| Literature DB >> 33266665 |
Xinbo Liu1, Buhong Wang1, Zhixian Yang1.
Abstract
To improve the low acceptance ratio and revenue to cost ratio caused by the poor match between the virtual nodes and the physical nodes in the existing virtual network embedding (VNE) algorithms, we established a multi-objective optimization integer linear programming model for the VNE problem, and proposed a novel two-stage virtual network embedding algorithm based on topology potential (VNE-TP). In the node embedding stage, the field theory once used for data clustering was introduced and a node embedding function designed to find the optimal physical node. In the link embedding stage, both the available bandwidth and hops of the candidate paths were considered, and a path embedding function designed to find the optimal path. Extensive simulation results show that the proposed algorithm outperforms other existing algorithms in terms of acceptance ratio and revenue to cost ratio.Entities:
Keywords: network virtualization; topology potential; topology potential entropy; virtual network embedding
Year: 2018 PMID: 33266665 PMCID: PMC7512528 DOI: 10.3390/e20120941
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Algorithm comparison.
| Notation | Description |
|---|---|
| VNE-TP | In the node embedding stage, the topology potential, the resource capability and the distance attribute are considered to rank the nodes. In the link embedding stage, the available bandwidth and the hops of the paths are considered, and a k-shortest path algorithm is used. |
| VNE-TOPSIS | In the node embedding stage, five novel node attributes are proposed, and the nodes are ranked based on TOPSIS. In the link embedding stage, a shortest-path based algorithm is used. |
| VNE-MCRR | In the node embedding stage, the Markov Reward Model is introduced, and the nodes are ranked based on Markov Reward Processes. In the link embedding stage, a shortest-path based algorithm is used. |
Figure 1Comparison between our algorithm and the existing algorithms: (a) Acceptance ratio over time; (b) Revenue to cost ratio over time. VNE-TP is our proposed algorithm, VNE-TOPSIS and VNE-MCRR are the algorithms proposed in the literature [20] and [19] respectively.
Figure 2The influence of arrival rate of virtual network requests (VNRs): (a) Acceptance ratio with arrival rate; (b) Revenue to cost ratio with arrival rate.
Figure 3The influence of access control conditions: (a) Acceptance ratio with threshold; (b) Revenue to cost ratio with threshold.