Yan Xiaobing, He Haidong, Liu Gongjie, Zhao Zhen, Pei Yifei, Liu Pan, Zhao Jianhui, Zhou Zhenyu, Wang Kaiyang, Yan Hongwei
Key Laboratory of Brain-like Neuromorphic Devices and Systems of Hebei Province, College of Electron and Information Engineering, Hebei University, Baoding, 071002, P. R. China.
Adv Mater. 2022 Jun;34(23):e2110343. doi: 10.1002/adma.202110343. Epub 2022 May 2.
With the exploration of ferroelectric materials, researchers have a strong desire to explore the next generation of non-volatile ferroelectric memory with silicon-based epitaxy, high-density storage, and algebraic operations. Herein, a silicon-based memristor with an epitaxial vertically aligned nanostructures BaTiO -CeO film based on La Sr MnO /SrTiO /Si substrate is reported. The ferroelectric polarization reversal is optimized through the continuous exploring of growth temperature, and the epitaxial structure is obtained, thus it improves the resistance characteristic, the multi-value storage function of five states is achieved, and the robust endurance characteristic can reach 10 cycles. In the synapse plasticity modulated by pulse voltage process, the function of the spiking-time-dependent plasticity and paired-pulse facilitation is simulated successfully. More importantly, the algebraic operations of addition, subtraction, multiplication, and division are realized by using fast speed pulse of the width ≈50 ns. Subsequently, a convolutional neural network is constructed for identifying the CIFAR-10 dataset, to simulate the performance of the device; the online and offline learning recognition rate reach 90.03% and 92.55%, respectively. Overall, this study paves the way for memristors with silicon-based epitaxial ferroelectric films to realize multi-value storage, algebraic operations, and neural computing chip applications.
随着铁电材料的不断探索,研究人员迫切希望开发出具有硅基外延、高密度存储和代数运算功能的下一代非易失性铁电存储器。在此,报道了一种基于LaSrMnO/SrTiO/Si衬底的具有外延垂直排列纳米结构BaTiO -CeO薄膜的硅基忆阻器。通过不断探索生长温度优化了铁电极化反转,获得了外延结构,从而改善了电阻特性,实现了五态多值存储功能,且稳健耐久性特性可达10次循环。在脉冲电压调制的突触可塑性过程中,成功模拟了脉冲时间依赖可塑性和双脉冲易化功能。更重要的是,利用宽度约为50 ns的快速脉冲实现了加、减、乘、除的代数运算。随后,构建了一个卷积神经网络用于识别CIFAR-10数据集,以模拟该器件的性能;在线和离线学习识别率分别达到90.03%和92.55%。总体而言,本研究为基于硅基外延铁电薄膜的忆阻器实现多值存储、代数运算和神经计算芯片应用铺平了道路。