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Physics-based modeling approaches of resistive switching devices for memory and in-memory computing applications

机译:用于存储器和内存计算应用的电阻式开关设备的基于物理的建模方法

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摘要

The semiconductor industry is currently challenged by the emergence of Internet of Things, Big data, and deep-learning techniques to enable object recognition and inference in portable computers. These revolutions demand new technologies for memory and computation going beyond the standard CMOS-based platform. In this scenario, resistive switching memory (RRAM) is extremely promising in the frame of storage technology, memory devices, and in-memory computing circuits, such as memristive logic or neuromorphic machines. To serve as enabling technology for these new fields, however, there is still a lack of industrial tools to predict the device behavior under certain operation schemes and to allow for optimization of the device properties based on materials and stack engineering. This work provides an overview of modeling approaches for RRAM simulation, at the level of technology computer aided design and high-level compact models for circuit simulations. Finite element method modeling, kinetic Monte Carlo models, and physics-based analytical models will be reviewed. The adaptation of modeling schemes to various RRAM concepts, such as filamentary switching and interface switching, will be discussed. Finally, application cases of compact modeling to simulate simple RRAM circuits for computing will be shown.
机译:物联网,大数据和深度学习技术的出现,使便携式计算机中的对象识别和推理成为可能,这给半导体行业带来了挑战。这些革命要求用于存储和计算的新技术超越基于CMOS的标准平台。在这种情况下,电阻切换存储器(RRAM)在存储技术,存储设备和内存计算电路(例如忆阻逻辑或神经形态机器)的框架中非常有前途。然而,为了用作这些新领域的使能技术,仍然缺少工业工具来预测某些操作方案下的器件行为并允许基于材料和堆叠工程来优化器件性能。这项工作概述了RRAM仿真的建模方法,技术水平的计算机辅助设计和用于电路仿真的高级紧凑模型。将审查有限元方法建模,动力学蒙特卡洛模型和基于物理的分析模型。将讨论建模方案对各种RRAM概念(如丝状交换和接口交换)的适应性。最后,将展示紧凑建模的应用案例,以模拟用于计算的简单RRAM电路。

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