Edrei Eitan, Cohen Niv, Gerstel Elam, Gamzu-Letova Shani, Mazurski Noa, Levy Uriel
Department of Applied Physics, The Center for Nanoscience and Nanotechnology, The Hebrew University, Jerusalem 91904, Israel.
School of Computer Science and Engineering, The Hebrew University, Jerusalem 91904, Israel.
Sci Adv. 2022 Apr 15;8(15):eabn3391. doi: 10.1126/sciadv.abn3391.
The quest for miniaturized optical wave-meters and spectrometers has accelerated the design of novel approaches in the field. Particularly, random spectrometers (RS) using the one-to-one correlation between the wavelength and an output random interference pattern emerged as a promising tool combining high spectral resolution and cost-effectiveness. Recently, a chip-scale platform for RS has been demonstrated with a markedly reduced footprint. Yet, despite the evident advantages of such modalities, they are very susceptible to environmental fluctuations and require an external calibration process. To address these challenges, we demonstrate a paradigm shift in the field, enabled by the integration of atomic vapor with a photonic chip and the use of a machine learning classification algorithm. Our approach provides a random wave-meter on chip device with accurate calibration and enhanced robustness against environmental fluctuations. The demonstrated device is expected to pave the way toward fully integrated spectrometers advancing the field of silicon photonics.
对小型化光波计和光谱仪的追求加速了该领域新方法的设计。特别是,利用波长与输出随机干涉图案之间的一一对应关系的随机光谱仪(RS)成为一种兼具高光谱分辨率和成本效益的有前途的工具。最近,已展示出一种用于RS的芯片级平台,其占地面积显著减小。然而,尽管此类模式具有明显优势,但它们极易受到环境波动的影响,并且需要外部校准过程。为应对这些挑战,我们展示了该领域的范式转变,这是通过将原子蒸气与光子芯片集成以及使用机器学习分类算法实现的。我们的方法提供了一种片上随机波长计设备,具有精确校准和增强的抗环境波动鲁棒性。所展示的设备有望为推进硅光子学领域的全集成光谱仪铺平道路。