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Erschienen in: Mobile Networks and Applications 2/2021

20.12.2019

A New Traffic Prediction Algorithm to Software Defined Networking

verfasst von: Yuqing Wang, Dingde Jiang, Liuwei Huo, Yong Zhao

Erschienen in: Mobile Networks and Applications | Ausgabe 2/2021

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Abstract

Traffic prediction is significantly important for performance analysis and network planning in Software Defined Networking (SDN). However, to effectively predict network traffic in current networks is very difficult and nearly prohibitive. As a new cutting-edge network technology, SDN decouples the control and data planes of network switch devices to enable the flexibility of network measurements and managements. The SDN architecture of the flow-based forwarding idea brings forth a promising of network traffic capture and prediction. We propose a lightweight traffic prediction algorithm for SDN applications. Firstly, different from traditional network traffic measurements, our method uses the flow-based forwarding idea in SDN to extract traffic statistic from data plane. The statistical variable describes network flow information forwarded in SDN and enables more accurate measurements of flow traffic via a direct and low-overhead way compared with traditional traffic measurements. Secondly, based on the temporal nature of traffic, the time-correlation theory is utilized to model flow traffic, where the time-series analysis theory and regressive modeling approach are used to characterize network traffic in SDN. A fully new method is proposed to perform traffic prediction. Thirdly, we propose the flow-based forwarding traffic prediction algorithm to forecast to SDN traffic. The detailed algorithm process is discussed and analyze. Finally, sufficient experiments are presented and designed to validate the proposed method. Simulation results show that our method is feasible and effective.

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Literatur
1.
Zurück zum Zitat Sezer S, Scott-Hayward S, Chouhan P et al (2013) Are we ready for SDN? Implementation challenges for software-defined networks. IEEE Commun Mag 51(7):36–43CrossRef Sezer S, Scott-Hayward S, Chouhan P et al (2013) Are we ready for SDN? Implementation challenges for software-defined networks. IEEE Commun Mag 51(7):36–43CrossRef
2.
Zurück zum Zitat Kuang X, Xu L, Huang Y et al (2010) Real-time forecasting for short-term traffic flow based on General Regression Neural Network. Proc. ICA'10, 2010, pp 2776–2780 Kuang X, Xu L, Huang Y et al (2010) Real-time forecasting for short-term traffic flow based on General Regression Neural Network. Proc. ICA'10, 2010, pp 2776–2780
3.
Zurück zum Zitat Nunes B, Mendonca M, Nguyen X et al (2014) A survey of software-defined networking: past, present, and future of programmable networks. IEEE Commun Surv Tutor 16(3):1617–1634CrossRef Nunes B, Mendonca M, Nguyen X et al (2014) A survey of software-defined networking: past, present, and future of programmable networks. IEEE Commun Surv Tutor 16(3):1617–1634CrossRef
4.
Zurück zum Zitat Kreutz D, Ramos F, Verissimo P et al (2015) Software-defined networking: a comprehensive survey. Proc IEEE 103(1):14–76CrossRef Kreutz D, Ramos F, Verissimo P et al (2015) Software-defined networking: a comprehensive survey. Proc IEEE 103(1):14–76CrossRef
5.
Zurück zum Zitat Al-Najjar A, Layeghy S, Portmann M (2016). Pushing SDN to the end-host, network load balancing using OpenFlow. In: Proc. PCCW'16, 2016, pp 1–6 Al-Najjar A, Layeghy S, Portmann M (2016). Pushing SDN to the end-host, network load balancing using OpenFlow. In: Proc. PCCW'16, 2016, pp 1–6
6.
Zurück zum Zitat Saxena M, Kumar R (2016) A recent trends in software defined networking (SDN) security. In: Proc. CSGD'16, pp 851–855 Saxena M, Kumar R (2016) A recent trends in software defined networking (SDN) security. In: Proc. CSGD'16, pp 851–855
7.
Zurück zum Zitat Ning C, Wang J (2015). Auto regressive moving average (ARMA) prediction method of bank cash flow time series. In: Proc. CCC'15, 2015, pp 4928–4933 Ning C, Wang J (2015). Auto regressive moving average (ARMA) prediction method of bank cash flow time series. In: Proc. CCC'15, 2015, pp 4928–4933
8.
Zurück zum Zitat Tan Y, Cheng J, Zhu H et al. Real-time life prediction of equipment based on optimized ARMA model. In: Proc. PSHMC'17, 2017, pp 1–6 Tan Y, Cheng J, Zhu H et al. Real-time life prediction of equipment based on optimized ARMA model. In: Proc. PSHMC'17, 2017, pp 1–6
9.
Zurück zum Zitat Jiang D, Wang X, Guo L et al (2011) Accurate estimation of large-scale IP traffic matrix. AEU-Int J Electr Commun 65(1):75–86CrossRef Jiang D, Wang X, Guo L et al (2011) Accurate estimation of large-scale IP traffic matrix. AEU-Int J Electr Commun 65(1):75–86CrossRef
10.
Zurück zum Zitat Li Y, Liu H, Yang W et al (2017) Predicting inter-data-center network traffic using elephant flow and sublink information. IEEE Trans Netw Serv Manag 13(4):782–792MathSciNet Li Y, Liu H, Yang W et al (2017) Predicting inter-data-center network traffic using elephant flow and sublink information. IEEE Trans Netw Serv Manag 13(4):782–792MathSciNet
11.
Zurück zum Zitat Wei D (2017) Network traffic prediction based on RBF neural network optimized by improved gravitation search algorithm. Neural Comput & Applic 28(8):2303–2312CrossRef Wei D (2017) Network traffic prediction based on RBF neural network optimized by improved gravitation search algorithm. Neural Comput & Applic 28(8):2303–2312CrossRef
12.
Zurück zum Zitat Zhang C, Zhang H, Qiao J et al (2019) Deep transfer learning for intelligent cellular traffic prediction based on cross-domain big data. IEEE J Selected Areas Commun 37(6):1389–1401CrossRef Zhang C, Zhang H, Qiao J et al (2019) Deep transfer learning for intelligent cellular traffic prediction based on cross-domain big data. IEEE J Selected Areas Commun 37(6):1389–1401CrossRef
13.
Zurück zum Zitat H Lu, F Yang. A network traffic prediction model based on wavelet transformation and LSTM network, in Proc. ICSESS'18, 2018, pp. 1–4 H Lu, F Yang. A network traffic prediction model based on wavelet transformation and LSTM network, in Proc. ICSESS'18, 2018, pp. 1–4
14.
Zurück zum Zitat Xie J, Yu F, Huang T et al (2019) A survey of machine learning techniques applied to software defined networking (SDN): research issues and challenges. IEEE Commun Surv Tutor 21(1):393–430CrossRef Xie J, Yu F, Huang T et al (2019) A survey of machine learning techniques applied to software defined networking (SDN): research issues and challenges. IEEE Commun Surv Tutor 21(1):393–430CrossRef
15.
Zurück zum Zitat Dai L, Yang W, Gao S et al. EMD-based multi-model prediction for network traffic in software-defined networks. In: Proc. MASS'14, 2014, pp 539–544 Dai L, Yang W, Gao S et al. EMD-based multi-model prediction for network traffic in software-defined networks. In: Proc. MASS'14, 2014, pp 539–544
16.
Zurück zum Zitat Azzouni A, Pujolle G (2018) NeuTM: A neural network-based framework for traffic matrix prediction in SDN. In: Proc. NOMS'18, 2018, pp 1–5 Azzouni A, Pujolle G (2018) NeuTM: A neural network-based framework for traffic matrix prediction in SDN. In: Proc. NOMS'18, 2018, pp 1–5
17.
Zurück zum Zitat Li D, Xing C, Dai N et al (2019) Estimating SDN traffic matrix based on online adaptive information gain maximization method. Peer-to-Peer Netw Appl 12(2):465–480CrossRef Li D, Xing C, Dai N et al (2019) Estimating SDN traffic matrix based on online adaptive information gain maximization method. Peer-to-Peer Netw Appl 12(2):465–480CrossRef
18.
Zurück zum Zitat Yu B, Yang G, Yoo C (2018) Comprehensive prediction models of control traffic for SDN controllers. In: Proc. NSW'18, 2018, pp 262–266 Yu B, Yang G, Yoo C (2018) Comprehensive prediction models of control traffic for SDN controllers. In: Proc. NSW'18, 2018, pp 262–266
19.
Zurück zum Zitat Adrichem N, Doerr C, Kuipers F (2014) OpenNetMon: Network monitoring in OpenFlow Software-Defined Networks. In: Proc. NOMS'14, 2014, pp 1–8 Adrichem N, Doerr C, Kuipers F (2014) OpenNetMon: Network monitoring in OpenFlow Software-Defined Networks. In: Proc. NOMS'14, 2014, pp 1–8
20.
Zurück zum Zitat Cao A, Qiao Y, Sun K et al (2018) Network traffic analysis and prediction of Hotspot in cellular network. In: Proc. IC-NIDC'18, 2018, pp 452–456 Cao A, Qiao Y, Sun K et al (2018) Network traffic analysis and prediction of Hotspot in cellular network. In: Proc. IC-NIDC'18, 2018, pp 452–456
22.
Zurück zum Zitat Jiang D, Huo L, Lv Z et al (2018) A joint multi-criteria utility-based network selection approach for vehicle-to-infrastructure networking. IEEE Trans Intell Transp Syst 19(10):3305–3319CrossRef Jiang D, Huo L, Lv Z et al (2018) A joint multi-criteria utility-based network selection approach for vehicle-to-infrastructure networking. IEEE Trans Intell Transp Syst 19(10):3305–3319CrossRef
23.
Zurück zum Zitat Jiang D, Huo L, Song H (2018) Rethinking behaviors and activities of base stations in mobile cellular networks based on big data analysis. IEEE Trans Netw Sci Eng 1(1):1–12MathSciNet Jiang D, Huo L, Song H (2018) Rethinking behaviors and activities of base stations in mobile cellular networks based on big data analysis. IEEE Trans Netw Sci Eng 1(1):1–12MathSciNet
24.
Zurück zum Zitat Jiang D, Wang W, Shi L et al (2018) A compressive sensing-based approach to end-to-end network traffic reconstruction. IEEE Trans Netw Sci Eng 5(3):1–12 Jiang D, Wang W, Shi L et al (2018) A compressive sensing-based approach to end-to-end network traffic reconstruction. IEEE Trans Netw Sci Eng 5(3):1–12
25.
Zurück zum Zitat Jiang D, Huo L, Li Y (2018) Fine-granularity inference and estimations to network traffic for SDN. PLoS One 13(5):1–23 Jiang D, Huo L, Li Y (2018) Fine-granularity inference and estimations to network traffic for SDN. PLoS One 13(5):1–23
Metadaten
Titel
A New Traffic Prediction Algorithm to Software Defined Networking
verfasst von
Yuqing Wang
Dingde Jiang
Liuwei Huo
Yong Zhao
Publikationsdatum
20.12.2019
Verlag
Springer US
Erschienen in
Mobile Networks and Applications / Ausgabe 2/2021
Print ISSN: 1383-469X
Elektronische ISSN: 1572-8153
DOI
https://doi.org/10.1007/s11036-019-01423-3

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