静态随机存取存储器
加法器
电容
GSM演进的增强数据速率
计算机科学
能量(信号处理)
电子工程
光电子学
物理
计算机硬件
工程类
CMOS芯片
人工智能
量子力学
电极
作者
Birudu Venu,Tirumalarao Kadiyam,Koteswararao Penumalli,Sivasankar Yellampalli,Ramesh Vaddi
标识
DOI:10.1088/1361-6641/ad3273
摘要
Abstract Computing in-memory (CiM) is an alternative to von-Neumann architectures for energy efficient AI edge computing architectures with CMOS scaling. Approximate computing in-memory (ACiM) techniques have also been recently proposed to further increase the energy efficiency of such architectures. In the first part of the work, a negative capacitance FET (NCFET) based 6T-SRAM CiM accurate full adder has been proposed, designed and performance benchmarked with equivalent baseline 40 nm CMOS design. Due to the steep slope characteristics of NCFET, at an increased ferroelectric layer thickness, T fe of 3 nm, the energy consumption of the proposed accurate NCFET based CiM design is ∼82.48% lower in comparison to the conventional/Non CiM full adder design and ∼85.27% lower energy consumption in comparison to the equivalent baseline CMOS CiM accurate full adder design at V DD = 0.5 V. This work further proposes a reconfigurable computing in-memory NCFET 6T-SRAM full adder design (the design which can operate both in accurate and approximate modes of operation). NCFET 6T-SRAM reconfigurable full adder design in accurate mode has ∼4.19x lower energy consumption and ∼4.47x lower energy consumption in approximation mode when compared to the baseline 40 nm CMOS design at V DD = 0.5 V, making NCFET based approximate CiM adder designs preferable for energy efficient AI edge CiM based computing architectures for DNN processing.
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