A novel programming circuit for memristors

IF 2.6 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Shengtao Tu , Jinyu Li , Yanyun Ren , Qin Jiang , Shisheng Xiong
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引用次数: 0

Abstract

Memristor has attracted a lot of interest due to its high processing speed, low power consumption and high integration ability, which is critical for electronic systems and memory-centric computing. However, the memristor programming circuit and strategy are still inflexible and complex, since the signal generator/collector and stimulate pulse must be carefully matched and designed based on memristor intrinsic characteristics without reconfigurable. Here, a simple and effective circuit only consists a parallel reference-resistor-and-NMOS is designed to program memristor with a >99% memristance precision. And the amplitude and width of stimulate pulse are fixed to ±4 V and 5 ms, respectively. In order to cope with the device variation, such as ±10% tolerance of transition voltage, an optimized programming strategy was proposed and demonstrated great robustness. Additionally, a set of reference resistors and NMOSs have been added to facilitate multi-level memristance operation without requiring any changes to the circuit structure. This program circuit was also employed to program memristor crossbar remains 99% precision. In the end, a memristor-based convolutional neural network which controlled by our optimized programming circuit was used for image recognition, and 89.36% accuracy can be achieved even under 15.8% memristance tolerance. This novel circuit demonstrates a simple and flexible strategy in memristor programming, providing a new way to control memristor crossbar for practical application.

Abstract Image

一种新型的忆阻器编程电路
忆阻器由于其高处理速度、低功耗和高集成能力而引起了人们的广泛关注,这对于电子系统和以存储为中心的计算至关重要。然而,忆阻器编程电路和策略仍然不够灵活和复杂,因为信号发生器/集电极和刺激脉冲必须根据忆阻器的固有特性进行精心匹配和设计,而不能重构。本文设计了一种简单有效的电路,仅由一个并联参考电阻组成,并设计了nmos来编程忆阻器,具有99%的忆阻精度。刺激脉冲的振幅和宽度分别固定为±4 V和5 ms。为了应对器件变化(如±10%的过渡电压公差),提出了一种优化的编程策略,该策略具有较强的鲁棒性。此外,还增加了一组参考电阻和NMOSs,以方便多级忆阻操作,而无需对电路结构进行任何更改。采用该编程电路对忆阻器横条进行编程,精度保持在99%。最后,利用我们优化的编程电路控制的基于忆阻器的卷积神经网络进行图像识别,即使在15.8%的忆阻容限下,准确率也能达到89.36%。该电路展示了一种简单灵活的忆阻器编程策略,为实际应用提供了一种控制忆阻器横条的新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Microelectronic Engineering
Microelectronic Engineering 工程技术-工程:电子与电气
CiteScore
5.30
自引率
4.30%
发文量
131
审稿时长
29 days
期刊介绍: Microelectronic Engineering is the premier nanoprocessing, and nanotechnology journal focusing on fabrication of electronic, photonic, bioelectronic, electromechanic and fluidic devices and systems, and their applications in the broad areas of electronics, photonics, energy, life sciences, and environment. It covers also the expanding interdisciplinary field of "more than Moore" and "beyond Moore" integrated nanoelectronics / photonics and micro-/nano-/bio-systems. Through its unique mixture of peer-reviewed articles, reviews, accelerated publications, short and Technical notes, and the latest research news on key developments, Microelectronic Engineering provides comprehensive coverage of this exciting, interdisciplinary and dynamic new field for researchers in academia and professionals in industry.
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