4.8 Review

Conductive-bridging random-access memories for emerging neuromorphic computing

Journal

NANOSCALE
Volume 12, Issue 27, Pages 14339-14368

Publisher

ROYAL SOC CHEMISTRY
DOI: 10.1039/d0nr01671c

Keywords

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Funding

  1. Creative Materials Discovery Program through the National Research Foundation (NRF) - Ministry of Science and ICT, Korea [NRF-2016M3D1A1900035]
  2. Global Frontier Research Center for Advanced Soft Electronics [20110031640]
  3. SK Hynix Inc.

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With the increasing utilisation of artificial intelligence, there is a renewed demand for the development of novel neuromorphic computing owing to the drawbacks of the existing computing paradigm based on the von Neumann architecture. Extensive studies have been performed on memristors as their electrical nature is similar to those of biological synapses and neurons. However, most hardware-based artificial neural networks (ANNs) have been developed with oxide-based memristors owing to their high compatibility with mature complementary metal-oxide-semiconductor (CMOS) processes. Considering the advantages of conductive-bridging random-access memories (CBRAMs), such as their high scalability, high on-off current with a wide dynamic range, and low off-current, over oxide-based memristors, extensive studies on CBRAMs are required. In this review, the basics of operation of CBRAMs are examined in detail, from the formation of metal nanoclusters to filament bridging. Additionally, state-of-the-art experimental demonstrations of CBRAM-based artificial synapses and neurons are presented. Finally, CBRAM-based ANNs are discussed, including deep neural networks and spiking neural networks, along with other emerging computing applications. This review is expected to pave the way toward further development of large-scale CBRAM array systems.

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