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基于碳纳米管突触的神经形态功能学习。

Neuromorphic function learning with carbon nanotube based synapses.

机构信息

CEA, IRAMIS, Service de Physique de L’Etat Condensé (CNRS URA 2464), Laboratoire d’Electronique Moléculaire, Gif-sur-Yvette, France.

出版信息

Nanotechnology. 2013 Sep 27;24(38):384013. doi: 10.1088/0957-4484/24/38/384013.

Abstract

The principle of using nanoscale memory devices as artificial synapses in neuromorphic circuits is recognized as a promising way to build ground-breaking circuit architectures tolerant to defects and variability. Yet, actual experimental demonstrations of the neural network type of circuits based on non-conventional/non-CMOS memory devices and displaying function learning capabilities remain very scarce. We show here that carbon-nanotube-based memory elements can be used as artificial synapses, combined with conventional neurons and trained to perform functions through the application of a supervised learning algorithm. The same ensemble of eight devices can notably be trained multiple times to code successively any three-input linearly separable Boolean logic function despite device-to-device variability. This work thus represents one of the very few demonstrations of actual function learning with synapses based on nanoscale building blocks. The potential of such an approach for the parallel learning of multiple and more complex functions is also evaluated.

摘要

利用纳米级存储器件作为神经形态电路中的人工突触的原理,被认为是构建对缺陷和可变性具有容错能力的突破性电路架构的一种有前途的方法。然而,基于非传统/非 CMOS 存储器件并显示功能学习能力的神经网络类型电路的实际实验演示仍然非常稀缺。我们在这里表明,基于碳纳米管的存储元件可用作人工突触,与传统神经元结合,并通过应用监督学习算法进行功能训练。同样的八器件组合可以显著地被多次训练,以在器件间变化的情况下,连续对任意三个输入的线性可分布尔逻辑函数进行编码。因此,这项工作代表了基于纳米级构建块的实际功能学习的少数演示之一。还评估了这种方法在并行学习多个更复杂功能方面的潜力。

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