Three-dimensional memristor circuits as complex neural networks

被引:2
作者
Peng Lin
Can Li
Zhongrui Wang
Yunning Li
Hao Jiang
Wenhao Song
Mingyi Rao
Ye Zhuo
Navnidhi K. Upadhyay
Mark Barnell
Qing Wu
J. Joshua Yang
Qiangfei Xia
机构
[1] University of Massachusetts,Department of Electrical and Computer Engineering
[2] Air Force Research Laboratory Information Directorate,Department of Mechanical Engineering
[3] Massachusetts Institute of Technology,undefined
来源
Nature Electronics | 2020年 / 3卷
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摘要
Constructing a computing circuit in three dimensions (3D) is a necessary step to enable the massive connections and efficient communications required in complex neural networks. 3D circuits based on conventional complementary metal–oxide–semiconductor transistors are, however, difficult to build because of challenges involved in growing or stacking multilayer single-crystalline silicon channels. Here we report a 3D circuit composed of eight layers of monolithically integrated memristive devices. The vertically aligned input and output electrodes in our 3D structure make it possible to directly map and implement complex neural networks. As a proof-of-concept demonstration, we programmed parallelly operated kernels into the 3D array, implemented a convolutional neural network and achieved software-comparable accuracy in recognizing handwritten digits from the Modified National Institute of Standard and Technology database. We also demonstrated the edge detection of moving objects in videos by applying groups of Prewitt filters in the 3D array to process pixels in parallel.
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页码:225 / 232
页数:7
相关论文
共 42 条
  • [1] Lecun Y(2015)Deep learning Nature 521 436-444
  • [2] Bengio Y(2019)Towards artificial general intelligence with hybrid Tianjic chip architecture Nature 572 106-111
  • [3] Hinton G(2018)Multi-terminal memtransistors from polycrystalline monolayer molybdenum disulfide Nature 554 500-504
  • [4] Pei J(2017)A non-volatile organic electrochemical device as a low-voltage artificial synapse for neuromorphic computing Nat. Mater. 16 414-418
  • [5] Sangwan VK(2008)The missing memristor found Nature 453 80-83
  • [6] Van De Burgt Y(2010)Nanoscale memristor device as synapse in neuromorphic systems Nano Lett. 10 1297-1301
  • [7] Strukov DB(2018)SiGe epitaxial memory for neuromorphic computing with reproducible high performance based on engineered dislocations Nat. Mater. 17 335-340
  • [8] Snider GS(2018)Analogue signal and image processing with large memristor crossbars Nat. Electron. 1 52-59
  • [9] Stewart DR(2015)Training and operation of an integrated neuromorphic network based on metal-oxide memristors Nature 521 61-64
  • [10] Williams RS(2013)Integration of nanoscale memristor synapses in neuromorphic computing architectures Nanotechnology 24 384010-1515