ML-Assisted Optimal Power and GSNR Estimation in Multi-band Elastic Optical Networks
Paper i proceeding, 2024

A significant challenge in next-generation intelligent and autonomous optical networks is the rapid estimation of quality of transmission (QoT), particularly in multi-band and low-margin systems. These systems pose additional complexities, primarily stemming from inter-channel stimulated Raman scattering, which affects the gain-loss power and generalized signal-to-noise ratio (GSNR) profiles. GSNR profile calculation depends on various factors, including the loading state of the links, modulation format, launch power, and channels' bandwidth. These complexities contribute to the time-consuming nature of estimating QoT in such systems. This study employs a semi-closed form model (CFM) based on the (enhanced) Gaussian noise (GN/EGN) analytical equations to estimate the GSNR, generating datasets. Machine learning (ML) models are then trained using these datasets to accurately estimate optical power and GSNR profiles, achieving errors below 0.04 dB for power and 0.1 dB for GSNR in 99 % of cases. The use of ML models is justified by their computational efficiency, aiding in online network management. We adopt the ML models in a power optimization algorithm that maximizes network total capacity. The power optimization using the ML models take 25-50 times lower time, while resulting in a maximum of 0.1 dBm error versus the analytical semi-CFM.

Elastic Optical Networks

Deep Neural Network

Multi-band

Power Optimization

Författare

K. Ghodsifar

Amirkabir University of Technology

Farhad Arpanaei

Universidad Carlos III de Madrid

H. Beyranvand

Amirkabir University of Technology

M. Ranjbar Zefreh

Cisco Systems

Carlos Natalino Da Silva

Chalmers, Elektroteknik, Kommunikation, Antenner och Optiska Nätverk

Paolo Monti

Chalmers, Elektroteknik, Kommunikation, Antenner och Optiska Nätverk

Shuangyi Yan

University of Bristol

Oscar Gonzalez De Dios

Telefonica

José M. Rivas-Moscoso

Telefonica

Juan P. Fernandez-Palacios

Telefonica

A. Sánchez-Macián

Universidad Carlos III de Madrid

D. Larrabeiti

Universidad Carlos III de Madrid

J. A. Hernández

Universidad Carlos III de Madrid

International Conference on Transparent Optical Networks

21627339 (ISSN)


9798350377309 (ISBN)

24th International Conference on Transparent Optical Networks, ICTON 2024
Bari, Italy,

Ämneskategorier

Annan elektroteknik och elektronik

DOI

10.1109/ICTON62926.2024.10647400

Mer information

Senast uppdaterat

2024-11-18