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Improved Kernel Fisher Discriminant Analysis for Nonlinear Process Fault Pattern Recognition

机译:非线性过程故障模式识别的改进核Fisher判别分析

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Kernel Fisher discriminant analysis (KFDA) has emerged as an well-known nonlinear fault pattern recognition method. However, traditional KFDA method does not consider the utilization of the high order statistical information of process variables, and ignores the mining of the local data structure characteristic. To achieve better fault pattern recognition performance, this paper proposes an improved KFDA method, called statistics local KFDA(SLKFDA). In the proposed method, two techniques, including statistics pattern analysis (SPA) and local structure analysis (LSA), are combined to enhance the basic KFDA method. Firstly, SPA is applied to extract the original process variables' statistics with different orders. Then the KFDA optimization objective is modified by considering the local structure preserving. Lastly, a fault classifier is developed to recognize fault pattern. Simulations on one benchmark process demonstrate that the proposed SLKFDA method has a superior fault pattern recognition performance.
机译:核Fisher判别分析(KFDA)已经成为一种众所周知的非线性故障模式识别方法。但是,传统的KFDA方法没有考虑利用过程变量的高阶统计信息,而忽略了对本地数据结构特征的挖掘。为了获得更好的故障模式识别性能,本文提出了一种改进的KFDA方法,称为统计本地KFDA(SLKFDA)。在该方法中,结合了统计模式分析(SPA)和局部结构分析(LSA)这两种技术来增强基本的KFDA方法。首先,应用SPA提取不同顺序的原始过程变量统计信息。然后通过考虑局部结构保留来修改KFDA优化目标。最后,开发了故障分类器以识别故障模式。在一个基准过程上的仿真表明,所提出的SLKFDA方法具有出色的故障模式识别性能。

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