China Postdoctoral Science Foundation

Publisher

Wiley

Subject

Electronic, Optical and Magnetic Materials

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