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Spiking neuromorphic networks with metal-oxide memristors

机译:用金属氧化物忆阻器刺激神经形态网络

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This is a brief review of our recent work on memristor-based spiking neuromorphic networks. We first describe the recent experimental demonstration of several most biology-plausible spike-time-dependent plasticity (STDP) windows in integrated metal-oxide memristors and, for the first time, the observed self-adaptive STDP, which may be crucial for spiking neural network applications. We then discuss recent theoretical work in which an analytical, data-verified STDP model was used to simulate operation of a spiking classifier of spatial-temporal patterns, and the capacity-to-fidelity tradeoff and noise immunity o f spiking spatial-temporal associative memories with local and global recording was evaluated.
机译:这是对我们最近基于忆阻器的尖峰神经形态网络研究的简短回顾。我们首先描述了最近的实验证明,这些实验证明了集成金属氧化物忆阻器中几个生物学上最可能与峰值时间相关的可塑性(STDP)窗口,并且首次描述了所观察到的自适应STDP,这可能对突增神经元至关重要网络应用程序。然后,我们讨论最近的理论工作,其中使用经过分析且经过数据验证的STDP模型来模拟时空模式的尖峰分类器的操作,以及尖峰时空联想记忆的容量保真度折衷和噪声抗扰度。评估了本地和全局记录。

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