Dielectric-Engineered High-Speed, Low-Power, Highly Reliable Charge Trap Flash-Based Synaptic Device for Neuromorphic Computing beyond Inference

Authors
Kim, Joon PyoKim, Seong KwangPark, SeohakKuk, Song-hyeonKim, Tae yoonKim, Bong HoAhn, Seong-HunCho, Yong-HoonJeong, YeonJooChoi, Sung-YoolKim, Sanghyeon
Issue Date
2023-01
Publisher
American Chemical Society
Citation
Nano Letters, v.23, no.2, pp.451 - 461
Abstract
The coming of the big-data era brought a need for power-efficient computing that cannot be realized in the Von Neumann architecture. Neuromorphic computing which is motivated by the human brain can greatly reduce power consumption through matrix multiplication, and a device that mimics a human synapse plays an important role. However, many synaptic devices suffer from limited linearity and symmetry without using incremental step pulse programming (ISPP). In this work, we demonstrated a charge-trap flash (CTF)-based synaptic transistor using trap-level engineered Al2O3/Ta2O5/Al2O3 gate stack for successful neuromorphic computing. This novel gate stack provided precise control of the conductance with more than 6 bits. We chose the appropriate bias for highly linear and symmetric modulation of conductance and realized it with very short (25 ns) identical pulses at low voltage, resulting in low power consumption and high reliability. Finally, we achieved high learning accuracy in the training of 60000 MNIST images.
Keywords
MEMORY; ARRAYS; REQUIREMENTS; TRANSISTOR; SYNAPSES; NETWORK; neuromorphic computing; synaptic device; charge trap flash; gate stack; nonlinearity
ISSN
1530-6984
URI
https://pubs.kist.re.kr/handle/201004/75854
DOI
10.1021/acs.nanolett.2c03453
Appears in Collections:
KIST Article > 2023
Files in This Item:
There are no files associated with this item.
Export
RIS (EndNote)
XLS (Excel)
XML

qrcode

Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.

BROWSE