4.6 Article

3D Ta/TaOx/TiO2/Ti synaptic array and linearity tuning of weight update for hardware neural network applications

期刊

NANOTECHNOLOGY
卷 27, 期 36, 页码 -

出版社

IOP Publishing Ltd
DOI: 10.1088/0957-4484/27/36/365204

关键词

hardware neural network; electronic synapse; three dimensional; RRAM

资金

  1. Ministry of Science and Technology of Taiwan, Republic of China [NSC 102-2221-E-009-188-MY3]
  2. NCTU-UCB I-RiCE program [MOST 105-2911-I-009-301]

向作者/读者索取更多资源

The implementation of highly anticipated hardware neural networks (HNNs) hinges largely on the successful development of a low-power, high-density, and reliable analog electronic synaptic array. In this study, we demonstrate a two-layer Ta/TaOx/TiO2/Ti cross-point synaptic array that emulates the high-density three-dimensional network architecture of human brains. Excellent uniformity and reproducibility among intralayer and interlayer cells were realized. Moreover, at least 50 analog synaptic weight states could be precisely controlled with minimal drifting during a cycling endurance test of 5000 training pulses at an operating voltage of 3 V. We also propose a new state-independent bipolar-pulse-training scheme to improve the linearity of weight updates. The improved linearity considerably enhances the fault tolerance of HNNs, thus improving the training accuracy.

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