Abstract
VNE is a crucial part of NV, which aims to map the virtual networks to a shared substrate network. With the emergence of various delay sensitive applications, how to improve the delay performance of the system has become a hot topic in academic circles. Based on extensive research, we proposed a multi-domain VNE algorithm based on delay prediction (DP-VNE). Firstly, the candidate physical nodes are selected by estimating the delay of virtual requests, and then PSO algorithm is used to optimize the mapping process, so as to reduce the delay of the system. The simulation results show that compared with the other three advanced algorithms, the proposed algorithm can significantly reduce the system delay while keeping other indicators unaffected.
Reprinted by permission from Old City Publishing: Ref. [1].
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Jiang, C., Zhang, P. (2021). A Multi-Domain Virtual Network Embedding Algorithm with Delay Prediction. In: QoS-Aware Virtual Network Embedding. Springer, Singapore. https://doi.org/10.1007/978-981-16-5221-9_12
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DOI: https://doi.org/10.1007/978-981-16-5221-9_12
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