Litcius/Paper detail

Towards integrated mode-division demultiplexing spectrometer by deep learning

Ze-Huan Zheng, Sheng‐ke Zhu, Ying Chen, Huanyang Chen, Jinhui Chen

2022Opto-Electronic Science38 citationsDOIOpen Access PDF

Abstract

Miniaturized spectrometers have been widely researched in recent years, but few studies are conducted with on-chip multimode schemes for mode-division multiplexing (MDM) systems. Here we propose an ultracompact mode-division demultiplexing spectrometer that includes branched waveguide structures and graphene-based photodetectors, which realizes simultaneously spectral dispersing and light fields detecting. In the bandwidth of 1500–1600 nm, the designed spectrometer achieves the single-mode spectral resolution of 7 nm for each mode of TE<sub>1</sub>–TE<sub>4</sub> by Tikhonov regularization optimization. Empowered by deep learning algorithms, the 15-nm resolution of parallel reconstruction for TE<sub>1</sub>–TE<sub>4</sub> is achieved by a single-shot measurement. Moreover, by stacking the multimode response in TE<sub>1</sub>–TE<sub>4</sub> to the single spectra, the 3-nm spectral resolution is realized. This design reveals an effective solution for on-chip MDM spectroscopy, and may find applications in multimode sensing, interconnecting and processing.

Topics & Concepts

SpectrometerMulti-mode optical fiberMultiplexingOpticsBandwidth (computing)Spectral resolutionOptoelectronicsTikhonov regularizationPhysicsSpectral lineComputer scienceOptical fiberTelecommunicationsMathematicsInverse problemMathematical analysisAstronomyPhotonic and Optical DevicesAdvanced Fiber Laser TechnologiesAdvanced Fiber Optic Sensors