电导
铁电性
人工神经网络
材料科学
隧道枢纽
凝聚态物理
计算机科学
光电子学
物理
人工智能
量子隧道
电介质
作者
Zeyu Guan,Zijian Wang,Shengchun Shen,Yuewei Yin,Xiaoguang Li
标识
DOI:10.1002/admt.202302238
摘要
Abstract The rapid development of artificial intelligence requires synaptic devices with controllable conductance updates and low power consumption. Currently, conductance updates based on identical voltage pulse scheme (IVPS) and nonidentical voltage pulse scheme (NIVPS) face drawbacks in terms of recognition accuracy and energy efficiency, respectively. In this study, a mixed voltage pulse scheme (MVPS) for tuning conductance is proposed to simultaneously achieve high recognition accuracy and high energy efficiency, and its superiority is experimentally verified based on high‐performance Au (or Ag)/PbZr 0.52 Ti 0.48 O 3 /Nb:SrTiO 3 ferroelectric tunnel junction (FTJ) synaptic devices. The MVPS‐based neural network simulation achieves a high recognition accuracy of ≈92% on the CIFAR10 dataset with better energy efficiency and throughput than those of NIVPS. In addition, high‐precision experimental vector‐matrix multiplication (with a relative error of ≈1.5%) is obtained, and the simulated FTJ synaptic arrays achieved a high inference energy efficiency of ≈85 TOPS W −1 and a throughput of ≈200 TOPS, which meets the requirements of artificial intelligence in low‐power scenarios. This study provides a possible solution for practical applications of FTJ in neural network computing.
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