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A Process Monitoring Method Based on Global-Local Structure Analysis in Principal Component Reconstruction Space

机译:主成分重构空间中基于全局局部结构分析的过程监控方法

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摘要

The performance of projection-based process monitoring methods is prone to be affected by noise in data. By constructing latent variables that have large contribution to variance, principal component analysis (PCA) can separate the main information from noise. Thus, it is widely used in data-based process monitoring and signal denoising. Global-local structure analysis (GLSA) can extract both global information and local structure information by combining PCA and local preserving projection. However, GLSA cannot avoid the possibility to model noise information. In this paper, a novel method is proposed which applies GLSA in the data reconstruction space of principal components. This method can not only extract global variance information and local structure information but also avoid the possibility of noise modeling. Simulations based on data from a numerical example and TE process demonstrate that the proposed method is superior to GLSA for fault detection.
机译:基于投影的过程监视方法的性能容易受到数据噪声的影响。通过构造对方差有很大贡献的潜在变量,主成分分析(PCA)可以将主要信息与噪声分开。因此,它被广泛用于基于数据的过程监控和信号降噪。全局局部结构分析(GLSA)可以通过结合PCA和局部保留投影来提取全局信息和局部结构信息。但是,GLSA无法避免对噪声信息进行建模的可能性。本文提出了一种将GLSA应用于主成分数据重构空间的新方法。该方法不仅可以提取全局方差信息和局部结构信息,而且可以避免噪声建模的可能性。基于数值实例和TE过程的数据仿真表明,该方法在故障检测方面优于GLSA。

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