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Synaptic device using a floating fin-body MOSFET with memory functionality for neural network

机译:使用浮动鳍式MOSFET具有内存功能的突触装置,用于神经网络

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We fabricate a floating fin-body MOSFET with charge trap layer on p-type (1 0 0) Si wafer and investigate the characteristics of the fabricated device as a synaptic device. To implement the long-term potentiation (LTP) and long-term depression (LTD), the change in conductance of the proposed device is investigated by adjusting the amount of charge in charge trap layer. A pair of synaptic device with these LTP and LTD is suggested to express the synaptic weight update in a multi-layer neural network. In addition, we show suitable weight-updating method using the proposed devices for implementing multi-layer neural networks. A 3-layer perceptron network consisted of 784 input, 200 hidden, and 10 output neurons was simulated using the conductance response of the proposed devices. In pattern recognition for 28 x 28 MNIST handwritten patterns, high learning performance with a classification accuracy of 95.74% is obtained when the unidirectional weight update method (B) is used.
机译:我们在p型(1 0 0)Si晶片上用电荷捕集层制造浮动翅膀的MOSFET,并研究制造装置作为突触装置的特性。为了实现长期增强(LTP)和长期凹陷(LTD),通过调节电荷陷阱层中的电荷量来研究所提出的装置的电导变化。建议具有这些LTP和LTD的一对突触装置以表达多层神经网络中的突触权重更新。此外,我们使用用于实现多层神经网络的所提出的设备来显示合适的重量更新方法。 3层的Perceptron网络由784输入,200个隐藏和10个输出神经元组成,使用所提出的装置的电导响应模拟10个输出神经元。在图案识别中,对于28 x 28 MNIST手写的图案,当使用单向权重更新方法(B)时,获得了95.74%的分类精度的高学习性能。

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