Mohammed S. Seleem, Hossam M. A. Fahmy, Hossam Osman, Hussein I. Shahein
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Enhanced Bandwidth Reconfiguration for On-Demand QoS Path Framework
This paper proposes an enhancement to a novel end-to-end QoS framework that has been recently introduced in the literature and referred to as the on demand QoS path (ODP). The ODP provides the end-to-end QoS guaranty of the integrated service (IntServ) while keeping the scalability nature of the differentiated service (DiffServ). The proposed enhancement, named E-ODP, efficiently reconfigures network bandwidth through the utilization of the self-similarity feature of network traffic. Specifically, bandwidth reconfiguration is handled using traffic prediction, fuzzy control, and adaptive learning. Simulation results are presented. They demonstrate a significant and persistent improvement in network utilization