Software-defined nanophotonic devices and systems empowered by machine learning

IF 7.4 1区 物理与天体物理 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC Progress in Quantum Electronics Pub Date : 2023-05-01 DOI:10.1016/j.pquantelec.2023.100469
Yihao Xu , Bo Xiong , Wei Ma , Yongmin Liu
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引用次数: 2

Abstract

Nanophotonic devices, such as metasurfaces and silicon photonic components, have been progressively demonstrated to be efficient and versatile alternatives to their bulky counterparts, enabling compact and light-weight systems for the application of imaging, sensing, communication and computing. The tremendous advances in machine learning provide new design methods, metrology and functionalities for nanophotonic devices and systems. Specifically, machine learning has fundamentally changed automatic design, measurement and result processing of highly application-specific nanophotonic systems without the need of extensive expert experience. This trend can be well described by the popular concept of “software-defined” infrastructure in information technology, which can decouple specific hardware from end users by virtualizing physical components using software interfaces, making the entire system faster, more flexible and more scalable. In this review, we introduce the concept of software-defined nanophotonics and summarize the interdisciplinary research that bridges nanophotonics and intelligence algorithms, especially machine learning algorithms, in the device design, measurement and system setup. The review is organized in an application-oriented manner, showing how the software-defined scheme is utilized in solving both forward and inverse problems for various nanophotonic devices and systems.

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由机器学习授权的软件定义的纳米光子器件和系统
纳米光子器件,如超表面和硅光子元件,已经逐渐被证明是高效和通用的替代品,以取代笨重的同类产品,为成像、传感、通信和计算的应用提供紧凑和轻便的系统。机器学习的巨大进步为纳米光子器件和系统提供了新的设计方法、计量和功能。具体来说,机器学习从根本上改变了高度特定应用的纳米光子系统的自动设计、测量和结果处理,而不需要丰富的专家经验。信息技术中流行的“软件定义”基础设施概念可以很好地描述这种趋势,它可以通过使用软件接口虚拟化物理组件来将特定硬件与最终用户分离,从而使整个系统更快、更灵活、更可扩展。本文介绍了软件定义纳米光子学的概念,并对纳米光子学与智能算法特别是机器学习算法在器件设计、测量和系统设置等方面的跨学科研究进行了总结。该综述以面向应用的方式组织,展示了如何利用软件定义方案解决各种纳米光子器件和系统的正向和逆问题。
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来源期刊
Progress in Quantum Electronics
Progress in Quantum Electronics 工程技术-工程:电子与电气
CiteScore
18.50
自引率
0.00%
发文量
23
审稿时长
150 days
期刊介绍: Progress in Quantum Electronics, established in 1969, is an esteemed international review journal dedicated to sharing cutting-edge topics in quantum electronics and its applications. The journal disseminates papers covering theoretical and experimental aspects of contemporary research, including advances in physics, technology, and engineering relevant to quantum electronics. It also encourages interdisciplinary research, welcoming papers that contribute new knowledge in areas such as bio and nano-related work.
期刊最新文献
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