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Fault identification with modified reconstruction-based contribution based on kernel principal component analysis

机译:基于核主成分分析的基于改进重构贡献的故障识别

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In industrial manufacturing processes, it is crucial to correctly identify the root cause of a fault. Reconstruction-based contribution with kernel principal component analysis (KPCA-RBC) was proposed to tackle this problem. However, this conventional RBC method focuses only on the fault magnitude, which is how much a faulty sample is moved along each axis by the reconstruction procedure with a fault detection index, and this might have limited its identification performance. In this paper, a new fault identification method, modified KPCA-RBC, is proposed. The proposed method takes into account how much a fault detection index is reduced by reconstruction along each axis at the same time as the fault magnitude. A numerical example showed that the proposed method outperformed the conventional RBC method in the identification performance. In addition, the practicability of the proposed method was confirmed through a case study of the vinyl acetate monomer (VAM) plant model.
机译:在工业制造过程中,正确识别故障的根本原因至关重要。提出了基于重构的贡献与内核主成分分析(KPCA-RBC)来解决此问题。但是,这种常规的RBC方法仅关注故障幅度,即通过具有故障检测指标的重建过程,故障样本沿每个轴移动了多少,这可能会限制其识别性能。本文提出了一种新的故障识别方法,即改进的KPCA-RBC。所提出的方法考虑了通过与故障幅度同时沿每个轴进行重构而减少了多少故障检测指标。数值算例表明,该方法在识别性能上优于传统的RBC方法。此外,通过对醋酸乙烯酯单体(VAM)工厂模型的案例研究,证实了该方法的实用性。

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