期刊文献+

基于小波变换和优化的SVM的网络流量预测模型 被引量:15

NETWORK TRAFFIC PREDICTION MODEL BASED ON WAVELET TRANSFORM AND OPTIMISED SUPPORT VECTOR MACHINE
在线阅读 下载PDF
导出
摘要 提出一种基于小波变换和优化的SVM的网络流量预测模型(WaOSVM),首先对网络流量进行无抽取小波分解得到小波系数和尺度系数,然后选取适当核函数的SVM分别进行预测,其中SVM的参数用自适应量子粒子群算法(AQPSO)进行优化,最后将各预测结果进行小波重构得到最终预测结果。实验结果表明:优化过的SVM具有较好的泛化能力,该模型适合作长期预测,预测精度明显优于单一的SVM和小波神经网络模型。 A new network traffic prediction model based on wavelet transform and optimised support vector machine(WsOSVM) is proposed.First,the network traffic is decomposed by non-decimated wavelet transform to acquire the scaling coefficients and wavelet coefficients,and then they are sent individually to different SVM with suitable kernel function for prediction.The parameters of SVM are optimised by adaptive quantum particle swarm optimisation(AQPSO).At last the predictions are combined into the final result by wavelet reconstruction.Experimental results show that the optimised SVM has better generalization performance.The proposed model is suitable for long-term forecast.Compared with the single SVM and the wavelet neural networks model,it has much better prediction precision.
出处 《计算机应用与软件》 CSCD 2011年第2期34-36,59,共4页 Computer Applications and Software
基金 国家自然科学基金(60573123)
关键词 流量预测 αTrous小波变换 SVM 参数优化 量子粒子群 Traffic prediction α、Trous wavelet transform SVM Parameter optimization Quantum particle swarm
  • 相关文献

参考文献16

  • 1Sang A,Li S.J predictability analysis of network traffic[J].Computer Networks,2002,39 (4):329-345.
  • 2舒炎泰,王雷,张连芳,薛飞,金志刚,OliverYang.基于FARIMA模型的Internet网络业务预报[J].计算机学报,2001,24(1):46-54. 被引量:41
  • 3洪飞,吴志美.基于小波的多尺度网络流量预测模型[J].计算机学报,2006,29(1):166-170. 被引量:46
  • 4王兆霞,孙雨耕,陈增强,袁著祉.基于模糊神经网络的网络业务量预测研究[J].通信学报,2005,26(3):136-140. 被引量:17
  • 5Cortes C,Vapnik V N.Support vector networks[J].Machine Learning,1995,20(3):273-295.
  • 6Vapnik V N.The nature of statistical learning theory[M].Berlin:Springer-Verlag,2005.
  • 7Beverly R,Sollins K,Berger A.SVM learning of IP address structure for latency prediction[C]//Proc.of ACM SIGCOMM 2006 Workshop on Mining Network Data,Pisa,Italy,2006.New York,USA:ACM,2006.
  • 8Mira M,Sommers J,Bardford P,et al.A machine learning approach to TCP throughput predietion[C]//ACM SIGMETRICS Pedormance Evaluation Review.New York,USA:ACM,2007.
  • 9Bermolen P,Ressi D.Support vector regression for link load prediction[J].Computer Networks,2009,53 (2):191-201.
  • 10Shensa M J.The Discrete wavelet transform:wedding the α Trous and Mallat algorithms[J].IEEE Transactions on Signal Processing,1992,40(10):2464-2482.

二级参考文献58

  • 1吴泽民,郑少仁.一种经验性的自相似流仿真算法[J].系统仿真学报,2002,14(1):41-43. 被引量:5
  • 2邵信光,杨慧中,石晨曦.ε不敏感支持向量回归在化工数据建模中的应用[J].东南大学学报(自然科学版),2004,34(B11):215-218. 被引量:6
  • 3薛飞.自相似网络业务的建模分析与性能评价研究(博士学位论文)[M].天津:天津大学,1998..
  • 4Krunz M. , Makowski A.. Modeling video traffic using M/G/infinity input processes: A compromise between markovian and LRD models. IEEE Journal on Selected Areas in Communications, 1998, 16(5):733-748.
  • 5Leland W. E, , Taqqu M. S, , Willinger W. , Wilson D. V., On the self-similar nature of ethernet traffic. IEEE/ACM Transactions on Networking, 1994, 2(1): 1-15.
  • 6Park K. , Kim G. , Crovella M.. On the effect of traffic self similarity on network performance. In: Proceedings of SHE International Conference Performance rand Control of Network Systems, Dallas, USA, 1997, 168-175.
  • 7Park K. , Willinger W.. Self-Similar Network Traffic and Performance Evaluation. Wiley-Interscience, 2000.
  • 8Paxson V. , Floyd S.. Wide-area traffic: The failure of poisson modelling. IEEE/ACM Transactions on Networking,1995, 3(3): 226-244.
  • 9Konstantina Papagiannaki, Nina Taft, Zhang Zhi I.i, Christophe Diot, Long-term forecasting of Internet backbone traffic:Observations and initial models. In:Proceedings of INFOCOM,London, UK, 2003, 753-764.
  • 10Groschwitz N. K. , Polyzos G. C.. A time series model of long-term NSFNET backbone traffic. In.. Proceedings of IEEE ICC,Pittsburgh, PA, 1994, 234-238.

共引文献226

同被引文献146

引证文献15

二级引证文献78

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部