A fully flexible circuit implementation of clique-based neural networks in 65-nm CMOS

Benoît Larras, Paul Chollet, C. Lahuec, F. Seguin, M. Arzel
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引用次数: 9

Abstract

Clique-based neural networks implement low-complexity functions working with a reduced connectivity between neurons. Thus, they address very specific applications operating with a very low energy budget. This paper proposes a flexible and iterative neural architecture able to implement multiple types of clique-based neural networks of up to 3968 neurons. The circuit has been integrated in a ST 65-nm CMOS ASIC and validated in the context of ECG classification. The network core reacts in 83ns to a stimulation and occupies a 0.21mm2 silicon area.
基于团的神经网络在65纳米CMOS上的全柔性电路实现
基于派系的神经网络实现了低复杂度的功能,神经元之间的连接减少了。因此,它们可以在非常低的能源预算下解决非常具体的应用。本文提出了一种灵活的迭代神经结构,能够实现多达3968个神经元的多种类型的基于团的神经网络。该电路已集成在ST 65纳米CMOS ASIC中,并在心电分类的背景下进行了验证。网络核心在83ns内对刺激作出反应,并占据0.21mm2的硅面积。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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