具有增强特性的分段横杆结构上的神经形态电路

V. Ntinas, P. Karakolis, G. Sirakoulis, P. Dimitrakis
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引用次数: 3

摘要

通用处理器已广泛应用于各种计算和建模应用中。然而,在模拟神经网络时,它们的性能并不总是足够的,而神经网络被广泛应用于信号处理和模式识别。在这项工作中,在系统研究了这种神经网络的计算需求并探索了可以加速上述应用的可用硬件解决方案之后,提出了一种现代神经形态电路结构,其操作归功于忆阻器器件和分段横杆结构。通过结合这两种技术,神经形态电路设计具有高计算性能,而不是集成规模和功耗。利用MNIST数据集,提出了一种基于优势忆阻器分段横条的非原位训练范式,准确率达到97%。同时,提出了一种新的基于1D1M结构的忆阻器调谐方法,提高了忆阻器的编程速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neuromorphic circuits on segmented crossbar architectures with enhanced properties
General purpose processors have been used in a wide variety of computational and modeling applications. However, their performance is not always sufficient when simulating neural networks, which are widely applied to signal processing and pattern recognition. In this work, after a systematic study of the computational requirements of such neural networks and an exploration of the available hardware solutions through which the aforementioned applications can be accelerated, a modern neuromorphic circuit structure is proposed with its operation attributed to memristor devices and segmented crossbar architecture. By coupling these two technologies, neuromorphic circuits have been designed with high computational performance versus integration scale and power consumption. An Ex-Situ training paradigm based on the advantageous memristor segmented crossbar is proposed, using the MNIST dataset and resulting at 97% accuracy. At the same time, a novel memristor tuning method on 1D1M configuration has been developed, able to increase the memristor programming speed.
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