Toward profit-seeking virtual network embedding algorithm via global resource capacity

INFOCOM(2014)

引用 228|浏览160
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摘要
In this paper, after proposing a novel metric, i.e., global resource capacity (GRC), to quantify the embedding potential of each substrate node, we propose an efficient heuristic virtual network embedding (VNE) algorithm, called as GRC-VNE. The proposed algorithm aims to maximize the revenue and to minimize the cost of the infrastructure provider (InP). Based on GRC, the proposed algorithm applies a greedy load-balance manner to embed each virtual node sequentially, and then adopts the shortest path routing to embed each virtual link. Simulation results demonstrate that our proposed GRC-VNE algorithm achieves lower request blocking probability and higher revenue due to the more appropriate consideration of the resource distribution of the entire network, when compared to the two lastest VNE algorithms that also consider the resources of entire substrate network. Then, we introduce a classical reserved cloud revenue model, which consists of fixed revenue and variable one. Based on this revenue model, we design a novel admission control policy selectively accepting the VNR with high revenue-to-cost ratio to maximize the InP's profit based on an empirical threshold. Through extensive simulations, we observe that the optimal empirical threshold is proportional to the ratio of variable revenue to the fixed one.
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关键词
revenue-to-cost ratio,profit-seeking virtual network embedding algorithm,virtual link,Admission policy,GRC-VNE algorithm,greedy load-balancing,reserved cloud revenue model,GRC-VNE,virtual private networks,profitability,admission control policy,resource allocation,greedy algorithms,Network virtualization,Virtual network embedding (VNE),shortest path routing,substrate network,infrastructure provider cost minimization,InP,telecommunication network routing,heuristic virtual network embedding algorithm,cloud computing,Global resource capacity (GRC),request blocking probability,Reserved cloud revenue model,resource distribution,cost reduction,global resource capacity
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