Simulation and Optimization of IGZO-Based Neuromorphic System for Spiking Neural Networks

IEEE JOURNAL OF THE ELECTRON DEVICES SOCIETY(2024)

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摘要
In this paper, we conducted a simulation of an indium-gallium-zinc oxide (IGZO)-based neuromorphic system and proposed layer-by-layer membrane capacitor (C-mem) optimization for integrate-and-fire (I&F) neuron circuits to minimize the accuracy drop in spiking neural network (SNN). The fabricated synaptic transistor exhibited linear 32 synaptic weights with a large dynamic range (similar to 846 ), and an n-type-only IGZO I&F neuron circuit was proposed and verified by HSPICE simulation. The network, consisting of three fully connected layers, was evaluated with an offline learning method employing synaptic transistor and I&F circuit models for three datasets: MNIST, Fashion-MNIST, and CIFAR-10. For offline learning, accuracy drop can occur due to information loss caused by overflow or underflow in neurons, which is largely affected by C-mem. To address this problem, we introduced a layer-by-layer C-mem optimization method that adjusts appropriate C-mem for each layer to minimize the information loss. As a result, high SNN accuracy was achieved for MNIST, Fashion-MNIST, and CIFAR-10 at 98.42%, 89.16%, and 48.06%, respectively. Furthermore, the optimized system showed minimal accuracy degradation under device-to-device variation.
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关键词
Spiking neural network,neuromorphic system,IGZO,synaptic transistor,integrate-and-fire neuron
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