Recent progress on 2D materials-based artificial synapses

IF 8.1 2区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY Critical Reviews in Solid State and Materials Sciences Pub Date : 2021-06-07 DOI:10.1080/10408436.2021.1935212
Chao Zhang, Hangbo Zhou, Shuai Chen, Gang Zhang, Z. Yu, Dongzhi Chi, Yong-Wei Zhang, K. Ang
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引用次数: 10

Abstract

Abstract Artificial synapses in neuromorphic computing systems hold potential to emulate biological synaptic plasticity to achieve brain-like computation and autonomous learning behaviors in non-von-Neumann systems. 2D materials, such as graphene, graphene oxide, hexagonal boron nitride, transition metal dichalcogenides, transition metal oxides, 2D perovskite, and black phosphorous, have been explored to achieve many functionalities of biological synapses due to their unique electronic, optoelectronic, electrochemical, and mechanical properties that are lacking in bulk materials. This review features the current development in the state-of-the-art artificial synaptic electronic devices based on 2D materials. The structures of these devices are first discussed according to their number of terminals (two-, three-, four-, and multi-terminals) and geometric layouts (vertical, horizontal, hybrid). Since different 2D materials have been utilized to fabricate these devices, their underlying physical mechanisms and principles are further discussed, and their artificial neuron synaptic functionalities and performances are analyzed and contrasted. Finally, a summary of the current research status and major achievements is concluded, and the outlooks and perspectives for this emerging and vibrant field and the potential applications of these devices for neuromorphic computing are presented.
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基于二维材料的人工突触研究进展
神经形态计算系统中的人工突触具有模拟生物突触可塑性以实现类脑计算和非冯-诺伊曼系统自主学习行为的潜力。二维材料,如石墨烯、氧化石墨烯、六方氮化硼、过渡金属二硫族化物、过渡金属氧化物、二维钙钛矿和黑磷,由于其独特的电子、光电、电化学和机械性能,已经被探索用于实现许多生物突触的功能,而这些功能是块体材料所缺乏的。本文综述了基于二维材料的人工突触电子器件的最新研究进展。这些器件的结构首先根据它们的端子数量(二、三、四和多端子)和几何布局(垂直、水平、混合)进行讨论。由于使用了不同的二维材料来制造这些器件,因此进一步讨论了它们潜在的物理机制和原理,并分析和比较了它们的人工神经元突触功能和性能。最后,总结了目前的研究现状和主要成果,并对这一新兴而充满活力的领域以及这些设备在神经形态计算中的潜在应用进行了展望和展望。
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来源期刊
CiteScore
22.10
自引率
2.80%
发文量
0
审稿时长
3 months
期刊介绍: Critical Reviews in Solid State and Materials Sciences covers a wide range of topics including solid state materials properties, processing, and applications. The journal provides insights into the latest developments and understandings in these areas, with an emphasis on new and emerging theoretical and experimental topics. It encompasses disciplines such as condensed matter physics, physical chemistry, materials science, and electrical, chemical, and mechanical engineering. Additionally, cross-disciplinary engineering and science specialties are included in the scope of the journal.
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