Implementation of two-step gradual reset scheme for enhancing state uniformity of 2D hBN-based memristors for image processing

D. Woo, Gichang Noh, E. Park, Min Jee Kim, Dae Kyu Lee, Yong Woo Sung, Jaewook Kim, Yeonjoo Jeong, Jongkil Park, Seong Gon Park, Hyun Jae Jang, Nakwon Choi, Y. Jo, J. Y. Kwak
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引用次数: 0

Abstract

In-memory computing facilitates efficient parallel computing based on the programmable memristor crossbar array. Proficient hardware image processing can be implemented by utilizing the analog vector-matrix operation with multiple memory states of the nonvolatile memristor in the crossbar array. Among various materials, 2D materials are great candidates for a switching layer of nonvolatile memristors, demonstrating low-power operation and electrical tunability through their remarkable physical and electrical properties. However, the intrinsic device-to-device (D2D) variation of memristors within the crossbar array can degrade the accuracy and performance of in-memory computing. Here, we demonstrate hardware image processing using the fabricated 2D hexagonal boron nitride-based memristor to investigate the effects of D2D variation on the hardware convolution process. The image quality is evaluated by peak-signal-to-noise ratio, structural similarity index measure, and Pratt’s figure of merit and analyzed according to D2D variations. Then, we propose a novel two-step gradual reset programming scheme to enhance the conductance uniformity of multiple states of devices. This approach can enhance the D2D variation and demonstrate the improved quality of the image processing result. We believe that this result suggests the precise tuning method to realize high-performance in-memory computing.
实施两步渐进复位方案,提高基于二维 hBN 的忆阻器在图像处理中的状态一致性
基于可编程忆阻器横条阵列的内存计算有助于实现高效的并行计算。利用模拟矢量矩阵运算和交叉条阵列中非易失性忆阻器的多种存储状态,可以实现熟练的硬件图像处理。在各种材料中,二维材料是非易失性忆阻器开关层的最佳候选材料,它们具有显著的物理和电气特性,可实现低功耗运行和电气可调性。然而,交叉条阵列中的忆阻器在器件到器件(D2D)之间的内在差异会降低内存计算的精度和性能。在这里,我们展示了使用基于氮化硼的二维六边形忆阻器进行的硬件图像处理,以研究 D2D 变化对硬件卷积过程的影响。图像质量通过峰值信噪比、结构相似性指数度量和普拉特优点值进行评估,并根据 D2D 变化进行分析。然后,我们提出了一种新颖的两步渐进重置编程方案,以增强多个器件状态的电导均匀性。这种方法可以增强 D2D 变化,并证明了图像处理结果质量的提高。我们相信,这一结果为实现高性能内存计算提供了精确的调整方法。
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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