基于SET逆变器结构的神经网络:神经启发记忆

B. Hafsi, Rabii Elmissaoui, A. Kalboussi
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引用次数: 0

摘要

本文提出了构建大规模单电子神经网络的基本模块。这个宏模块完全由SET逆变电路组成。我们介绍并讨论了该装置的基本部件。利用MATLAB和SIMON对基于蒙特卡罗方法的单电子隧道器件和电路模拟器进行了完整的设计和仿真。为了在SIMON中正确地模拟该电路,并与之前的SPICE模拟结果进行比较,必须采取特殊措施。此外,我们研究了网络的一部分作为存储单元,并结合了SET的极低功耗特性和紧凑的设计。
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Neural Network Based on SET Inverter Structures: Neuro-Inspired Memory
This paper presents a basic block for building large-scale single-electron neural networks. This macro block is completely composed of SET inverter circuits. We present and discuss the basic parts of this device. The full design and simulation results were done using MATLAB and SIMON, which are a single-electron tunnel device and circuit simulator based on a Monte Carlo method. Special measures had to be taken in order to simulate this circuit correctly in SIMON and compare results with those of SPICE simulation done before. Moreover, we study part of the network as a memory cell with the idea of combining the extremely low-power properties of the SET and the compact design.
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