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Investigation of Deep Spiking Neural Networks Utilizing Gated Schottky Diode as Synaptic Devicesopen access

Authors
Lee, Sung-TaeBae, Jong-Ho
Issue Date
Nov-2022
Publisher
MDPI
Keywords
neuromorphic device; in-memory computing; hardware-based neural networks; deep learning; spiking neural networks; off-chip learning; gated Schottky diode; synaptic device
Citation
MICROMACHINES, v.13, no.11
Journal Title
MICROMACHINES
Volume
13
Number
11
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/86227
DOI
10.3390/mi13111800
ISSN
2072-666X
Abstract
Deep learning produces a remarkable performance in various applications such as image classification and speech recognition. However, state-of-the-art deep neural networks require a large number of weights and enormous computation power, which results in a bottleneck of efficiency for edge-device applications. To resolve these problems, deep spiking neural networks (DSNNs) have been proposed, given the specialized synapse and neuron hardware. In this work, the hardware neuromorphic system of DSNNs with gated Schottky diodes was investigated. Gated Schottky diodes have a near-linear conductance response, which can easily implement quantized weights in synaptic devices. Based on modeling of synaptic devices, two-layer fully connected neural networks are trained by off-chip learning. The adaptation of a neuron's threshold is proposed to reduce the accuracy degradation caused by the conversion from analog neural networks (ANNs) to event-driven DSNNs. Using left-justified rate coding as an input encoding method enables low-latency classification. The effect of device variation and noisy images to the classification accuracy is investigated. The time-to-first-spike (TTFS) scheme can significantly reduce power consumption by reducing the number of firing spikes compared to a max-firing scheme.
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Lee, Sung Tae
IT (전자공학부(시스템반도체전공))
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