Physics-based compact modelling of the analog dynamics of HfO x resistive memories

F. Vaccaro, S. Brivio, S. Perotto, A. G. Mauri, S. Spiga
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引用次数: 3

Abstract

Resistive random access memories (RRAMs) constitute a class of memristive devices particularly appealing for bio-inspired computing schemes. In particular, the possibility of achieving analog control of the electrical conductivity of RRAM devices can be exploited to mimic the behaviour of biological synapses in neuromorphic systems. With a view to neuromorphic computing applications, it turns out to be crucial to guarantee some features, among which a detailed device characterization, a mathematical modelling comprehensive of all the key features of the device both in quasi-static and dynamic conditions, a description of the variability due to the inherently stochasticity of the processes involved in the switching transitions. In this paper, starting from experimental data, we provide a modelling and simulation framework to reproduce the operative analog behaviour of HfO x -based RRAM devices under train of programming pulses both in the analog and binary operation mode. To this aim, we have calibrated the model by using a single set of parameters for the quasi-static current–voltage characteristics as well as switching kinetics and device dynamics. The physics-based compact model here settled captures the difference between the SET and the RESET processes in the I–V characteristics, as well as the device memory window both for strong and weak programming conditions. Moreover, the model reproduces the correct slopes of the highly non-linear kinetics curves over several orders of magnitudes in time, and the dynamic device response including the inherent device variability.
基于物理的HfO x电阻式存储器模拟动力学的紧凑建模
电阻式随机存取存储器(rram)是一类记忆器件,特别适用于仿生计算方案。特别是,实现对RRAM器件电导率的模拟控制的可能性可以用来模拟神经形态系统中生物突触的行为。从神经形态计算应用的角度来看,保证一些特征是至关重要的,其中包括详细的器件特性,在准静态和动态条件下综合器件所有关键特征的数学建模,由于涉及切换转换过程的固有随机性而引起的可变性的描述。在本文中,我们从实验数据出发,提供了一个建模和仿真框架,以再现基于HfO x的RRAM器件在模拟和二进制操作模式下的编程脉冲序列下的操作模拟行为。为此,我们通过使用一组准静态电流-电压特性以及开关动力学和器件动力学参数来校准模型。这里确定的基于物理的紧凑模型捕获了I-V特性中SET和RESET进程之间的差异,以及用于强编程条件和弱编程条件的设备内存窗口。此外,该模型在时间上再现了几个数量级的高度非线性动力学曲线的正确斜率,以及包括固有器件可变性在内的动态器件响应。
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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CiteScore
5.90
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0.00%
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