Open-loop analog programmable electrochemical memory array

被引:0
作者
Peng Chen
Fenghao Liu
Peng Lin
Peihong Li
Yu Xiao
Bihua Zhang
Gang Pan
机构
[1] Zhejiang University,College of Computer Science and Technology
[2] Zhejiang University,State Key Laboratory of Brain Machine Intelligence
来源
Nature Communications | / 14卷
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摘要
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.
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