冯·诺依曼建筑
尖峰神经网络
计算机科学
神经形态工程学
CMOS芯片
晶体管
材料科学
人工神经网络
功能(生物学)
Spike(软件开发)
纳米技术
计算机体系结构
电子工程
人工智能
电气工程
光电子学
电压
软件工程
进化生物学
生物
工程类
操作系统
作者
Fabien Alibart,S. Pleutin,Olivier Bichler,Christian Gamrat,Teresa Serrano‐Gotarredona,B. Linares-Barranco,D. Vuillaume
标识
DOI:10.1002/adfm.201101935
摘要
Abstract A large effort is devoted to the research of new computing paradigms associated with innovative nanotechnologies that should complement and/or propose alternative solutions to the classical Von Neumann/CMOS (complementary metal oxide semiconductor) association. Among various propositions, spiking neural network (SNN) seems a valid candidate. i) In terms of functions, SNN using relative spike timing for information coding are deemed to be the most effective at taking inspiration from the brain to allow fast and efficient processing of information for complex tasks in recognition or classification. ii) In terms of technology, SNN may be able to benefit the most from nanodevices because SNN architectures are intrinsically tolerant to defective devices and performance variability. Here, spike‐timing‐dependent plasticity (STDP), a basic and primordial learning function in the brain, is demonstrated with a new class of synapstor (synapse‐transistor), called nanoparticle organic memory field‐effect transistor (NOMFET). This learning function is obtained with a simple hybrid material made of the self‐assembly of gold nanoparticles and organic semiconductor thin films. Beyond mimicking biological synapses, it is also demonstrated how the shape of the applied spikes can tailor the STDP learning function. Moreover, the experiments and modeling show that this synapstor is a memristive device. Finally, these synapstors are successfully coupled with a CMOS platform emulating the pre‐ and postsynaptic neurons, and a behavioral macromodel is developed on usual device simulator.
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