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GAFSA优化SVR的网络流量预测模型研究
引用本文:王瑞雪,刘 渊. GAFSA优化SVR的网络流量预测模型研究[J]. 计算机应用研究, 2013, 30(3): 856-860
作者姓名:王瑞雪  刘 渊
作者单位:江南大学 数字媒体学院,江苏 无锡,214122
基金项目:江苏省自然科学基金重点研究专项基金资助项目(BK2011003); 国家自然科学基金资助项目(61103223); 江苏省六大人才高峰基金资助项目
摘    要:现有的诸多网络流量预测模型存在预测稳定性不好、精度较低等问题。针对此类问题, 研究了一种通过GAFSA(全局人工鱼群算法)优化SVR模型的网络流量预测方法。GAFSA是一种群智能优化算法, 寻优效果显著。采用GAFSA对SVR预测模型进行参数寻优, 可以得到使预测效果最佳的训练参数; 使用这组最优参数训练SVR, 建立网络流量预测模型, 可以很好地改善基于其他智能优化算法改进的SVR网络流量预测模型多次预测结果相差较大的问题, 使预测结果趋于稳定, 同时也可以提高预测精准度。仿真结果表明, GAFSA-SVR网络流量预测模型与其他模型相比, 预测结果基本稳定, 精准度提高到89%以上, 对于指导网络控制行为、分析网络安全态势有重要意义。

关 键 词:网络流量预测  参数优化  支持向量回归机  全局人工鱼群算法  自相似性

Study on network traffic forecast model of SVR optimized by GAFSA
WANG Rui-xue,LIU Yuan. Study on network traffic forecast model of SVR optimized by GAFSA[J]. Application Research of Computers, 2013, 30(3): 856-860
Authors:WANG Rui-xue  LIU Yuan
Affiliation:School of Digital Media, Jiangnan University, Wuxi Jiangsu 214122, China
Abstract:There are some problems, such as low precision, on existed network traffic forecast model. In accordance with these problems, this paper proposed the network traffic forecast model of support vector regression (SVR)algorithm optimized by global artificial fish swarm algorithm(GAFSA). GAFSA constituted an improvement of artificial fish swarm algorithm, which was a swarm intelligence optimization algorithm with a significantly effect of optimization. The optimum training parameters could be calculated with optimizing by chosen parameters, which would make the forecast more accurate. With the optimum training parameters searched by GAFSA algorithm, a model of network traffic forecast, which greatly solved problems of great errors in SVR improved by others intelligent algorithms, could be built with the forecast result approaching stability and the increased forecast precision. The simulation shows that, compared with other models, the forecast results of GAFSA-SVR network traffic forecast model is more stable with the precision improves to more than 89%, which plays an important role on instructing network control behavior and analyzing security situation.
Keywords:network traffic forecast  optimization of parameters  support vector regression(SVR)  global artificial fish swarm algorithm(GAFSA)  self-similarity
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