多用途 RRAM 重置和保持仿真的物理信息学习

Tianshu Hou, Yuan Ren, Wenyong Zhou, Can Li, Zhongrui Wang, Haibao Chen, Ngai Wong
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引用次数: 0

摘要

电阻式随机存取存储器(RRAM)是计算内存(CIM)边缘人工智能的新兴平台,前景广阔。然而,由于多物理场的影响,RRAM 的开关机制和可控性仍存在争议。虽然物理信息神经网络(PINNs)在许多应用中成功实现了无网格多物理场求解,但在 RRAM 分析中,其精度并不令人满意。这项工作研究了 RRAM 器件的特性--保持和重置转换,这是用三维轴对称几何中导电丝 (CF) 的溶解来描述的。具体来说,我们通过偏微分方程 (PDE) 的解法,对离子迁移、焦耳加热和载流子传输进行了新颖的神经网络表征。受物理信息学习、变量分离(SOV)方法和神经切核(NTK)理论的启发,我们提出了一种定制的三通道全连接网络和一种改进的随机傅里叶特征(mRFF)嵌入策略,以捕捉自洽多物理解的多尺度特性和适当的频率特性。所提出的模型省去了 RRAM 分析中广泛使用的网格划分和时间迭代。随后的实验证实,该模型的准确性优于同类物理信息方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Physics-Informed Learning for Versatile RRAM Reset and Retention Simulation
Resistive random-access memory (RRAM) constitutes an emerging and promising platform for compute-inmemory (CIM) edge AI. However, the switching mechanism and controllability of RRAM are still under debate owing to the influence of multiphysics. Although physics-informed neural networks (PINNs) are successful in achieving mesh-free multiphysics solutions in many applications, the resultant accuracy is not satisfactory in RRAM analyses. This work investigates the characteristics of RRAM devices - retention and reset transition which are described in terms of the dissolution of a conductive filament (CF) in 3-D axis-symmetric geometry. Specifically, we provide a novel neural network characterization of ion migration, Joule heating, and carrier transport, governed by the solutions of partial differential equations (PDEs). Motivated by physics-informed learning, the separation of variables (SOV) method and the neural tangent kernel (NTK) theory, we propose a customized 3-channel fully-connected network and a modified random Fourier feature (mRFF) embedding strategy to capture multiscale properties and appropriate frequency features of the self-consistent multiphysics solutions. The proposed model eliminates the need for grid meshing and temporal iterations widely used in RRAM analysis. Experiments then confirm its superior accuracy over competing physics-informed methods.
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