Literature DB >> 28430266

Machine learning approach to OAM beam demultiplexing via convolutional neural networks.

Timothy Doster, Abbie T Watnik.   

Abstract

Orbital angular momentum (OAM) beams allow for increased channel capacity in free-space optical communication. Conventionally, these OAM beams are multiplexed together at a transmitter and then propagated through the atmosphere to a receiver where, due to their orthogonality properties, they are demultiplexed. We propose a technique to demultiplex these OAM-carrying beams by capturing an image of the unique multiplexing intensity pattern and training a convolutional neural network (CNN) as a classifier. This CNN-based demultiplexing method allows for simplicity of operation as alignment is unnecessary, orthogonality constraints are loosened, and costly optical hardware is not required. We test our CNN-based technique against a traditional demultiplexing method, conjugate mode sorting, with various OAM mode sets and levels of simulated atmospheric turbulence in a laboratory setting. Furthermore, we examine our CNN-based technique with respect to added sensor noise, number of photon detections, number of pixels, unknown levels of turbulence, and training set size. Results show that the CNN-based demultiplexing method is able to demultiplex combinatorially multiplexed OAM modes from a fixed set with >99% accuracy for high levels of turbulence-well exceeding the conjugate mode demultiplexing method. We also show that this new method is robust to added sensor noise, number of photon detections, number of pixels, unknown levels of turbulence, and training set size.

Year:  2017        PMID: 28430266     DOI: 10.1364/AO.56.003386

Source DB:  PubMed          Journal:  Appl Opt        ISSN: 1559-128X            Impact factor:   1.980


  6 in total

1.  Decoding Optical Data with Machine Learning.

Authors:  Jie Fang; Anand Swain; Rohit Unni; Yuebing Zheng
Journal:  Laser Photon Rev       Date:  2020-12-23       Impact factor: 13.138

2.  Deep-learning-based high-resolution recognition of fractional-spatial-mode-encoded data for free-space optical communications.

Authors:  Youngbin Na; Do-Kyeong Ko
Journal:  Sci Rep       Date:  2021-01-29       Impact factor: 4.379

3.  Compensation-free high-dimensional free-space optical communication using turbulence-resilient vector beams.

Authors:  Ziyi Zhu; Molly Janasik; Alexander Fyffe; Darrick Hay; Yiyu Zhou; Brian Kantor; Taylor Winder; Robert W Boyd; Gerd Leuchs; Zhimin Shi
Journal:  Nat Commun       Date:  2021-03-12       Impact factor: 14.919

4.  Fractal, diffraction-encoded space-division multiplexing for FSO with misalignment-robust, roaming transceivers.

Authors:  Xiaojing Weng; Luat T Vuong
Journal:  Sci Rep       Date:  2022-02-17       Impact factor: 4.379

5.  Deep learning enhanced Rydberg multifrequency microwave recognition.

Authors:  Zong-Kai Liu; Li-Hua Zhang; Bang Liu; Zheng-Yuan Zhang; Guang-Can Guo; Dong-Sheng Ding; Bao-Sen Shi
Journal:  Nat Commun       Date:  2022-04-14       Impact factor: 17.694

6.  Adaptive demodulation by deep-learning-based identification of fractional orbital angular momentum modes with structural distortion due to atmospheric turbulence.

Authors:  Youngbin Na; Do-Kyeong Ko
Journal:  Sci Rep       Date:  2021-12-06       Impact factor: 4.379

  6 in total

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