IEICE Transactions on Communications
Online ISSN : 1745-1345
Print ISSN : 0916-8516
Joint Special Section on Opto-electronics and Communications for Future Optical Network
Physical Status Representation in Multiple Administrative Optical Networks by Federated Unsupervised Learning
Takahito TANIMURARiu HIRAINobuhiko KIKUCHI
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2023 Volume E106.B Issue 11 Pages 1084-1092

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Abstract

We present our data-collection and deep neural network (DNN)-training scheme for extracting the optical status from signals received by digital coherent optical receivers in fiber-optic networks. The DNN is trained with unlabeled datasets across multiple administrative network domains by combining federated learning and unsupervised learning. The scheme allows network administrators to train a common DNN-based encoder that extracts optical status in their networks without revealing their private datasets. An early-stage proof of concept was numerically demonstrated by simulation by estimating the optical signal-to-noise ratio and modulation format with 64-GBd 16QAM and quadrature phase-shift keying signals.

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© 2023 The Institute of Electronics, Information and Communication Engineers
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