基于减少循环变化的界面电阻交换可靠的神经形态计算

Yuan Zhu, Jia-sheng Liang, Xun Shi, Zhen Zhang
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引用次数: 0

摘要

忆阻器作为人工神经网络(ann)的候选突触器件,在高效的神经形态计算中具有广阔的应用前景。然而,由于纤维形成和烧蚀的随机性,常用的丝状忆阻器通常表现出较大的循环变化,这将不可避免地降低计算精度。在这里,我们证明了在纳米级ag2基记忆电阻器中,接触界面上的电阻开关(RS)可能是减少循环变化的有前途的解决方案。当Ag2S记忆电阻器在接触界面通过肖特基势垒高度修改以无丝接口RS操作时,在104个开关周期内,其周期间变化极小,仅为1.4%。这与从同一装置中提取的长丝RS的变化(28.9%)形成直接对比。接口RS还可以模拟突触功能和心理行为。最后在一个简化的人工神经网络中证明了它比细丝RS更好的学习能力,饱和精度接近99.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interface Resistance-Switching with Reduced Cyclic Variations for Reliable Neuromorphic Computing
Abstract As a synaptic device candidate for artificial neural networks (ANNs), memristor holds great promise for efficient neuromorphic computing. However, commonly used filamentary memristors normally exhibit large cyclic variations due to the stochastic nature of filament formation and ablation, which will inevitably degrade the computing accuracy. Here we demonstrate, in nanoscale Ag2S-based memristors, that resistance-switching (RS) at the contact interface can be a promising solution to reduce cyclic variations. When the Ag2S memristor is operated with filament-free interface RS via Schottky barrier height modification at the contact interface, it shows an ultra-small cycle-to-cycle variation of 1.4% during 104 switching cycles. This is in direct contrast to the variation (28.9%) of filament RS extracted from the same device. Interface RS can also emulate synaptic functions and psychological behavior. Its improved learning ability over filament RS, with a higher saturated accuracy approaching 99.6 %, is finally demonstrated in a simplified ANN.
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