Automated, Interpretable and Efficient ML Models for Real-World Lightpaths’ Quality of Transmission Estimation
Artikel i vetenskaplig tidskrift, 2025

Fast and accurate estimation of lightpaths’ quality of transmission (QoT) is crucial for ensuring quality of service (QoS) and seamless operation in real-world optical networks. Machine learning (ML) algorithms are promising tools for QoT estimation of lightpaths before their establishment. In multi-domain optical networks, where learned QoT estimation models must be transferred between heterogeneous environments with limited target data, deep neural networks (DNNs) have shown promising results. However, DNN-based transfer learning (TL) approaches using fine-tuned artificial neural networks (ANNs) and convolutional neural networks (CNNs), offer limited interpretability. Consequently, little insight into the decision-making process is provided, and large labeled datasets as well as high computational resources are required, limiting their suitability for real-time, large-scale deployment in production networks. To address these challenges, we propose a novel lightweight and interpretable TL framework that integrates the Boruta-SHAP algorithm for automated feature selection (FS) together with two domain adaptation (DA) techniques: Feature Augmentation and Correlation Alignment. In contrast to the existing approaches based on DNN, our strategy leverages interpretable and efficient ML models to enhance the adaptability across diverse datasets in real-world network environments. We show that our random forest (RF)-based models achieve better performance than the ANN-based models, without sacrificing the classification accuracy. The FS via Boruta-SHAP allows for reducing dimensionality as well as training and inference times up to 70.68%, and 41.64%, respectively. Our proposed framework outperforms DA baseline models achieving 99.35% accuracy improvement in domain shift. Moreover, it offers 86% accuracy with a 99.83% reduction in the size of the target domain.

Support vector machines

Performance metrics

Explainable artificial intelligence

Machine learning

Transfer learning

Deep learning

Artificial neural networks

Domain adaptation

Optical fiber communication

Random forests

Quality of transmission

WDM networks

Författare

Sandra Aladin

École de Technologie Supérieure (ÉTS)

Lena Wosinska

Chalmers, Elektroteknik, Kommunikation, Antenner och Optiska Nätverk

Christine Tremblay

École de Technologie Supérieure (ÉTS)

IEEE Open Journal of the Communications Society

2644125X (eISSN)

Vol. 6 9785-9801

Ämneskategorier (SSIF 2025)

Programvaruteknik

Datavetenskap (datalogi)

Datorsystem

DOI

10.1109/OJCOMS.2025.3635533

Mer information

Senast uppdaterat

2025-12-23