A data driven model of TiO2 printed memristors

L. V. Gambuzza, N. Samardzic, S. Dautovic, M. Xibilia, S. Graziani, L. Fortuna, G. Stojanović, M. Frasca
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引用次数: 3

Abstract

After the fabrication of several devices showing memristive switching behavior, recently a growing interest to the realization of dynamical nonlinear circuits based on memristors has been manifested. Currently, many memristor circuits have been mostly conceived on the basis of theoretical memristor models. However, in order to analyze the dynamical behavior of memristor circuits with real components and to implement them, the characteristics of the fabricated devices have to be included in the models used. To this aim, a compact data-driven model is proposed in this paper. The model is based on neural networks and is derived starting from experimental measurements performed on printed TiO2 memristors.
TiO2印刷忆阻器的数据驱动模型
在制造了几种具有忆阻开关行为的器件之后,近年来人们对基于忆阻器的动态非线性电路的实现越来越感兴趣。目前,许多忆阻电路大多是在理论忆阻模型的基础上构思的。然而,为了分析具有真实元件的忆阻电路的动态行为并实现它们,所使用的模型必须包含制造器件的特性。为此,本文提出了一种紧凑的数据驱动模型。该模型基于神经网络,并从对印刷TiO2忆阻器进行的实验测量开始推导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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