Large scale integrated IGZO crossbar memristor array based artificial neural architecture for scalable in-memory computing

IF 8.2 2区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
Muhammad Naqi , Taehwan Kim , Yongin Cho , Pavan Pujar , Jongsun Park , Sunkook Kim
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引用次数: 0

Abstract

Neuromorphic systems based on memristor arrays have not only addressed the von Neumann bottleneck issue but have also enabled the development of computing applications with high accuracy. In this study, an artificial neural architecture based on a 10 × 10 IGZO memristor array is presented to emulate synaptic dynamics for performing artificial intelligence (AI) computing with high recognition accuracy rate. The large area 10 × 10 IGZO memristor array was fabricated using the photolithography method, resulting in stable and reliable memory operations. The bipolar switching at −2 V–2.5 V, endurance of 500 cycles, retention of >104 s, and uniform Vset/Vreset operation of 100 devices were achieved by modulating the oxygen vacancy in the IGZO film. The emulation of electric synaptic dynamics was also observed, including potentiation-depression, multilevel long-term memory (LTM), and multilevel short-term memory (STM), revealing highly linear and stable synaptic functions at different modulated pulse settings. Additionally, electrical modeling (HSPICE) with vector-matrix measurements and simulation of various artificial neural network (ANN) algorithms, such as convolution neural network (CNN) and spiking neural network (SNN), were performed, demonstrating a linear increase in current accumulation with high recognition rates of 99.33 % and 86.46 %, respectively. This work provides a novel approach for overcoming the von Neumann bottleneck issue and emulating synaptic dynamics in various neural networks with high accuracy.

基于可扩展内存计算人工神经网络架构的大规模集成 IGZO 交叉条状忆阻器阵列
基于忆阻器阵列的神经形态系统不仅解决了冯-诺依曼瓶颈问题,还实现了高精度计算应用的开发。本研究提出了一种基于 10 × 10 IGZO 晶闸管阵列的人工神经结构,用于模拟突触动力学,以实现高识别准确率的人工智能(AI)计算。10 × 10 IGZO大面积忆阻器阵列是用光刻法制造的,因此可以稳定可靠地进行存储操作。通过调节 IGZO 薄膜中的氧空位,实现了 -2 V-2.5 V 的双极开关、500 次循环的耐久性、104 秒的保持时间以及 100 个器件均匀的 Vset/Vreset 操作。此外,还观察到了电突触动态仿真,包括电位增强-抑制、多级长期记忆(LTM)和多级短期记忆(STM),显示了不同调制脉冲设置下高度线性和稳定的突触功能。此外,还进行了带有向量矩阵测量的电气建模(HSPICE)以及各种人工神经网络(ANN)算法的模拟,如卷积神经网络(CNN)和尖峰神经网络(SNN),结果表明电流累积呈线性增长,识别率分别高达 99.33 % 和 86.46 %。这项研究为克服冯-诺依曼瓶颈问题和在各种神经网络中高精度模拟突触动态提供了一种新方法。
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来源期刊
CiteScore
11.30
自引率
3.90%
发文量
130
审稿时长
31 days
期刊介绍: Materials Today Nano is a multidisciplinary journal dedicated to nanoscience and nanotechnology. The journal aims to showcase the latest advances in nanoscience and provide a platform for discussing new concepts and applications. With rigorous peer review, rapid decisions, and high visibility, Materials Today Nano offers authors the opportunity to publish comprehensive articles, short communications, and reviews on a wide range of topics in nanoscience. The editors welcome comprehensive articles, short communications and reviews on topics including but not limited to: Nanoscale synthesis and assembly Nanoscale characterization Nanoscale fabrication Nanoelectronics and molecular electronics Nanomedicine Nanomechanics Nanosensors Nanophotonics Nanocomposites
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