Binarized Neural Network Accelerator Macro Using Ultralow-Voltage Retention SRAM for Energy Minimum-Point Operation

IF 2 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Journal on Exploratory Solid-State Computational Devices and Circuits Pub Date : 2022-11-30 DOI:10.1109/JXCDC.2022.3225744
Yusaku Shiotsu;Satoshi Sugahara
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引用次数: 1

Abstract

A binarized neural network (BNN) accelerator based on a processing-in-memory (PIM)/ computing-in-memory (CIM) architecture using ultralow-voltage retention static random access memory (ULVR-SRAM) is proposed for the energy minimum-point (EMP) operation. The BNN accelerator (BNA) macro is designed to perform stable inference operations at EMP and substantive power-gating (PG) using ULVR at an ultralow voltage (< EMP), which can be applied to fully connected layers (FCLs) with arbitrary shapes and sizes. The EMP operation of the BNA macro, which is enabled by applying the ULVR-SRAM to the macro, can dramatically improve the energy efficiency (TOPS/W) and significantly enlarge the number of parallelized multiply–accumulate (MAC) operations. In addition, the ULVR mode of the BNA macro, which also benefits from the usage of ULVR-SRAM, is effective at reducing the standby power. The proposed BNA macro can show a high energy efficiency of 65 TOPS/W for FCLs. This BNA macro concept using the ULVR-SRAM can be expanded to convolution layers, where the EMP operation is also expected to enhance the energy efficiency of convolution layers.
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用于能量最小点操作的超低电压保持SRAM二进制化神经网络加速器宏
提出了一种基于存储器中处理(PIM)/存储器中计算(CIM)结构的二进制神经网络(BNN)加速器,该加速器使用超低电压保持静态随机存取存储器(ULVR-SRAM)进行能量最小点(EMP)操作。BNN加速器(BNA)宏被设计为在超低电压(<EMP)下使用ULVR在EMP和实质性功率门控(PG)下执行稳定的推断操作,该操作可以应用于任意形状和大小的全连接层(FCL)。通过将ULVR-SRAM应用于宏,BNA宏的EMP操作可以显著提高能效(TOPS/W),并显著增加并行乘法-累加(MAC)操作的数量。此外,BNA宏的ULVR模式也受益于ULVR-SRAM的使用,在降低待机功率方面是有效的。所提出的BNA宏可以显示FCL的65TOPS/W的高能效。使用ULVR-SRAM的BNA宏概念可以扩展到卷积层,其中EMP操作也有望提高卷积层的能效。
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来源期刊
CiteScore
5.00
自引率
4.20%
发文量
11
审稿时长
13 weeks
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