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首页> 外文期刊>IEEE transactions on biomedical circuits and systems >All Spin Artificial Neural Networks Based on Compound Spintronic Synapse and Neuron
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All Spin Artificial Neural Networks Based on Compound Spintronic Synapse and Neuron

机译:基于复合自旋电子突触和神经元的全自旋人工神经网络

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摘要

Artificial synaptic devices implemented by emerging post-CMOS non-volatile memory technologies such as Resistive RAM (RRAM) have made great progress recently. However, it is still a big challenge to fabricate stable and controllable multilevel RRAM. Benefitting from the control of electron spin instead of electron charge, spintronic devices, e.g., magnetic tunnel junction (MTJ) as a binary device, have been explored for neuromorphic computing with low power dissipation. In this paper, a compound spintronic device consisting of multiple vertically stacked MTJs is proposed to jointly behave as a synaptic device, termed as compound spintronic synapse (CSS). Based on our theoretical and experimental work, it has been demonstrated that the proposed compound spintronic device can achieve designable and stable multiple resistance states by interfacial and materials engineering of its components. Additionally, a compound spintronic neuron (CSN) circuit based on the proposed compound spintronic device is presented, enabling a multi-step transfer function. Then, an All Spin Artificial Neural Network (ASANN) is constructed with the CSS and CSN circuit. By conducting system-level simulations on the MNIST database for handwritten digital recognition, the performance of such ASANN has been investigated. Moreover, the impact of the resolution of both the CSS and CSN and device variation on the system performance are discussed in this work.
机译:通过新兴的后CMOS非易失性存储技术(例如电阻RAM(RRAM))实现的人工突触设备最近取得了长足的进步。但是,制造稳定且可控的多级RRAM仍然是一个很大的挑战。受益于电子自旋而不是电子电荷的控制,自旋电子器件(例如,磁性隧道结(MTJ)作为二进制器件)已被探索用于低功耗的神经形态计算。在本文中,提出了由多个垂直堆叠的MTJ组成的复合自旋电子器件,以共同充当突触设备,称为复合自旋电子突触(CSS)。根据我们的理论和实验工作,已经证明了所提出的复合自旋电子器件可以通过其组件的界面和材料工程实现可设计且稳定的多重电阻状态。此外,提出了一种基于所提出的复合自旋电子器件的复合自旋电子神经元(CSN)电路,该电路可实现多步传递函数。然后,使用CSS和CSN电路构建一个全自旋人工神经网络(ASANN)。通过在MNIST数据库上进行系统级仿真以进行手写数字识别,已经研究了这种ASANN的性能。此外,本文还讨论了CSS和CSN的分辨率以及设备变化对系统性能的影响。

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