Chen Peng, Liu Fenghao, Lin Peng, Li Peihong, Xiao Yu, Zhang Bihua, Pan Gang
College of Computer Science and Technology, Zhejiang University, Hangzhou, China.
State Key Laboratory of Brain Machine Intelligence, Zhejiang University, Hangzhou, China.
Nat Commun. 2023 Oct 4;14(1):6184. doi: 10.1038/s41467-023-41958-4.
Emerging memories have been developed as new physical infrastructures for hosting neural networks owing to their low-power analog computing characteristics. However, accurately and efficiently programming devices in an analog-valued array is still largely limited by the intrinsic physical non-idealities of the devices, thus hampering their applications in in-situ training of neural networks. Here, we demonstrate a passive electrochemical memory (ECRAM) array with many important characteristics necessary for accurate analog programming. Different image patterns can be open-loop and serially programmed into our ECRAM array, achieving high programming accuracies without any feedback adjustments. The excellent open-loop analog programmability has led us to in-situ train a bilayer neural network and reached software-like classification accuracy of 99.4% to detect poisonous mushrooms. The training capability is further studied in simulation for large-scale neural networks such as VGG-8. Our results present a new solution for implementing learning functions in an artificial intelligence hardware using emerging memories.
由于其低功耗模拟计算特性,新兴存储器已被开发为用于承载神经网络的新型物理基础设施。然而,在模拟值阵列中准确且高效地对器件进行编程仍在很大程度上受到器件固有物理非理想特性的限制,从而阻碍了它们在神经网络原位训练中的应用。在此,我们展示了一种具有精确模拟编程所需许多重要特性的无源电化学存储器(ECRAM)阵列。不同的图像模式可以开环方式串行编程到我们的ECRAM阵列中,无需任何反馈调整即可实现高编程精度。出色的开环模拟可编程性使我们能够对双层神经网络进行原位训练,并在检测毒蘑菇时达到了99.4%的类似软件的分类准确率。还针对诸如VGG-8等大规模神经网络在模拟中进一步研究了其训练能力。我们的结果为使用新兴存储器在人工智能硬件中实现学习功能提供了一种新的解决方案。