Resource Allocation in Multicore Elastic Optical Networks: A Deep Reinforcement Learning Approach

Pinto-Rios, Juan; Calderon, Felipe; Leiva, Ariel; Hermosilla, Gabriel; Beghelli, Alejandra; Borquez-Paredes, Danilo; Lozada, Astrid; Jara, Nicolas; Olivares, Ricardo; Saavedra, Gabriel

Abstract

A deep reinforcement learning (DRL) approach is applied, for the first time, to solve the routing, modulation, spectrum, and core allocation (RMSCA) problem in dynamic multicore fiber elastic optical networks (MCF-EONs). To do so, a new environment was designed and implemented to emulate the operation of MCF-EONs - taking into account the modulation format-dependent reach and intercore crosstalk (XT) - and four DRL agents were trained to solve the RMSCA problem. The blocking performance of the trained agents was compared through simulation to 3 baselines RMSCA heuristics. Results obtained for the NSFNet and COST239 network topologies under different traffic loads show that the best-performing agent achieves, on average, up to a four-times decrease in blocking probability with respect to the best-performing baseline heuristic method.

Más información

Título según WOS: ID WOS:000947244300001 Not found in local WOS DB
Título de la Revista: COMPLEXITY
Volumen: 2023
Editorial: WILEY-HINDAWI
Fecha de publicación: 2023
DOI:

10.1155/2023/4140594

Notas: ISI