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Quaternary synapses network for memristor-based spiking convolutional neural networks

机译:基于Memristor的峰值卷积神经网络的第四纪突触网络

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This paper proposes a method that renders the weights of the neural network with quaternary synapses map into the only four-level memristance of memristive devices. We show this method is capable of operating with a negligible loss in classification accuracy when the memristors utilized can store at least four unique values. Compared with other state-of-the-art methods, the method presented can achieve 98.65% accuracy under the 0.60M parameters. Systematic error analysis shows that the network can still reach over 95% accuracy under the condition of 95% yield of memristor crossbar array, 100 μV op-amp offset voltage and 0.5% Single-Pole-Double-Throw switches noise.
机译:本文提出了一种方法,使Neural网络的权重与第四纪突触映射成映射到Memristive设备的唯一四级存储区。当所使用的存储器可以存储至少四个唯一值时,我们显示该方法能够以可忽略的分类准确性损失运行。与其他最先进的方法相比,呈现的方法可以在0.60米参数下达到98.65%的精度。系统误差分析表明,网络仍然可以达到95%的精度,在映射器横梁阵列的95%屈服,100μV运算放大器偏移电压和0.5%单极双掷开关噪声下。

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