Training artificial neural networks with memristive synapses: HSPICE-matlab co-simulation

A. Aggarwal, B. Hamilton
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引用次数: 4

Abstract

Researchers in the field of Neuromorphic Engineering are looking at ways to reduce the chip space required to mimic the huge processing capacity of the human brain and to simplify algorithms to train it. Since the recent fabrication of a memristor by the Hewlett Packard Company, there is a possibility to achieve both of these. With their crucial hysteresis properties, memristors can store charge during the training process and respond in a desired manner, electronically mimicking synapse behaviour. This arrangement can reduce chip space and potentially simplify the learning logic. This paper presents HSPICE modeling of an artificial neural network with memristive synapses and training it for `AND' logic. An alternative modification of the memristor model was tried to simplify the learning logic. Results show potential for application in neural circuits.
记忆突触训练人工神经网络:HSPICE-matlab联合仿真
神经形态工程领域的研究人员正在寻找方法,以减少模拟人脑巨大处理能力所需的芯片空间,并简化训练人脑的算法。由于惠普公司最近制造了一种忆阻器,这两种方法都有可能实现。由于其关键的滞后特性,记忆电阻器可以在训练过程中存储电荷并以期望的方式响应,电子模仿突触的行为。这种安排可以减少芯片空间,并有可能简化学习逻辑。本文提出了一种具有记忆突触的人工神经网络的HSPICE建模方法,并对其进行“与”逻辑训练。对忆阻器模型进行了改进,简化了学习逻辑。结果显示了在神经回路中的应用潜力。
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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