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基于LS-SVM组合预测的地空导弹发射车液压系统油液污染度预测
引用本文:王锟,王洁,刁迎春. 基于LS-SVM组合预测的地空导弹发射车液压系统油液污染度预测[J]. 传感技术学报, 2012, 25(5): 712-717
作者姓名:王锟  王洁  刁迎春
作者单位:1. 空军工程大学导弹学院,陕西 三原,713800
2. 中国人民解放军93861部队,陕西 三原
摘    要:为了提高组合预测精度,将最小二乘支持向量机(LS-SVM)用于确定组合预测的函数关系,提出了基于LS-SVM的非 线性组合预测方法;为了提高LS-SVM的学习性能和泛化能力,提出了利用粒子群优化算法(PSO)和K-重交叉验证(CV)相结合的参数寻优方法;最后利用提出的方法对某导弹发射车液压系统的液压油污染度进行了预测,...

关 键 词:油液污染度预测  组合预测  最小二乘支持向量机  粒子群优化

LS-SVM Based Nonlinear Combining Forecast for Fluids contamination of hydraulic system in missile launcher
WANG Kun , WANG Jie , DIAO Yingchun. LS-SVM Based Nonlinear Combining Forecast for Fluids contamination of hydraulic system in missile launcher[J]. Journal of Transduction Technology, 2012, 25(5): 712-717
Authors:WANG Kun    WANG Jie    DIAO Yingchun
Affiliation:1.The Missile Institute,Air Force Engineering University,Sanyuan Shanxi 713800,China;2.PLA No.93861 Troop,Sanyuan Shanxi,China)
Abstract:For the purpose of improving the predict accuracy of combination forecasting,firstly a so-called ’least squares support vector machine(LS-SVM)based nonlinear combining forecast’method was proposed,which use LS-SVM to model the nonlinear relationship between the components and combine.Then,for the purpose of improving the learning performance and generalization ability of the LS-SVM,particle swarm optimization algorithm(PSO)combined with k-fold cross validation(CV)method was proposed to select the optimal parameters of LSSVM.Lastly,the proposed method was used to forecast the fluid contamination of a hydraulic system in missile launcher.Simulation results show its superiority.
Keywords:fluids contamination forecast  combination forecasting  least squares support vector machine(LS-SVM)  particle swarm optimization(PSO)
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