Please use this identifier to cite or link to this item: https://doi.org/10.1088/2634-4386/ac57cb
Title: Ferroelectric Memory Based on Two-dimensional Materials for Neuromorphic Computing
Authors: Li Chen 
Mei Er Pam 
Sifan Li 
Kah Wee Ang 
Keywords: 2D materials
ferroelectrics
memory
neuromorphic computing
Issue Date: 25-Mar-2022
Citation: Li Chen, Mei Er Pam, Sifan Li, Kah Wee Ang (2022-03-25). Ferroelectric Memory Based on Two-dimensional Materials for Neuromorphic Computing. Neuromorphic Computing and Engineering. ScholarBank@NUS Repository. https://doi.org/10.1088/2634-4386/ac57cb
Rights: CC0 1.0 Universal
Abstract: Ferroelectric memory devices with fast-switching speed and ultra-low power consumption have been recognized as promising building blocks for brain-like neuromorphic computing. In particular, ferroelectric memories based on 2D materials are attracting increasing research interest in recent years due to their unique properties that are unattainable in conventional materials. Specifically, the atomically thin 2D materials with tunable electronic properties coupled with the high compatibility with existing complementary metal-oxide-semiconductor technology manifests their potential for extending state-of-the-art ferroelectric memory technology into atomic-thin scale. Besides, the discovery of 2D materials with ferroelectricity shows the potential to realize functional devices with novel structures. This review will highlight the recent progress in ferroelectric memory devices based on 2D materials for neuromorphic computing. The merits of such devices and the range of 2D ferroelectrics being explored to date are reviewed and discussed, which include two- and three-terminal ferroelectric synaptic devices based on 2D materials platform. Finally, current developments and remaining challenges in achieving high-performance 2D ferroelectric synapses are discussed.
Source Title: Neuromorphic Computing and Engineering
URI: https://scholarbank.nus.edu.sg/handle/10635/238663
ISSN: 2634-4386
DOI: 10.1088/2634-4386/ac57cb
Rights: CC0 1.0 Universal
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