高性能人工神经形态电子学的高级设计

IF 21.1 1区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
Ying Cao , Hong Fu , Xi Fan , Xiaocong Tian , Jingxin Zhao , Jian Lu , Zhen Liang , Bingang Xu
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引用次数: 0

摘要

近年来,随着神经科学、电子学和材料科学等跨学科领域取得的进展,自然界人工神经形态系统取得了重大进展。以向人类学习为重点的研究已从不同层次展开,旨在最大程度地实现人类处理信息的智能方式。最近,人工神经形态电子学取得了重大进展,如超小型制造和高密度集成有机突触。虽然有一些综述从某些方面介绍了这一发展,但缺乏从形态、结构、器件阵列分布和大脑计算模式等各个层面全面学习人类,以完全模拟人类功能的综述。在此,我们将及时、系统地评述这些新进展,以促进高性能人工神经形态电子学的先进设计。首先,阐述了最近的突破和机制,然后基于从不同层次学习人类神经形态系统的视角,详细论证了人工神经形态设备组件的注意事项。随后,从整个信息处理过程出发,总结了提高系统整体性能的策略,并提出了未来人工神经形态电子设备的设计思路。最后,提出了一些展望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Advanced design of high-performance artificial neuromorphic electronics

Advanced design of high-performance artificial neuromorphic electronics
Recent years have witnessed the significant progress of nature artificial neuromorphic systems with advances achieved in interdisciplinary fields, like neurosciences, electronics and materials science. The research with focus on learning from human has been conducted from various hierarchy, aiming to realize the intelligent way of human to process information to the largest extent. Significant advancement in artificial neuromorphic electronics has been realized recently, like the ultrasmall size fabrication and high‐density integration of organic synapse. Though a few reviews presented the development from certain aspect, review in the view of the comprehensive learning from human at all levels, ranging from morphologies, structures, distributions of the device arrays and the computing mode of the brain, to fully simulate the function of human, is lacking. Here, the new developments are timely and systematically reviewed for advanced design of high-performance nature artificial neuromorphic electronics. First, recent breakthrough and mechanisms are illustrated, and then the elaborated considerations for the components of artificial neuromorphic devices are demonstrated based on perspective of learning from human neuromorphic systems from various hierarchy. After that, strategies are summarized to enhance the overall performance of the systems by taking the whole information processing procedure into consideration, and then the design thought for future artificial neuromorphic electronics is proposed. Finally, some perspectives are put forward.
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来源期刊
Materials Today
Materials Today 工程技术-材料科学:综合
CiteScore
36.30
自引率
1.20%
发文量
237
审稿时长
23 days
期刊介绍: Materials Today is the leading journal in the Materials Today family, focusing on the latest and most impactful work in the materials science community. With a reputation for excellence in news and reviews, the journal has now expanded its coverage to include original research and aims to be at the forefront of the field. We welcome comprehensive articles, short communications, and review articles from established leaders in the rapidly evolving fields of materials science and related disciplines. We strive to provide authors with rigorous peer review, fast publication, and maximum exposure for their work. While we only accept the most significant manuscripts, our speedy evaluation process ensures that there are no unnecessary publication delays.
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