Virtual Network Mapping Based on the Prediction of Support Vector Machine

Hui Zhang, Xiangwei Zheng, Jie Tian
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引用次数: 2

Abstract

Network virtualization plays an important role in the development of the network because of its dynamics and flexibility on network infrastructure configuration. Virtual network mapping is the main method to realize the network virtualization. Most of the current virtual network mappings always allocate network resources in an exclusive and excessive way. For example, the entire bandwidth amount of the virtual network will be allocated according to its peak demand of the traffic. However, the truth is that the actual traffic needs of virtual network are changing constantly throughout its lifetime, and the distribution of static mapping will inevitably lead to the underutilization of the assigned resource, high user cost as well as low carrier revenue. In order to solve the above problems, we need to predict the changes of virtual network's demands accurately and adjust the allocation of resources dynamically. In this paper, we propose a virtual network mapping method based on support vector machine (SVM) to dynamically allocate and adjust the network resources. In addition, to improve the accuracy of regression forecasting, the relatively better prediction parameters are selected in the proposed method. Experimental results show that the proposed embedding method can make full use of resources, improve the acceptance rate of the virtual networks, and increase the revenue of the operators significantly.
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基于支持向量机预测的虚拟网络映射
网络虚拟化以其对网络基础设施配置的动态性和灵活性,在网络的发展中起着重要的作用。虚拟网络映射是实现网络虚拟化的主要方法。当前大多数虚拟网络映射总是以排他性和过度的方式分配网络资源。例如,根据流量的峰值需求来分配虚拟网络的整个带宽量。但实际情况是,虚拟网络的实际流量需求在其整个生命周期中是不断变化的,静态映射的分布必然会导致分配资源利用率不足,用户成本高,运营商收益低。为了解决上述问题,需要准确预测虚拟网络的需求变化,动态调整资源配置。本文提出一种基于支持向量机(SVM)的虚拟网络映射方法,实现网络资源的动态分配和调整。此外,为了提高回归预测的精度,本文提出的方法选择了相对较好的预测参数。实验结果表明,所提出的嵌入方法能够充分利用资源,提高虚拟网络的接受率,显著增加运营商的收益。
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