Quaternary synapses network for memristor-based spiking convolutional neural networks

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Abstract

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, 100µV op-amp offset voltage and 0.5% Single-Pole-Double-Throw switches noise.

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Sun, S. Y., Li, J., Li, Z., Liu, H., Liu, H., & Li, Q. (2019). Quaternary synapses network for memristor-based spiking convolutional neural networks. IEICE Electronics Express, 16(5). https://doi.org/10.1587/elex.16.20190004

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