光学
红外线的
共发射极
辐射传输
辐射冷却
反向
热的
材料科学
热辐射
物理
光电子学
热力学
几何学
数学
气象学
作者
Jie Nong,Ning Li,Xinpeng Jiang,Xueling Wei,Yiyi Zhang,Kaixiao Zhao,Junfang Xian,Zhenfu Zhang,Yang Yu,Zhenrong Zhang,Huan Chen,Junbo Yang
出处
期刊:Optics Express
[The Optical Society]
日期:2024-01-08
卷期号:32 (3): 3379-3379
被引量:2
摘要
In contrast to conventional emitters fashioned from traditional materials, tunable thermal emitters exhibit a distinct propensity to fulfill the demands of diverse scenarios, thereby engendering an array of prospects within the realms of communications, military applications, and control systems. In this paper, a tunable thermal emitter without continuous external excitation is introduced using Ge 2 Sb 2 Te 5 (GST) and high-temperature-resistant material Mo. It is automatically optimized by inverse design with genetic algorithm (GA) to switch between different functions according to the object temperature to adapt to diverse scenarios. In “off” mode, the emitter orchestrates a blend of infrared (IR) stealth and thermal management. This is evidenced by average absorptivity values of 0.08 for mid-wave infrared (MIR, 3-5 µm), 0.19 for long-wave infrared (LIR, 8-14 µm), and 0.68 for the non-atmospheric window (NAW, 5-8 µm). Conversely, when confronted with high-temperature entities, the emitter seamlessly transitions to “on” mode, instigating a process of radiative cooling. This transformation is reflected in the augmented emissivity of the dual-band atmospheric window including MIR and LIR, attaining peak values of 0.96 and 0.97. This transition yields a cooling potential, quantified at 64 W/m 2 at the ambient temperature of 25°C. In addition, our design employs a layered structure, which avoids complex patterned resonators and facilitates large-area fabrication. The emitter in this paper evinces robust insensitivity to polarization variations and the angle of incidence. We believe that this work will contribute to the development in the fields of dynamic tunability for IR stealth, dynamic radiative cooling systems, and thermal imaging.
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