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首页> 外文期刊>Progress in Artificial Intelligence >Solving Overlapping Pattern Issues in On-Chip Learning of Bio-Inspired Neuromorphic System with Synaptic Transistors
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Solving Overlapping Pattern Issues in On-Chip Learning of Bio-Inspired Neuromorphic System with Synaptic Transistors

机译:用突触晶体管求解生物启发神经晶体系统片上学习的重叠模式问题

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摘要

Recently, bio-inspired neuromorphic systems have been attracting widespread interest thanks to their energy-efficiency compared to conventional von Neumann architecture computing systems. Previously, we reported a silicon synaptic transistor with an asymmetric dual-gate structure for the direct connection between synaptic devices and neuron circuits. In this study, we study a hardware-based spiking neural network for pattern recognition using a binary modified National Institute of Standards and Technology (MNIST) dataset with a device model. A total of three systems were compared with regard to learning methods, and it was confirmed that the feature extraction of each pattern is the most crucial factor to avoiding overlapping pattern issues and obtaining a high pattern classification ability.
机译:最近,与传统的von Neumann建筑计算系统相比,生物启发的神经形态系统一直吸引了广泛的兴趣。 以前,我们报道了一种具有不对称双栅极结构的硅突触晶体管,用于在突触装置和神经元电路之间的直接连接。 在本研究中,我们研究了一种基于硬件的尖峰神经网络,用于使用二进制修改的国家标准和技术研究所(MNIST)数据集进行模式识别,具有设备模型。 在学习方法方面比较了三个系统,并且证实了每个模式的特征提取是最重要的因素,以避免重叠的模式问题并获得高模式分类能力。

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