Authors
Nicola Di Cicco, Emre Furkan Mercan, Oleg Karandin, Omran Ayoub, Sebastian Troia, Francesco Musumeci, Massimo Tornatore
Publication date
2022/2/14
Journal
IEEE Journal of Selected Topics in Quantum Electronics
Volume
28
Issue
4: Mach. Learn. in Photon. Commun. and Meas. Syst.
Pages
1-12
Publisher
IEEE
Description
Deep Reinforcement Learning (DRL) is rising as a promising tool for solving optimization problems in optical networks. Though studies employing DRL for solving static optimization problems in optical networks are appearing, assessing strengths and weaknesses of DRL with respect to state-of-the-art solution methods is still an open research question. In this work, we focus on Routing and Wavelength Assignment (RWA), a well-studied problem for which fast and scalable algorithms leading to better optimality gaps are always sought for. We develop two different DRL-based methods to assess the impact of different design choices on DRL performance. In addition, we propose a Multi-Start approach that can improve the average DRL performance, and we engineer a shaped reward that allows efficient learning in networks with high link capacities. With Multi-Start, DRL gets competitive results with respect to a state …
Total citations
2022202320246144
Scholar articles
N Di Cicco, EF Mercan, O Karandin, O Ayoub, S Troia… - IEEE Journal of Selected Topics in Quantum …, 2022