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首页> 外文期刊>Emerging and Selected Topics in Circuits and Systems, IEEE Journal on >Impact of Non-Ideal Characteristics of Resistive Synaptic Devices on Implementing Convolutional Neural Networks
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Impact of Non-Ideal Characteristics of Resistive Synaptic Devices on Implementing Convolutional Neural Networks

机译:电阻性突触设备的非理想特性对实现卷积神经网络的影响

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摘要

Emerging non-volatile memory (eNVM) based resistive synaptic devices have shown great potential for implementing deep neural networks (DNNs). However, the eNVM devices typically suffer from various non-ideal effects which may degrade the performance of the system. Based on a representative convolutional neural network (CNN) model for CIFAR-10 dataset, this paper comprehensively investigates the impact of those non-ideal characteristics, such as nonlinearity and asymmetry of conductance tuning, variations, endurance and retention, on the training/inference accuracy. The compact models of the device non-ideal effects are incorporated into the TensorFlow framework. Our simulation results suggest that 1) the training accuracy is more sensitive to the asymmetry of conductance tuning than the nonlinearity; 2) the conductance range variation does not degrade the training accuracy, instead, a small variation can even reduce the accuracy loss introduced by asymmetry; 3) device-to-device variation can also remedy the accuracy loss due to asymmetry while cycle-to-cycle variation leads to significant accuracy degradation; 4) the accuracy degradation will not be noticeable if the endurance cycles are more than 7,000 cycles; and 5) different drifting modes affect the inference accuracy differently, and the best case is where the conductance is drifting up/down randomly.
机译:新兴的基于非易失性存储器(eNVM)的电阻性突触设备显示了实现深度神经网络(DNN)的巨大潜力。但是,eNVM设备通常会遭受各种不理想的影响,这可能会降低系统的性能。基于针对CIFAR-10数据集的代表性卷积神经网络(CNN)模型,本文全面研究了非理想特性(如电导调谐的非线性和不对称性,变化,耐力和保持力)对训练/推理的影响准确性。设备非理想效果的紧凑模型已合并到TensorFlow框架中。我们的仿真结果表明:1)训练精度对电导调谐的不对称性比非线性更敏感; 2)电导范围变化不会降低训练精度,相反,很小的变化甚至可以减少由不对称引起的精度损失; 3)器件之间的差异还可以弥补由于不对称引起的精度损失,而周期之间的差异会导致精度显着下降; 4)如果耐久性周期超过7,000个周期,则精度下降不会很明显; 5)不同的漂移模式对推理精度的影响不同,最好的情况是电导随机地上下漂移。

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