二维材料在记忆神经元中的新功能

Yuwan Hong, Yanming Liu, Ruonan Li, He Tian
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摘要

神经形态计算(NC)被认为是未来计算机架构的一个有前途的候选方案,它可以促进更多的仿生智能,同时降低能耗。神经元是数控系统的关键构件之一。研究人员一直致力于促进神经元器件具有更好的电气特性和更多的仿生功能。二维(2D)材料具有超薄层、多种带状结构、优异的电子特性和各种传感能力,有望实现这些要求。在此,我们将从神经元器件的电性能角度,从稳定性、可调性到功耗和开关比,回顾二维材料在人工神经元方面取得的进展。从系统级应用上升到基于二维材料的尖峰神经网络、随机神经网络和人工感知系统的算法和硬件实现。二维材料不仅有助于实现数控系统,还能提高集成密度。最后,系统分析了当前开发基于二维材料的神经元和数控系统所面临的挑战和前景,从最底层的二维材料制造到新型神经设备、更类似大脑的计算算法和系统。
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Emerging functions of two-dimensional materials in memristive neurons
Neuromorphic computing (NC), considered as a promising candidate for future computer architecture, can facilitate more biomimetic intelligence while reducing energy consumption. Neuron is one of the critical building blocks of NC systems. Researchers have been engaged in promoting neuron devices with better electrical properties and more biomimetic functions. Two-dimensional (2D) materials, with ultrathin layers, diverse band structures, featuring excellent electronic properties and various sensing abilities, are promised to realize these requirements. Here, the progress of artificial neurons brought by 2D materials is reviewed, from the perspective of electrical performance of neuron devices, from stability, tunability to power consumption and on/off ratio. Rose up to system-level applications, algorithms and hardware implementation of spiking neural network, stochastic neural network and artificial perception system based on 2D materials are reviewed. 2D materials not only facilitate the realization of NC systems but also increase the integration density. Finally, current challenges and perspectives on developing 2D material-based neurons and NC systems are systematically analyzed, from the bottom 2D materials fabrication to novel neural devices, more brain-like computational algorithms and systems.
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