Department of Precision Instrument, Center for Brain Inspired Computing Research, Tsinghua University, 100084, Beijing, China.
Department of Materials Science and Technology, Center for Future Semiconductor Technology, UNIST, 44919, Ulsan, South Korea.
Nat Commun. 2021 Jan 12;12(1):319. doi: 10.1038/s41467-020-20519-z.
Neural networks trained by backpropagation have achieved tremendous successes on numerous intelligent tasks. However, naïve gradient-based training and updating methods on memristors impede applications due to intrinsic material properties. Here, we built a 39 nm 1 Gb phase change memory (PCM) memristor array and quantified the unique resistance drift effect. On this basis, spontaneous sparse learning (SSL) scheme that leverages the resistance drift to improve PCM-based memristor network training is developed. During training, SSL regards the drift effect as spontaneous consistency-based distillation process that reinforces the array weights at the high-resistance state continuously unless the gradient-based method switches them to low resistance. Experiments show that the SSL not only helps the convergence of network with better performance and sparsity controllability without additional computation in handwritten digit classification. This work promotes the learning algorithms with the intrinsic properties of memristor devices, opening a new direction for development of neuromorphic computing chips.
基于反向传播的神经网络在许多智能任务上取得了巨大的成功。然而,基于梯度的朴素训练和更新方法在受到固有材料特性的影响下,阻碍了它们的应用。在这里,我们构建了一个 39nm1Gb 相变存储器 (PCM) 忆阻器阵列,并量化了独特的电阻漂移效应。在此基础上,开发了一种利用电阻漂移来改进基于 PCM 的忆阻器网络训练的自发稀疏学习 (SSL) 方案。在训练过程中,SSL 将漂移效应视为自发一致性的蒸馏过程,持续强化高阻状态下的阵列权重,除非基于梯度的方法将它们切换到低阻状态。实验表明,SSL 不仅有助于网络的收敛,提高手写数字分类的性能和稀疏性可控性,而且无需额外的计算。这项工作促进了具有忆阻器设备固有特性的学习算法的发展,为神经形态计算芯片的发展开辟了新的方向。