A Survey on the Modeling of Magnetic Tunnel Junctions for Circuit Simulation

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Active and Passive Electronic Components Pub Date : 2016-05-18 DOI:10.1155/2016/3858621
H. Lim, Seungjun Lee, Hyungsoon Shin
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引用次数: 10

Abstract

Spin-transfer torque-based magnetoresistive random access memory (STT-MRAM) is a promising candidate for universal memory that may replace traditional memory forms. It is expected to provide high-speed operation, scalability, low-power dissipation, and high endurance. MRAM switching technology has evolved from the field-induced magnetic switching (FIMS) technique to the spin-transfer torque (STT) switching technique. Additionally, material technology that induces perpendicular magnetic anisotropy (PMA) facilitates low-power operation through the reduction of the switching current density. In this paper, the modeling of magnetic tunnel junctions (MTJs) is reviewed. Modeling methods and models of MTJ characteristics are classified into two groups, macromodels and behavioral models, and the most important characteristics of MTJs, the voltage-dependent MTJ resistance and the switching behavior, are compared. To represent the voltage dependency of MTJ resistance, some models are based on physical mechanisms, such as Landau-Lifshitz-Gilbert (LLG) equation or voltage-dependent conductance. Some behavioral models are constructed by adding fitting parameters or introducing new physical parameters to represent the complex switching behavior of an MTJ over a wide range of input current conditions. Other models that are not based on physical mechanisms are implemented by simply fitting to experimental data.
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用于电路仿真的磁隧道结建模研究进展
基于自旋转移转矩的磁阻随机存取存储器(STT-MRAM)是一种很有前途的通用存储器,可以取代传统的存储器形式。它有望提供高速运行、可扩展性、低功耗和高耐用性。MRAM开关技术从场感应磁开关(FIMS)技术发展到自旋传递转矩开关(STT)技术。此外,诱导垂直磁各向异性(PMA)的材料技术通过降低开关电流密度来促进低功耗操作。本文对磁性隧道结(MTJs)的建模进行了综述。将MTJ特性的建模方法和模型分为宏观模型和行为模型两类,并对MTJ最重要的特性——电压相关的MTJ电阻和开关行为进行了比较。为了表示MTJ电阻的电压依赖性,一些模型基于物理机制,如Landau-Lifshitz-Gilbert (LLG)方程或电压依赖性电导。一些行为模型通过添加拟合参数或引入新的物理参数来表示大范围输入电流条件下MTJ的复杂开关行为。其他不基于物理机制的模型是通过简单地拟合实验数据来实现的。
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来源期刊
Active and Passive Electronic Components
Active and Passive Electronic Components ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
1.30
自引率
0.00%
发文量
1
审稿时长
13 weeks
期刊介绍: Active and Passive Electronic Components is an international journal devoted to the science and technology of all types of electronic components. The journal publishes experimental and theoretical papers on topics such as transistors, hybrid circuits, integrated circuits, MicroElectroMechanical Systems (MEMS), sensors, high frequency devices and circuits, power devices and circuits, non-volatile memory technologies such as ferroelectric and phase transition memories, and nano electronics devices and circuits.
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