记忆电阻器
突触重量
计算机科学
学习规律
生物系统
突触后电位
反向传播
Spike(软件开发)
脉冲(物理)
计算
人工神经网络
材料科学
人工智能
物理
算法
化学
生物
软件工程
量子力学
受体
生物化学
作者
Rui Yang,Heming Huang,Qinghui Hong,Xue‐Bing Yin,Zheng‐Hua Tan,Tuo Shi,Yaxiong Zhou,Xiangshui Miao,Xiaoping Wang,Shao‐Bo Mi,Chun‐Lin Jia,Xin Guo
标识
DOI:10.1002/adfm.201704455
摘要
Abstract The synaptic weight modification depends not only on interval of the pre‐/postspike pairs according to spike‐timing dependent plasticity (classical pair‐STDP), but also on the timing of the preceding spike (triplet‐STDP). Triplet‐STDP reflects the unavoidable interaction of spike pairs in natural spike trains through the short‐term suppression effect of preceding spikes. Second‐order memristors with one state variable possessing short‐term dynamics work in a way similar to the biological system. In this work, the suppression triplet‐STDP learning rule is faithfully demonstrated by experiments and simulations using second‐order memristors. Furthermore, a leaky‐integrate‐and‐fire (LIF) neuron is simulated using a circuit constructed with second‐order memristors. Taking the advantage of the LIF neuron, various neuromimetic dynamic processes, including local graded potential leaking out, postsynaptic impulse generation and backpropagation, and synaptic weight modification according to the suppression triplet‐STDP rule, are realized. The realized weight‐dependent pair‐ and triplet‐STDP rules are clearly in line with findings in biology. The physically realized triplet‐STDP rule is powerful in developing direction and speed selectivity for complex pattern recognition and tracking tasks. These scalable artificial synapses and neurons realized in second‐order memristors can intrinsically capture the neuromimetic dynamic processes; they are the promising building blocks for constructing brain‐inspired computation systems.
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