VCAM: Variation Compensation through Activation Matching for Analog Binarized Neural Networks

Jaehyun Kim, Chaeun Lee, Jihun Kim, Yumin Kim, C. Hwang, Kiyoung Choi
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引用次数: 7

Abstract

We propose an energy-efficient analog implementation of binarized neural network with a novel technique called VCAM, variation compensation through activation matching. The architecture consists of 1T1R ReRAM arrays and differential amplifiers for implementing synapses and neurons, respectively. To restore classification test accuracy degraded by process variation, we adjust the biases of the neurons to match their average output activations with those of ideal neurons. Experimental results show that the proposed approach recovers the accuracy to 98.55% on MNIST and 89.63% on CIFAR-10 even in the presence of 50% threshold voltage and 15% resistance variations at 3-sigma point. This result corresponds to the accuracy degradation of only 0.05% and 1.35%, respectively, compared to the ideal case.
基于激活匹配的模拟二值化神经网络变化补偿
我们提出了一种节能的二值化神经网络模拟实现方法,该方法采用一种新颖的VCAM技术,通过激活匹配进行变化补偿。该架构由1T1R ReRAM阵列和差分放大器组成,分别用于实现突触和神经元。为了恢复因过程变化而降低的分类测试精度,我们调整了神经元的偏差,使其平均输出激活与理想神经元的平均输出激活相匹配。实验结果表明,在阈值电压为50%、3-sigma点电阻变化为15%的情况下,该方法在MNIST和CIFAR-10上的准确率分别恢复到98.55%和89.63%。与理想情况相比,该结果对应的精度下降分别为0.05%和1.35%。
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