用于联想学习和图像识别的仿生人工突触中的导电岛辅助电阻开关

IF 5.1 Q1 POLYMER SCIENCE
Rajesh Jana, Ritamay Bhunia, Swapnamoy Paramanik, Kinsuk Giri, Avijit Chowdhury
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引用次数: 0

摘要

溶液处理忆阻器器件在推进突触应用方面具有巨大潜力,可为下一代神经形态系统提供可扩展、经济高效的解决方案。这些器件复制了生物突触的行为,具有渐进和持续的电阻变化,因此在神经形态计算和人工神经网络中大有可为。然而,要模拟生物突触的动态,了解连续脉冲对器件的时间特性和累积效应至关重要。本研究提出了一种基于混合材料的导电岛辅助电阻开关(CIARS),其溶液处理活性层由嵌入银纳米粒子(Ag NPs)的热剥离氮化石墨碳(g-C3N4,缩写为 CN)纳米片组成。制造出的器件以较低的工作电压(≤0.5 V)实现了可重复的双极记忆功能,模拟了频率和振幅相关的突触可塑性。阈值切换是由银离子(Ag+)形成的传导丝(CFs)引起的,而模拟行为则是电压脉冲调制肖特基势垒高度与金属 CFs 形成相结合的结果。实验结果表明了 CIARS 机制在材料平台中的功效,突出了其在联想学习、摩斯密码检测和图像识别中的应用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Conductive Islands Assisted Resistive Switching in Biomimetic Artificial Synapse for Associative Learning and Image Recognition

Conductive Islands Assisted Resistive Switching in Biomimetic Artificial Synapse for Associative Learning and Image Recognition
Solution-processed memristor devices hold significant potential for advancing synaptic applications, offering scalable, cost-effective, and efficient solutions for next-generation neuromorphic systems. These devices replicate the behavior of biological synapses with their gradual and continuous changes in resistance, making them promising for neuromorphic computing and artificial neural networks. However, understanding the temporal characteristics and cumulative effect of successive pulses on the devices is essential for emulating the dynamics of biological synapses. This study proposes a hybrid materials-based conductive islands-assisted resistive switching (CIARS) in a solution-processed active layer consisting of thermally exfoliated graphitic carbon nitride (g-C3N4 abbreviated as CN) nanosheets embedded with silver nanoparticles (Ag NPs). The fabricated devices demonstrate repeatable and bipolar memory features with a lower operating voltage (≤0.5 V), emulating the frequency and amplitude-dependent synaptic plasticities. The threshold switching occurs due to the formation of conduction filaments (CFs) of silver ion (Ag+), whereas the analog behavior results from the voltage pulse-dependent modulation of Schottky barrier height combined with metallic CFs formation. The experimental findings demonstrate the efficacy of the CIARS mechanism within the material platform, highlighting its potential for applications in associative learning, Morse code detection, and image recognition.
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来源期刊
CiteScore
10.40
自引率
3.40%
发文量
209
审稿时长
1 months
期刊介绍: ACS Macro Letters publishes research in all areas of contemporary soft matter science in which macromolecules play a key role, including nanotechnology, self-assembly, supramolecular chemistry, biomaterials, energy generation and storage, and renewable/sustainable materials. Submissions to ACS Macro Letters should justify clearly the rapid disclosure of the key elements of the study. The scope of the journal includes high-impact research of broad interest in all areas of polymer science and engineering, including cross-disciplinary research that interfaces with polymer science. With the launch of ACS Macro Letters, all Communications that were formerly published in Macromolecules and Biomacromolecules will be published as Letters in ACS Macro Letters.
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