Integrated in-memory sensor and computing of artificial vision system based on reversible bonding transition-induced nitrogen-doped carbon quantum dots (N-CQDs)

IF 9.5 2区 材料科学 Q1 CHEMISTRY, PHYSICAL Nano Research Pub Date : 2024-08-27 DOI:10.1007/s12274-024-6966-x
Tianqi Yu, Jie Li, Wei Lei, Suhaidi Shafe, Mohd Nazim Mohtar, Nattha Jindapetch, Paphavee van Dommelen, Zhiwei Zhao
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Abstract

Carbon quantum dots (CQDs) have been used in memristors due to their attractive optical and electronic properties, which are considered candidates for brain-inspired computing devices. In this work, the performance of CQDs-based memristors is improved by utilizing nitrogen-doping. In contrast, nitrogen-doped CQDs (N-CQDs)-based optoelectronic memristors can be driven with smaller programming voltages (−0.6 to 0.7 V) and exhibit lower powers (78 nW/0.29 µW). The physical mechanism can be attributed to the reversible transition between C–N and C=N with lower binding energy induced by the electric field and the generation of photogenerated carriers by ultraviolet light irradiation, which adjusts the conductivity of the initial N-CQDs to implement resistance switching. Importantly, the convolutional image processing based on various cross kernels is efficiently demonstrated by stable multi-level storage properties. An N-CQDs-based optoelectronic reservoir computing implements impressively high accuracy in both no noise and various noise modes when recognizing the Modified National Institute of Standards and Technology (MNIST) dataset. It illustrates that N-CQDs-based memristors provide a novel strategy for developing artificial vision system with integrated in-memory sensor and computing.

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基于可逆键合转变诱导的氮掺杂碳量子点(N-CQDs)的人工视觉系统的集成式内存传感器和计算器
碳量子点(CQDs)因其极具吸引力的光学和电子特性而被用于忆阻器,并被认为是脑启发计算设备的候选器件。在这项研究中,利用氮掺杂技术提高了基于碳量子点的忆阻器的性能。相比之下,氮掺杂的 CQDs(N-CQDs)光电忆阻器可以用较小的编程电压(-0.6 至 0.7 V)驱动,并表现出较低的功率(78 nW/0.29 µW)。其物理机制可归因于电场诱导的具有较低结合能的 C-N 和 C=N 之间的可逆转变,以及紫外线照射产生的光生载流子,从而调整初始 N-CQD 的电导率,实现电阻开关。重要的是,基于各种交叉核的卷积图像处理通过稳定的多级存储特性得到了有效展示。在识别美国国家标准与技术研究院(MNIST)的修正数据集时,基于 N-CQDs 的光电存储计算在无噪声和各种噪声模式下都实现了令人印象深刻的高精度。这说明基于 N-CQDs 的忆阻器为开发集成内存传感器和计算的人工视觉系统提供了一种新策略。
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来源期刊
Nano Research
Nano Research 化学-材料科学:综合
CiteScore
14.30
自引率
11.10%
发文量
2574
审稿时长
1.7 months
期刊介绍: Nano Research is a peer-reviewed, international and interdisciplinary research journal that focuses on all aspects of nanoscience and nanotechnology. It solicits submissions in various topical areas, from basic aspects of nanoscale materials to practical applications. The journal publishes articles on synthesis, characterization, and manipulation of nanomaterials; nanoscale physics, electrical transport, and quantum physics; scanning probe microscopy and spectroscopy; nanofluidics; nanosensors; nanoelectronics and molecular electronics; nano-optics, nano-optoelectronics, and nano-photonics; nanomagnetics; nanobiotechnology and nanomedicine; and nanoscale modeling and simulations. Nano Research offers readers a combination of authoritative and comprehensive Reviews, original cutting-edge research in Communication and Full Paper formats. The journal also prioritizes rapid review to ensure prompt publication.
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