In-materio reservoir computing based on nanowire networks: fundamental, progress, and perspective

Renrui Fang, Woyu Zhang, Kuan Ren, Peiwen Zhang, Xiaoxin Xu, Zhongrui Wang, Dashan Shang
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引用次数: 0

Abstract

The reservoir computing (RC) system, known for its ability to seamlessly integrate memory and computing functions, is considered as a promising solution to meet the high demands for time and energy-efficient computing in the current big data landscape, compared with traditional silicon-based computing systems that have a noticeable disadvantage of separate storage and computation. This review focuses on in-materio RC based on nanowire networks (NWs) from the perspective of materials, extending to reservoir devices and applications. The common methods used in preparing nanowires-based reservoirs, including the synthesis of nanowires and the construction of networks, are firstly systematically summarized. The physical principles of memristive and memcapacitive junctions are then explained. Afterwards, the dynamic characteristics of nanowires-based reservoirs and their computing capability, as well as the neuromorphic applications of NWs-based RC systems in recognition, classification, and forecasting tasks, are explicated in detail. Lastly, the current challenges and future opportunities facing NWs-based RC are highlighted, aiming to provide guidance for further research.
基于纳米线网络的物内油藏计算:基础、进展与展望
与传统的硅基计算系统相比,储层计算(RC)系统以其无缝集成存储和计算功能的能力而闻名,被认为是满足当前大数据领域对时间和节能计算的高要求的有前途的解决方案,传统的硅基计算系统具有明显的存储和计算分离的缺点。本文从材料的角度综述了基于纳米线网络(NWs)的材料内RC,并将其扩展到储层设备和应用。首先系统总结了制备纳米线储层的常用方法,包括纳米线的合成和网络的构建。然后解释记忆性和记忆容性连接的物理原理。随后,详细阐述了基于纳米线油藏的动态特征及其计算能力,以及基于nws的RC系统在识别、分类和预测任务中的神经形态学应用。最后,指出了基于nws的RC面临的挑战和未来的机遇,旨在为进一步的研究提供指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
7.40
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