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Nonvolatile, Spin-Based, and Low-Power Inexact Full Adder Circuits for Computing-in-Memory Image Processing

机译:用于存储器中图像处理的非易失性,基于自旋和低功耗的不精确全加法器电路

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摘要

Deep submicron conventional complementary metal oxide semiconductor (CMOS) technology is facing various issues such as high static power consumption due to the increasing leakage currents. In recent years, spin-based technologies like magnetic tunnel junctions (MTJ) have emerged and shown some fascinating features to overcome the aforesaid issues of CMOS technology. The hybrid MTJ/CMOS circuits offer low power consumption, nonvolatility, and high performance. This paper proposes two novel hybrid MTJ/CMOS approximate full-adder circuits (AXMA) for low power approximate computing-in-memory architectures. The proposed AXMAs offer low area, high sensing speed, considerable lower energy consumption, and the lowest power delay product (PDP) than the considered antecedent counterparts. The proposed AXMAs also introduce the advantage of full nonvolatility to the systems. This feature allows the system to be powered off during the idle modes in order to reduce the static power without the need for any retention parts or loss of data. Applications of the proposed AXMAs in digital image processing and their effect on the quality of images considering some relevant metrics like peak signal-to-noise ratio (PSNR) and mean structural similarity (MSSIM) are also investigated using the MATLAB software.
机译:深亚微米的常规互补金属氧化物半导体(CMOS)技术由于泄漏电流增加而面临各种问题,例如静态功耗高。近年来,诸如磁性隧道结(MTJ)之类的基于自旋的技术已经出现,并显示出一些令人着迷的特征来克服上述CMOS技术的问题。混合MTJ / CMOS电路具有低功耗,非易失性和高性能。本文针对低功耗近似内存计算架构,提出了两种新颖的混合MTJ / CMOS近似全加器电路(AXMA)。拟议的AXMA与以前的同类产品相比,具有面积小,感应速度快,能耗低,功耗延迟产品(PDP)最低的优点。提议的AXMA还为系统引入了完全非易失性的优势。此功能允许在空闲模式下关闭系统电源,以减少静态功耗,而无需任何保留部件或数据丢失。还使用MATLAB软件研究了建议的AXMA在数字图像处理中的应用及其对图像质量的影响,其中考虑了一些相关指标,例如峰值信噪比(PSNR)和平均结构相似度(MSSIM)。

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