Abstract
It is essential to estimate the quality of transmission (QoT) of lightpaths before their establishment for efficient planning and operation of optical networks. Due to the nonlinear effect of fibers, the deployed lightpaths influence the QoT of each other; thus, multi-channel QoT estimation is necessary, which provides complete QoT information for network optimization. Moreover, the different interfering channels have different effects on the channel under test. However, the existing artificial-neural-network-based multi-channel QoT estimators (ANN-QoT-E) neglect the different effects of the interfering channels in their input layer, which affects their estimation accuracy severely. In this paper, we propose a self-attention mechanism-based multi-channel QoT estimator (SA-QoT-E) to improve the estimation accuracy of the ANN-QoT-E. In the SA-QoT-E, the input features are designed as a sequence of feature vectors of channels that route the same path, and the self-attention mechanism dynamically assigns weights to the feature vectors of interfering channels according to their effects on the channel under test. Moreover, a hyperparameter search method is used to optimize the SA-QoT-E. The simulation results show that, compared with the ANN-QoT-E, our proposed SA-QoT-E achieves higher estimation accuracy, and can be directly applied to the network wavelength expansion scenarios without retraining.
Funder
National Natural Science Foundation of China
Fund of State Key Laboratory of IPOC
Subject
Radiology, Nuclear Medicine and imaging,Instrumentation,Atomic and Molecular Physics, and Optics
Reference27 articles.
1. Survey on the use of machine learning for quality of transmission estimation in optical transport networks;Ayassi;J. Light. Technol.,2022
2. Comparison of Split-Step Fourier Schemes for Simulating Fiber Optic Communication Systems;Shao;IEEE Photonics J.,2014
3. The GN Model of Non-Linear Propagation in Uncompensated Coherent Optical Systems;Poggiolini;J. Light. Technol.,2012
4. Aladin, S., and Tremblay, C. (2018, January 11–15). Cognitive Tool for Estimating the QoT of New Lightpaths. Proceedings of the 2018 Optical Fiber Communications Conference and Exposition (OFC), San Diego, CA, USA.
5. Machine-learning method for quality of transmission prediction of unestablished lightpaths;Rottondi;IEEE/OSA J. Opt. Commun. Netw.,2018
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