Photoprogrammed Multifunctional Optoelectronic Synaptic Transistor Arrays Based on Photosensitive Polymer‐Sorted Semiconducting Single‐Walled Carbon Nanotubes for Image Recognition

Author:

Sui Nianzi12,Ji Yixi3,Li Min12,Zheng Fanyuan4,Shao Shuangshuang12,Li Jiaqi12,Liu Zhaoxin3,Wu Jinjian3,Zhao Jianwen12,Li Lain‐Jong4ORCID

Affiliation:

1. School of Nano‐Tech and Nano‐Bionics University of Science and Technology of China No. 398 Ruoshui Road, Suzhou Industrial Park Suzhou Jiangsu Province 215123 P. R. China

2. Division of Nanodevices and Related Nanomaterials Suzhou Institute of Nano‐Tech and Nano‐Bionics Chinese Academy of Sciences No. 398 Ruoshui Road, Suzhou Industrial Park Suzhou Jiangsu Province 215123 P. R. China

3. School of Artificial Intelligence Xidian University Xi'an 710071 P. R. China

4. Department of Mechanical Engineering The University of Hong Kong Pokfulam Road Hong Kong 999077 P. R. China

Abstract

AbstractThe development of neuromorphic optoelectronic systems opens up the possibility of the next generation of artificial vision. In this work, the novel broadband (from 365 to 940 nm) and multilevel storage optoelectronic synaptic thin‐film transistor (TFT) arrays are reported using the photosensitive conjugated polymer (poly[(9,9‐dioctylfluorenyl‐2,7‐diyl)‐co‐(bithiophene)], F8T2) sorted semiconducting single‐walled carbon nanotubes (sc‐SWCNTs) as channel materials. The broadband synaptic responses are inherited to absorption from both photosensitive F8T2 and sorted sc‐SWCNTs, and the excellent optoelectronic synaptic behaviors with 200 linearly increasing conductance states and long retention time > 103 s are attributed to the superior charge trapping at the AlOx dielectric layer grown by atomic layer deposition. Furthermore, the synaptic TFTs can achieve IOn/IOff ratios up to 106 and optoelectronic synaptic plasticity with the low power consumption (59 aJ per single pulse), which can simulate not only basic biological synaptic functions but also optical write and electrical erase, multilevel storage, and image recognition. Further, a novel Spiking Neural Network algorithm based on hardware characteristics is designed for the recognition task of Caltech 101 dataset and multiple features of the images are successfully extracted with higher accuracy (97.92%) of the recognition task from the multi‐frequency curves of the optoelectronic synaptic devices.

Funder

National Key Research and Development Program of China

Chinese Academy of Sciences

Innovative Research Group Project of the National Natural Science Foundation of China

Chongqing Municipal Key Research and Development Program of China

Publisher

Wiley

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