4.5 Article

Application-aware QoS routing in SDNs using machine learning techniques

期刊

PEER-TO-PEER NETWORKING AND APPLICATIONS
卷 15, 期 1, 页码 529-548

出版社

SPRINGER
DOI: 10.1007/s12083-021-01262-8

关键词

Software defined networking; Machine learning; Traffic classification; Quality of service routing

资金

  1. JSPS [21K04544]
  2. Grants-in-Aid for Scientific Research [21K04544] Funding Source: KAKEN

向作者/读者索取更多资源

Research developed an efficient data dimension reduction method and proposed a QAR algorithm based on supervised machine learning for QoS requirements. Results showed that the proposed method is more effective than other data preprocessing methods and the QAR algorithm significantly outperforms previous ones in terms of blocking probability.
Software Defined Networking has become an efficient and promising means for overcoming the limitations of traditional networks, e.g., by guaranteeing the corresponding Quality of Service (QoS) of various applications. Compared with the inherent distributed characteristics of the traditional network, SDN is logically centralized and can utilize machine learning techniques to keep track of transmission requirements of each application. In this research, we first develop an efficient data dimension reduction approach by considering the correlation coefficients between data items. We classify the traffic data into distinguished categories based on the QoS requirements by a supervised machine learning method. Then, we propose a QoS Aware Routing (QAR) algorithm according to the QoS requirements of each application that finds a path with either the minimum average link occupied times or the maximum average path residual capacity. The accuracy of machine learning model shows that our proposed dimension reduction approach is more effective than other data preprocessing methods, and the results of blocking probability indicate that our QAR algorithm outperforms significantly previous algorithms.

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