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Paper | Open Access

ZnO-SnO2/WO3-x heterojunction artificial synapse for realization and integration of multiple biological cognitive functions

Pengfei Sun1Ruidong Li3Haotian Meng1 ( )Tao Sun4( )Song Gao1 ( )Yang Li2,3 ( )
School of Information Science and Engineering, University of Jinan, Jinan 250022, People’s Republic of China
School of Integrated Circuits, Shandong University, Jinan 250100, People’s Republic of China
Shandong Yunhai Guochuang Cloud Computing Equipment Industry Innovation Co., Ltd., Jinnan 250101, People’s Republic of China
Academy of Intelligent Innovation, Shandong University, Jinan 250101, People’s Republic of China
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Abstract

In current memristor-based neuromorphic computing research, several studies face the challenge of realizing only a single function at a time or having isolated functions. This limitation is particularly evident when simulating biological cognition, as the overall synergy between multiple cognitive functions is difficult to represent. In this work, a high-performance heterojunction memristor is presented at first. The memristor-based neural network and functional circuit are further implemented to realize and integrate multiple cognitive functions. Specifically, the proposed photoelectric memristor has the structure of Ag/ZnO-SnO2/WO3-x/ITO, it exhibits various synaptic behaviors under external modulations, which are characterized by good stability and repeatability. Based on this device, a neural network is built to realize the basic recognition function in biological cognition. The recognition results are translated into different labelled voltage signals and subsequently fed into a memristor-based functional circuit. By leveraging memory characteristics and tunable conductance of the memristor, and controlling the specific circuit functionalities, the input signals are processed to produce different outputs representing various cognitive functions. This methodology allows the realization and integration of recognition, memory, learning, association, relearning, and forgetting into one single system, thereby enabling a more comprehensive and authentic simulation of biological cognition. This work presents a novel memristor and a method for achieving and integrating multiple neuromorphic computing functions within a single system, providing a successful example for achieving complete biological function.

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International Journal of Extreme Manufacturing

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Cite this article:
Sun P, Li R, Meng H, et al. ZnO-SnO2/WO3-x heterojunction artificial synapse for realization and integration of multiple biological cognitive functions. International Journal of Extreme Manufacturing, 2025, 7(5). https://doi.org/10.1088/2631-7990/addf1e

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Received: 27 January 2025
Revised: 11 April 2025
Accepted: 30 May 2025
Published: 10 June 2025
© 2025 The Author(s).

Original content from this work may be used under the terms of the Creative Commons Attribution 4.0 licence. Any further distribution of this work must maintain attribution to the author(s) and the title of the work, journal citation and DOI.