用于尖峰神经网络的簇型导电路径无选择器1R忆阻器阵列

IF 16.8 1区 材料科学 Q1 CHEMISTRY, PHYSICAL
Ji Eun Kim , Suman Hu , Ju Young Kwon , Suk Yeop Chun , Keunho Soh , Hwanhui Yun , Seung-Hyub Baek , Sahn Nahm , Yeon Joo Jeong , Jung Ho Yoon
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引用次数: 0

摘要

忆阻器作为下一代器件具有巨大的前景,但其实际应用面临着诸如实现低功耗、多级电阻状态和高效交叉栅阵列结构等挑战。记忆电阻器的开关特性和性能在很大程度上取决于它们移动的可移动物种和基质,但控制离子动力学仍然很困难。在本研究中,我们采用钌(Ru)作为活性电极,利用纳米棒结构的SiO2基质,降低了Ru离子扩散的活化能,增强了氧化还原反应。钌动力学的精确控制使我们能够开发新的传导路径和机制。Pt/SiO2纳米棒/Ru结构具有改善的开关特性,包括无电铸操作、低功耗、高线性电导调制和导通状态固有的非线性。为了展示大规模交叉棒阵列的操作潜力,我们引入了一种新颖的峰值神经网络(SNN)模拟器,该模拟器结合了器件级开关行为和关键阵列级参数,如线路电阻和潜流。利用该模拟器,我们成功地实现了一个16 × 16无选择器的交叉棒阵列,在MNIST数据集上达到了80%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Cluster-type conductive path-based selector-less 1R memristor array for spiking neural networks

Cluster-type conductive path-based selector-less 1R memristor array for spiking neural networks
Memristors hold great promise as next-generation devices, but their practical application faces challenges such as achieving low power consumption, multi-level resistance states, and efficient crossbar array construction. The switching characteristics and performance of memristors depend largely on the mobile species and the matrix through which they move, yet controlling ion dynamics remains difficult. In this study, we employed ruthenium (Ru) as the active electrode and utilized a SiO2 matrix in a nanorod structure, which reduces the activation energy for Ru ion diffusion and enhances redox reactions. Precise control of Ru ion dynamics enabled us to develop novel conduction paths and mechanisms. The Pt/SiO2 nanorods/Ru structure exhibits improved switching characteristics, including electroforming-free operation, low power consumption, highly linear conductance modulation, and inherent nonlinearity in the on-state. To demonstrate operational potential in large-scale crossbar arrays, we introduced a novel Spiking Neural Network (SNN) simulator that incorporates both device-level switching behaviors and key array-level parameters such as line resistance and sneak currents. Using this simulator, we successfully implemented a 16 × 16 selector-less crossbar array, achieving 80 % accuracy on the MNIST dataset.
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来源期刊
Nano Energy
Nano Energy CHEMISTRY, PHYSICAL-NANOSCIENCE & NANOTECHNOLOGY
CiteScore
30.30
自引率
7.40%
发文量
1207
审稿时长
23 days
期刊介绍: Nano Energy is a multidisciplinary, rapid-publication forum of original peer-reviewed contributions on the science and engineering of nanomaterials and nanodevices used in all forms of energy harvesting, conversion, storage, utilization and policy. Through its mixture of articles, reviews, communications, research news, and information on key developments, Nano Energy provides a comprehensive coverage of this exciting and dynamic field which joins nanoscience and nanotechnology with energy science. The journal is relevant to all those who are interested in nanomaterials solutions to the energy problem. Nano Energy publishes original experimental and theoretical research on all aspects of energy-related research which utilizes nanomaterials and nanotechnology. Manuscripts of four types are considered: review articles which inform readers of the latest research and advances in energy science; rapid communications which feature exciting research breakthroughs in the field; full-length articles which report comprehensive research developments; and news and opinions which comment on topical issues or express views on the developments in related fields.
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