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Demonstration of hybrid CMOS/RRAM neural networks with spike time/rate-dependent plasticity

机译:具有尖峰时间/速率依赖性可塑性混合CMOS / RRAM神经网络的示范

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Neural networks with resistive-switching memory (RRAM) synapses can mimic learning and recognition in the human brain, thus overcoming the major limitations of von Neumann computing architectures. While most researchers aim at supervised learning of a pre-determined set of patterns, unsupervised learning of patterns might be attractive for brain-inspired robot/drone navigation. Here we demonstrate neural networks with CMOS/RRAM synapses capable of unsupervised learning by spike-time dependent plasticity (STDP) and spike-rate dependent plasticity (SRDP). First, STDP learning in a RRAM synaptic network is demonstrated. Then we present a 4-transistor/1-resistor synapse capable of SRDP, finally demonstrating SRDP learning, update, and recognition of patterns at the level of neural network.
机译:具有电阻切换内存(RRAM)突触的神经网络可以模仿人类大脑的学习和识别,从而克服了冯·诺伊曼计算架构的主要限制。虽然大多数研究人员旨在监督学习预先确定的模式,但无监督的模式对于脑卒中机器人/无人机导航可能具有吸引力。在这里,我们展示了具有能够通过峰值时间依赖性可塑性(STDP)和峰值速率依赖性(SRDP)无监督学习的CMOS / RRAM突触的神经网络。首先,证明了RRAM突触网络中的STDP学习。然后我们介绍了一个能够SRDP的4晶体管/ 1电阻突触,最终展示了神经网络水平的SRDP学习,更新和识别模式。

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