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基于KP CA的作战仿真实验数据特征提取方法
引用本文:赵景龙,何铁军.基于KP CA的作战仿真实验数据特征提取方法[J].情报指挥控制系统与仿真技术,2014(4):111-113.
作者姓名:赵景龙  何铁军
作者单位:中国人民解放军93501部队,北京100076
摘    要:针对作战仿真分析过程中各作战要素的复杂性与非线性,研究了一种基于KPCA的作战仿真实验数据特征提取方法。该方法描述了KPCA特征提取的原理和算法,并将其应用于作战仿真实验数据的空间降维,根据累积贡献率确定新特征的数量。仿真结果表明,该方法与PCA相比具有主成份特征明显、贡献率集中等优点,能够有效综合原始数据的非线性特征,降低原始数据的维数。

关 键 词:作战仿真  核主成分分析  特征提取

Feature Extraction Method for Combat Simulation Data Based on KP CA
ZHAO Jing-long,HE Tie-jun.Feature Extraction Method for Combat Simulation Data Based on KP CA[J].Information Command Control System and Simulation Technology,2014(4):111-113.
Authors:ZHAO Jing-long  HE Tie-jun
Institution:(the Unit 93501 of PLA, Beijing 100076, China)
Abstract:For the complexity and nonlinearity of various combat elements in combat simulation analysis, a feature extraction method for combat simulation data based on KPCA is proposed. The principle and algorithm of KPCA feature extraction are described. Then KPCA method is applied to the dimension reduction of combat simulation data. The number of new features is determined by the cumulative contribution rate. Simulation results show that compared with PCA, the proposed method has the advantages of obvious principal component feature and concentrated contribution rate. It can effectively integrate the non-linear characteristics, and reduce the dimension of the original data.
Keywords:combat simulation  KPCA  feature extraction
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