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Multilayer Ferromagnetic Spintronic Devices for Neuromorphic Computing Applications

Nanoscale(2024)SCI 2区SCI 3区

King Abdullah Univ Sci & Technol KAUST

Cited 1|Views14
Abstract
Based on ferromagnetic thin film systems, spintronic devices show substantial prospects for energy-efficient memory, logic, and unconventional computing paradigms. This paper presents a multilayer ferromagnetic spintronic device's experimental and micromagnetic simulation-based realization for neuromorphic computing applications. The device exhibits a temperature-dependent magnetic field and current-controlled multilevel resistance state switching. To study the scalability of the multilayer spintronic devices for neuromorphic applications, we further simulated the scaled version of the multilayer system read using the magnetic tunnel junction (MTJ) configuration down to 64 nm width. We show the device applications in hardware neural networks using the multiple resistance states as the synaptic weights. A varying pulse amplitude scheme is also proposed to improve the device's weight linearity. The simulated device shows an energy dissipation of 1.23 fJ for a complete potentiation/depression. The neural network based on these devices was trained and tested on the MNIST dataset using a supervised learning algorithm. When integrated as a weight into a 3-layer, fully connected neural network, these devices achieve recognition accuracy above 90% on the MNIST dataset. Thus, the proposed device demonstrates significant potential for neuromorphic computing applications.
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Antiferromagnetic Spintronics,Neuromorphic Computing,Ferromagnetic Materials,Spintronics
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要点】:本文提出了一种基于多层铁磁薄膜的自旋电子器件,实现了温度依赖的磁场和电流控制的电阻状态多级切换,用于类神经网络计算应用,并在MNIST数据集上取得了超过90%的识别准确率。

方法】:通过实验和微磁模拟相结合的方式,研究多层铁磁自旋电子器件的温度特性和电学特性。

实验】:作者对多层自旋电子器件进行了尺度缩放模拟,采用磁隧道结(MTJ)配置将其宽度缩放至64纳米,并在硬件神经网络中应用多级电阻状态作为突触权重。通过变化的脉冲幅度方案提高了器件权重的线性度。该器件在完成一次完整的增强/抑制过程中能耗为1.23飞焦(fJ)。基于这些器件的神经网络在MNIST数据集上进行训练和测试,使用监督学习算法,作为三层全连接神经网络中的权重。