内容寻址存储器
突触可塑性
材料科学
赫比理论
神经科学
铁电性
晶体管
峰值时间相关塑性
突触重量
人工神经网络
光电子学
计算机科学
人工智能
心理学
电气工程
电压
工程类
生物
电介质
受体
生物化学
作者
Mengge Yan,Qiuxiang Zhu,Siqi Wang,Yiming Ren,Guangdi Feng,Lan Liu,Hui Peng,Yuhui He,Jianlu Wang,Peng Zhou,Xiangjian Meng,Xiaodong Tang,Junhao Chu,Brahim Dkhil,Bobo Tian,Chun‐Gang Duan
标识
DOI:10.1002/aelm.202001276
摘要
Abstract Brain‐inspired associative memory is meaningful for pattern recognitions and image/speech processing. Here, a ferroelectric synaptic transistor network is proposed that is capable of associative learning and one‐step recalling of a whole set of data from only partial information. The competition between an external field and the internal depolarization field governs the ferroelectric creep of domain walls and offers each single ferroelectric synapse a full and subfemtojoule‐energy‐cost Hebbian synaptic plasticity, including short‐term memory (STM) to long‐term memory (LTM) transition, and remarkably both spike‐timing‐dependent plasticity (STDP) and spike‐rate‐dependent plasticity (SRDP). Assisted by the third terminal to control the ferroelectric domain dynamics, self‐adaptive coupling between neurons is realized by updating synaptic weight concurrently. Pavlov's dog experiment and multiassociative memories are demonstrated in this ferroelectric synaptic transistor network. Such ferroelectric synaptic transistor network is available for building multilayer neural networks and provides new avenues for associative‐memory information processing.
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