异质集成钙钛矿/氮化硅片上光子系统

IF 32.3 1区 物理与天体物理 Q1 OPTICS
Kun Liao, Yaxiao Lian, Maotao Yu, Zhuochen Du, Tianxiang Dai, Yaxin Wang, Haoming Yan, Shufang Wang, Cuicui Lu, C. T. Chan, Rui Zhu, Dawei Di, Xiaoyong Hu, Qihuang Gong
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引用次数: 0

摘要

集成光子芯片在光通信、计算、光探测和测距、传感和成像方面具有巨大的潜力,提供卓越的数据吞吐量和低功耗。一个关键目标是建立一个集成光源、处理器和光电探测器的单片片上光子系统。然而,由于材料工程、芯片集成技术和设计方法的限制,这仍然具有挑战性。钙钛矿具有简单的制造、对晶格失配的容错性、灵活的带隙可调性和低成本等优点,使它们有望与硅光子学进行异质集成。本文提出并实验实现了一种基于钙钛矿/氮化硅光子平台的近红外单片光子系统,发展了集成高效发光二极管、高性能处理器和灵敏光电探测器的纳米异质集成技术。光子神经网络被用于执行光子模拟和计算机视觉任务。我们的网络有效地预测了二维无序Su-Schrieffer-Heeger模型的拓扑不变量,并以87%的平均保真度模拟了非线性拓扑模型。此外,我们在边缘检测方面达到了85%以上的测试准确率,在CIFAR-10数据集上使用缩放架构达到了56%。这项工作解决了在芯片上集成各种纳米光子元件的挑战,为芯片集成多功能光子信息处理提供了一个有前途的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Hetero-integrated perovskite/Si3N4 on-chip photonic system

Hetero-integrated perovskite/Si3N4 on-chip photonic system

Integrated photonic chips hold substantial potential in optical communications, computing, light detection and ranging, sensing, and imaging, offering exceptional data throughput and low power consumption. A key objective is to build a monolithic on-chip photonic system that integrates light sources, processors and photodetectors on a single chip. However, this remains challenging due to limitations in materials engineering, chip integration techniques and design methods. Perovskites offer simple fabrication, tolerance to lattice mismatch, flexible bandgap tunability and low cost, making them promising for hetero-integration with silicon photonics. Here we propose and experimentally realize a near-infrared monolithic on-chip photonic system based on a perovskite/silicon nitride photonic platform, developing nano-hetero-integration technology to integrate efficient light-emitting diodes, high-performance processors and sensitive photodetectors. Photonic neural networks are implemented to perform photonic simulations and computer vision tasks. Our network efficiently predicts the topological invariant in a two-dimensional disordered Su–Schrieffer–Heeger model and simulates nonlinear topological models with an average fidelity of 87%. In addition, we achieve a test accuracy of over 85% in edge detection and 56% on the CIFAR-10 dataset using a scaled-up architecture. This work addresses the challenge of integrating diverse nanophotonic components on a chip, offering a promising solution for chip-integrated multifunctional photonic information processing.

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来源期刊
Nature Photonics
Nature Photonics 物理-光学
CiteScore
54.20
自引率
1.70%
发文量
158
审稿时长
12 months
期刊介绍: Nature Photonics is a monthly journal dedicated to the scientific study and application of light, known as Photonics. It publishes top-quality, peer-reviewed research across all areas of light generation, manipulation, and detection. The journal encompasses research into the fundamental properties of light and its interactions with matter, as well as the latest developments in optoelectronic devices and emerging photonics applications. Topics covered include lasers, LEDs, imaging, detectors, optoelectronic devices, quantum optics, biophotonics, optical data storage, spectroscopy, fiber optics, solar energy, displays, terahertz technology, nonlinear optics, plasmonics, nanophotonics, and X-rays. In addition to research papers and review articles summarizing scientific findings in optoelectronics, Nature Photonics also features News and Views pieces and research highlights. It uniquely includes articles on the business aspects of the industry, such as technology commercialization and market analysis, offering a comprehensive perspective on the field.
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