A Learning-Automata-based Congestion-aware scheme for Energy-Efficient Elastic Optical Networks

Georgia A. Beletsioti, Georgios I. Papadimitriou, Petros Nicopolitidis, Emmanouel Varvarigos, Stathis Mavridopoulos
2020 IEEE Access  
The flexible nature of elastic optical networks (EONs) effectively uses spectral resources for optical communication by allocating the minimum required bandwidth to network connections. Since the energy consumption of such networks scales with the magnitude of bandwidth demand, addressing the issue of energy wastage is important. This fact has a profound impact on the design of efficient schemes for energy aware optical networks, and adaptivity arises as one of the most important properties of
more » ... hese networks. Learning Automata are Artificial Intelligence tools that have been used in networking algorithms, when adaptivity to the characteristics of the network environment can result in significantly improved network performance. In this work, a new adaptive power-aware algorithm is introduced, which selectively switches off bandwidth-variable optical transponders (BVTs) under low utilization conditions, to achieve energy efficiency. A novel adaptive scheme, which makes use of Learning Automata to significantly reduce the total energy consumption, while at the same time avoiding the onset of congestion, is proposed. The proposed scheme monitors network congestion, in terms of Bandwidth Blocking Probability (BBP), and the learning mechanism finds the optimal amount of energy-saving so that congestion is avoided, while at the same time significant energy savings are achieved. The proposed Learning Energy-Saving Algorithm (LESA) is evaluated via extensive simulation results, which indicate that it achieves an energy saving of up to 50%, compared to other energy efficient solutions. INDEX TERMS Adaptivity, elastic optical networks, energy-efficiency, learning automata, metropolitan networks.
doi:10.1109/access.2020.2996279 fatcat:uowsa26ffvgohkiz6t6ou6esvy