神经形态工程学
材料科学
铁电性
横杆开关
多铁性
光电子学
磁学
突触重量
极化(电化学)
量子隧道
赫比理论
纳米技术
自旋极化
人工神经网络
计算机科学
人工智能
物理
电信
电介质
电子
物理化学
自旋霍尔效应
化学
量子力学
作者
Yihao Yang,Zhongnan Xi,Yue-Hang Dong,Chunyan Zheng,Haihua Hu,Xiaofei Li,Zhizheng Jiang,Wen‐Cai Lu,Di Wu,Zheng Wen
标识
DOI:10.1021/acsami.0c16385
摘要
As nanoelectronic synapses, memristive ferroelectric tunnel junctions (FTJs) have triggered great interest due to the potential applications in neuromorphic computing for emulating biological brains. Here, we demonstrate multiferroic FTJ synapses based on the ferroelectric modulation of spin-filtering BaTiO3/CoFe2O4 composite barriers. Continuous conductance change with an ON/OFF current ratio of ∼54 400% and long-term memory with the spike-timing-dependent plasticity (STDP) of synaptic weight for Hebbian learning are achieved by controlling the polarization switching of BaTiO3. Supervised learning simulations adopting the STDP results as database for weight training are performed on a crossbar neural network and exhibit a high accuracy rate above 97% for recognition. The polarization switching also alters the band alignment of CoFe2O4 barrier relative to the electrodes, giving rise to the change of tunneling magnetoresistance ratio by about 10 times and even the reversal of its sign depending upon the resistance states. These results, especially the electrically switchable spin polarization, provide a new approach toward multiferroic neuromorphic devices with energy-efficient electrical manipulations through potential barrier design. In addition, the availability of spinel ferrite barriers epitaxially grown with ferroelectric oxides also expends the playground of FTJ devices for a broad scope of applications.
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