Reinforcement Learning for Load Management in DiffServ-MPLS Mobile Networks
Cognitive networks are envisaged to provide optimized resource usage in future. While heterogeneity and resource scarcity draw research attention to the wireless part, the rest of the network (mobile backhaul) is rarely considered for these improvements. The future of next generation wireless networks is probable to be all-IP, where a common flexible infrastructure is looking for dynamic autonomous solutions that cognition may provide. This paper proposes a novel solution, where the introduction of reinforcement learning over Multi-Protocol Label Switching (MPLS) in a Differentiated Services (DiffServ) mobile backhaul should provide autonomous network adaptation aiming at enhanced QoS capabilities.