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Integrating KPCA with an improved evolutionary algorithm for knowledge discovery in fault diagnosis

机译:将KPCA与改进的进化算法进行了改进的现实诊断

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In this paper, a novel approach to knowledge discovery is proposed based on the integration of kernel principal component analysis (KPCA) with an improved evolutionary algorithm. KPCA is utilized to first transform the original sample space to a nonlinear feature space via the appropriate kernel function, and then perform principal component analysis (PCA). However, it remains an untouched problem to select the optimal kernel function. This paper addresses it by an improved evolutionary algorithm incorporated with Gauss mutation. The application in fault diagnosis shows that the integration of KPCA with evolutionary computation is effective and efficient to discover the optimal nonlinear feature transformation corresponding to the real-world operational data.
机译:本文基于核心主成分分析(KPCA)与改进的进化算法,提出了一种知识发现的新方法。 KPCA用于首先通过适当的内核功能将原始样本空间转换为非线性特征空间,然后执行主成分分析(PCA)。但是,选择最佳内核函数仍然是一个不受解的问题。本文通过改进的进化算法与高斯突变的改进的进化算法进行了解决。故障诊断中的应用表明,KPCA与进化计算的集成是有效且有效的,以发现与真实世界的操作数据相对应的最佳非线性特征变换。

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