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Nonlinear process fault diagnosis using kernel ICA and improved FDA

机译:使用内核ICA和改进FDA的非线性过程故障诊断

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Fisher discriminant analysis (FDA) is a linear technique which is non-optimal on minimizing the overall misclassification rate. In this paper, a new approach called KICA-IFDA is proposed for nonlinear process fault diagnosis. In the KICA-IFDA, the kernel independent component analysis (KICA) is first adopted to extract fault feature data from original fault data. Then an improved FDA (IFDA) criterion which is optimal on classifying the fault feature data is constructed based on the particle swarm optimization. The simulation studies on the Tennessee Eastman process demonstrate that the proposed KICA-IFDA outperforms both the IFDA and FDA.
机译:Fisher判别分析(FDA)是一种线性技术,即在最小化整体错误分类率的情况下是非最佳技术。本文提出了一种新的方法,用于非线性过程故障诊断。在KICA-IFDA中,首先采用内核独立分量分析(KICA)从原始故障数据中提取故障特征数据。然后,基于粒子群优化构建了在分类故障特征数据上最佳的改进的FDA(IFDA)标准。田纳西州伊斯曼进程的仿真研究表明,建议的KICA-IFDA优于IFDA和FDA。

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