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High-Speed Nanoscale Ferroelectric Tunnel Junction for Multilevel Memory and Neural Network Computing.

Zijian WangZeyu GuanHaoyang SunZhen LuoHaoyu ZhaoHe WangYue Wei YinXiao-Guang Li
Published in: ACS applied materials & interfaces (2022)
Ferroelectric tunnel junction (FTJ) is one promising candidate for next-generation nonvolatile data storage and neural network computing systems. In this work, the high-performance 50 nm-diameter Au/Ti/PbZr 0.52 Ti 0.48 O 3 (∼3 nm, (111)-oriented)/Nb:SrTiO 3 (Nb: 0.7 wt %) FTJs are achieved to demonstrate the scaling down capability of FTJ. As a nonvolatile memory, the FTJ shows eight distinct resistance states (3 bits) with a large ON/OFF ratio (>10 3 ), and these states can be switched at a fast speed of 10 ns. Intriguingly, the long-term potentiation/depression and spike timing-dependent plasticity, that is, fundamental functions of biological synapses, can be emulated in the nanoscale FTJ-based artificial synapse. A convolutional neural network (CNN) simulation is then carried out based on the experimental results, and a high recognition accuracy of ∼93.8% on fashion product images is obtained, which is very close to the result of ∼94.4% by a floating-point-based CNN software. In particular, the FTJ-based CNN simulation also exhibits robustness to input image noises. These results indicate the great potential of FTJ for high-density information storage and neural network computing.
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