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A low‐power charge‐based integrate‐and‐fire circuit for binarized‐spiking neural network.

Authors :
Duong, Quang‐Manh
Trinh, Quang‐Kien
Nguyen, Van‐Tinh
Dao, Dinh‐Ha
Luong, Duy‐Manh
Hoang, Van‐Phuc
Lin, Longyang
Deepu, John
Source :
International Journal of Circuit Theory & Applications; Jul2023, Vol. 51 Issue 7, p3404-3414, 11p
Publication Year :
2023

Abstract

Summary: This paper presents a charge‐based integrate‐and‐fire (IF) circuit for in‐memory binary spiking neural networks (BSNNs). The proposed IF circuit can mimic both addition and subtraction operations that permit better incorporation with in‐memory XNOR‐based synapses to implement the BSNN processing core. To evaluate the proposed design, we have developed a framework that incorporates the circuit's imperfections effects into the system‐level simulation. The array circuits use 2T‐2J Spin‐Transfer‐Torque Magnetoresistive RAM (STT‐MRAM) based on a 65‐nm commercial CMOS and a fitted magnetic tunnel junction (MTJ). The system model has been described in Pytorch to best fit the extracted parameters from circuit levels, including the cover of device nonidealities and process variations. The simulation results show that the proposed design can achieve a performance of 5.10 fJ/synapse and reaches 82.01% classification accuracy for CIFAR‐10 under process variation. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00989886
Volume :
51
Issue :
7
Database :
Complementary Index
Journal :
International Journal of Circuit Theory & Applications
Publication Type :
Academic Journal
Accession number :
164681885
Full Text :
https://doi.org/10.1002/cta.3573