Nano-Micro Letters, Volume. 16, Issue 1, 133(2024)

Tailoring Classical Conditioning Behavior in TiO2 Nanowires: ZnO QDs-Based Optoelectronic Memristors for Neuromorphic Hardware

Wenxiao Wang1,2,3、†, Yaqi Wang1、†, Feifei Yin2,3, Hongsen Niu2,3, Young-Kee Shin5, Yang Li1,4、*, Eun-Seong Kim2,3、**, and Nam-Young Kim2,3、***
Author Affiliations
  • 1School of Information Science and Engineering, University of Jinan, Jinan 250022, People’s Republic of China
  • 2RFIC Centre, NDAC Centre, Kwangwoon University, Nowon-gu, Seoul 139-701, South Korea
  • 3Department of Electronics Engineering, Kwangwoon University, Nowon-Gu, Seoul 139-701, South Korea
  • 4School of Microelectronics, Shandong University, Jinan 250101, People’s Republic of China
  • 5Department of Molecular Medicine and Biopharmaceutical Sciences, Seoul National University, Seoul 08826, South Korea
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    Neuromorphic hardware equipped with associative learning capabilities presents fascinating applications in the next generation of artificial intelligence. However, research into synaptic devices exhibiting complex associative learning behaviors is still nascent. Here, an optoelectronic memristor based on Ag/TiO2 Nanowires: ZnO Quantum dots/FTO was proposed and constructed to emulate the biological associative learning behaviors. Effective implementation of synaptic behaviors, including long and short-term plasticity, and learning-forgetting-relearning behaviors, were achieved in the device through the application of light and electrical stimuli. Leveraging the optoelectronic co-modulated characteristics, a simulation of neuromorphic computing was conducted, resulting in a handwriting digit recognition accuracy of 88.9%. Furthermore, a 3 × 7 memristor array was constructed, confirming its application in artificial visual memory. Most importantly, complex biological associative learning behaviors were emulated by mapping the light and electrical stimuli into conditioned and unconditioned stimuli, respectively. After training through associative pairs, reflexes could be triggered solely using light stimuli. Comprehensively, under specific optoelectronic signal applications, the four features of classical conditioning, namely acquisition, extinction, recovery, and generalization, were elegantly emulated. This work provides an optoelectronic memristor with associative behavior capabilities, offering a pathway for advancing brain-machine interfaces, autonomous robots, and machine self-learning in the future.

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    Wenxiao Wang, Yaqi Wang, Feifei Yin, Hongsen Niu, Young-Kee Shin, Yang Li, Eun-Seong Kim, Nam-Young Kim. Tailoring Classical Conditioning Behavior in TiO2 Nanowires: ZnO QDs-Based Optoelectronic Memristors for Neuromorphic Hardware[J]. Nano-Micro Letters, 2024, 16(1): 133

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    Paper Information

    Category: Research Articles

    Received: Sep. 11, 2023

    Accepted: Dec. 28, 2023

    Published Online: Apr. 29, 2024

    The Author Email: Li Yang (yang.li@sdu.edu.cn), Kim Eun-Seong (3037eskim@gmail.com), Kim Nam-Young (nykm@kw.ac.kr)

    DOI:10.1007/s40820-024-01338-z

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