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A variable selection method based on KPCA and FNN for nonlinear system modeling

机译:基于KPCA和FNN的非线性系统建模的可变选择方法

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The kernel principal components analysis (KPCA) can be used to convert a set of nonlinear variables into a linearly separable factors and overcome difficulties encountered with the existing multicollinearity between the factors. However the nonlinear system modeling method does not reduce the number of original features. This paper presents a novel method based on KPCA and selection of false nearest neighbor method (FNN) for secondary variables selection. In the proposed approach, it is inspired by FNN that interpretation of primary variable would be estimated by calculating the variables' map distance in the KPCA space to select secondary variables. The results show that the method is effective and suitable for variable selection by comparing with the fully parametric model form the production processing of hydrogen cyanide.
机译:内核主成分分析(KPCA)可用于将一组非线性变量转换成线性可分离的因素并克服因子之间存在的多种多细性遇到的困难。 然而,非线性系统建模方法不会减少原始功能的数量。 本文提出了一种基于KPCA的新方法,以及用于次要变量选择的错误最近邻法(FNN)的选择。 在所提出的方法中,它通过FNN启发,通过计算kpca空间中的变量的映射距离来估计主变量的解释来选择次要变量。 结果表明,该方法通过与完全参数模型形成氰化氢的生产加工来有效且适合于可变选择。

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