SDFA: A Service-Driven Fragmentation-Aware Resource Allocation in Elastic Optical Networks

To support the fifth-generation bandwidth-hungry applications, such as the Internet of Things, virtual reality, augmented reality, and cloud computing, elastic optical networks have become the most promising infrastructure that allocates bandwidths for services flexibility. Fragmentation caused by d...

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Veröffentlicht in:IEEE eTransactions on network and service management 2022-03, Vol.19 (1), p.353-365
Hauptverfasser: Bao, Bowen, Yang, Hui, Yao, Qiuyan, Yu, Ao, Chatterjee, Bijoy Chand, Oki, Eiji, Zhang, Jie
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Sprache:eng
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Zusammenfassung:To support the fifth-generation bandwidth-hungry applications, such as the Internet of Things, virtual reality, augmented reality, and cloud computing, elastic optical networks have become the most promising infrastructure that allocates bandwidths for services flexibility. Fragmentation caused by dynamic resource allocation deteriorates the availability of resources in networks, increasing the blocking of requests. The fragmentation occurs not only in the used path but also in the neighboring links that are not included in the used path; they are connected to the used path. This paper proposes a service-driven fragmentation-aware (SDFA) resource allocation scheme to enhance resource utilization by avoiding fragmentation with the joint consideration of the used path and neighboring links. A service-driven fragmentation metric (SDFM) is, for the first time, presented to estimate the fragmentation in the used path and neighboring links. The SDFA scheme prefers to assign services at the spectrum slots, which leads to the minimum value of SDFM. Simulation results indicate that SDFA outperforms four conventional fragmentation-aware resource allocation schemes in terms of blocking probability and resource utilization due to a lower fragmentation in the network.
ISSN:1932-4537
1932-4537
DOI:10.1109/TNSM.2021.3116757