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Self-Organizing Neural Networks Based on OxRAM Devices under a Fully Unsupervised Training Scheme

机译:在完全无监督的训练方案下基于OxRAM器件的自组织神经网络

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摘要

A fully-unsupervised learning algorithm for reaching self-organization in neuromorphic architectures is provided in this work. We experimentally demonstrate spike-timing dependent plasticity (STDP) in Oxide-based Resistive Random Access Memory (OxRAM) devices, and propose a set of waveforms in order to induce symmetric conductivity changes. An empirical model is used to describe the observed plasticity. A neuromorphic system based on the tested devices is simulated, where the developed learning algorithm is tested, involving STDP as the local learning rule. The design of the system and learning scheme permits to concatenate multiple neuromorphic layers, where autonomous hierarchical computing can be performed.
机译:这项工作提供了一种在神经形态架构中实现自组织的完全不受监督的学习算法。我们在基于氧化物的电阻式随机存取存储器(OxRAM)器件中实验性地证明了与峰值定时相关的可塑性(STDP),并提出了一组波形以诱导对称的电导率变化。使用经验模型来描述观察到的可塑性。模拟了基于被测设备的神经形态系统,在其中测试了开发的学习算法,其中将STDP作为本地学习规则。系统和学习方案的设计允许连接多个神经形态层,可以在其中执行自主的层次计算。

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