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Low-Consumption Neuromorphic Memristor Architecture Based on Convolutional Neural Networks

机译:基于卷积神经网络的低消耗神经膜架构

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With the rapid development of VLSI industry, the research of intelligent applications moves towards IoT edge computing. While the power consumption and area cost of deep neural networks usually exceed the hardware limitation of edge devices. In this paper, we propose a low-power neural network architecture to address such problem. We simplify the current popular convolutional neural networks structure, and utilize the memristor crossbar to store weights to execute convolution operation in parallel, and we present the spiking convolutional neural networks. At the same time, we proposed a performance metrics V to help provide design guidelines for choosing the parameters of the network.
机译:随着VLSI行业的快速发展,智能应用的研究朝向物联网升温计算。虽然深神经网络的功耗和面积成本通常超过边缘设备的硬件限制。在本文中,我们提出了一个低功率的神经网络架构来解决此类问题。我们简化了当前流行的卷积神经网络结构,并利用函数横梁来存储权重以并行执行卷积操作,并且我们展示了尖峰卷积神经网络。与此同时,我们提出了一种性能指标v,以帮助提供用于选择网络参数的设计指南。

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