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Lithography-free subwavelength metacoatings for high thermal radiation background camouflage empowered by deep neural network

  • Qianli Qiu
  • , Kang Li
  • , Dongjie Zhou
  • , Yuyang Zhang
  • , Jinguo Zhang
  • , Zongkun Zhang
  • , Yan Sun*
  • , Lei Zhou
  • , Ning Dai
  • , Junhao Chu
  • , Jiaming Hao*
  • *此作品的通讯作者
  • CAS - Shanghai Institute of Technical Physics
  • University of Chinese Academy of Sciences
  • and State Key Laboratory of Photovoltaic Science and Technology
  • Fudan University

科研成果: 期刊稿件文章同行评审

摘要

The long wavelength infrared (LWIR) range (8–14 µm) is crucial for thermal radiation detection, necessitating effective camouflage against advanced infrared technologies. Conventional camouflage approaches often rely on complicated photonic structures, facing significant implementation challenges. This study introduces a novel polarization-insensitive and angle-robust metacoating emitter for LWIR camouflage, inversely designed through a deep neural network (DNN) framework. The DNN framework facilitates the automatic optimization of the metacoating’s structural and material parameters. The resulting emitter achieves an average emissivity of 0.96 covering the LWIR range and a low emissivity of 0.25 in the other mid-infrared (MIR) region. Enhanced electromagnetic wave localization and energy dissipation, driven by high-lossy materials like bismuth and titanium, contribute to these properties. Infrared imaging confirms the emitter’s superior camouflage performance, maintain effectiveness at incident angle up to 70° while exhibiting strong polarization independence. This inverse-designed metacoating demonstrates significant potential to advance infrared camouflage technology, providing robust countermeasures against modern, wide-angle, and polarization-sensitive detection systems.

源语言英语
页(从-至)5291-5300
页数10
期刊Nanophotonics
14
27
DOI
出版状态已出版 - 4 12月 2025
已对外发布

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