Adaptive Spiking Neural Network Neuromorphic Hardware for Interfacing Between Emerging Neuron and Synaptic Devices

Authors
Kim, Min JeeIm, JaegwangKim, KeonheeJo, YooyeonNoh, GichangPark, EunpyoLee, Dae KyuKim, InhoJeong, YeonJooLee, Hyung-MinKwak, Joon Young
Issue Date
2024-10
Publisher
IEEE
Citation
2024 Biomedical Circuits and Systems Conference
Abstract
This paper proposes an SNN-based system with 2T1R architecture capable of interfacing with emerging neuromorphic devices that emulate crucial components such as neurons and synapses in neural network. This system proposes a spike regenerator that enables the effective use of neuron device spike signals and a Spike-Timing-Dependent Plasticity (STDP) generator to update synaptic device utilizing update pulse train for the STDP. This compact system allows simple adjustments of regenerated waveforms and STDP pulse widths to meet various device specifications. The measurement results using hBN-based pre-synaptic neuron device and Cu:Te- based CBRAM synaptic device demonstrate the feasibility of learning through the system. This system supports on-chip learning network operations with various devices as well as hBN and Cu:Te devices. In the future research, this system can be expanded for large-scale array implementations.
ISSN
2163-4025
URI
https://pubs.kist.re.kr/handle/201004/152285
DOI
10.1109/BioCAS61083.2024.10798361
Appears in Collections:
KIST Conference Paper > 2024
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