基于新兴材料的人工神经形态装置研究进展

Y. Jo, Dae Kyu Lee, J. Y. Kwak
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引用次数: 0

摘要

在第四次工业革命中,由于人工智能(AI)、物联网(IoT)和机器学习(ML)的发展,对大量数据的有效处理变得非常重要。由于存储器和中央处理器(CPU)的物理分离,被称为冯·诺依曼架构的传统计算系统一直面临瓶颈问题。受人脑的启发,许多研究者对神经形态计算的研究感兴趣,以解决瓶颈问题。人工神经形态装置,如神经元和突触装置的发展,是成功展示神经形态计算硬件的重要手段。各种基于硅CMOS晶体管的电路已经被研究来实现生物神经元和突触的行为;然而,由于硅CMOS晶体管的可扩展性和功耗问题,它们不适合模拟大规模的生物神经网络。本文综述了近年来基于新兴材料的人工神经元和突触装置的研究进展,并讨论了人工神经网络未来的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recent Progress in Development of Artificial Neuromorphic Devices Based on Emerging Materials
In the fourth industrial revolution, the efficient processing of huge amounts of data is important due to the development of artificial intelligence (AI), internet of things (IoT), and machine learning (ML). The conventional computing system, which is known as von Neumann architecture, has been facing bottleneck problems because of the physical separation of memory and central processing unit (CPU). Many researchers have interested to study on neuromorphic computing, inspired by the human brain, to solve the bottleneck problems. The development of artificial neuromorphic devices, such as neuron and synaptic devices, is important to successfully demonstrate a neuromorphic computing hardware. Various Si CMOS transistor-based circuits have been investigated to implement the behaviors of the biological neuron and synapse; however, they are not suitable for mimicking the large-scale biological neural networks because of Si CMOS transistor’s scalability and power consumption issues. In this report, we review the recent research progress in artificial neurons and synaptic devices based on emerging materials and discuss the future research direction of artificial neural networks.
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