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Fault diagnosis based on PCA for sensors of laboratorial wastewater treatment process

机译:基于PCA的实验室废水处理过程传感器故障诊断

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This paper presents a PCA (principal component analysis)-based diagnostic approach, combining the principal component scores with the principal component loadings, to determine the fault location of sensors in a pilot-scale SBR (sequencing batch reactor activated sludge process) wastewater treatment process. The PCA diagnostic model is firstly built with the historical normal data, and the determination of fault location of sensors in waste-water treatment process is further achieved through the combination of the scores with the loadings of principal components. The study results reveal that PCA model can be used to detect faults; the loadings of principal components can well represent the contributions of variables to the principal components; and the scores of principal components give a clear indication of the faulty samples. The feasibility and effectiveness of the application of the combination of score plots with loading plots for sensor fault diagnosis in the wastewater treatment process are well demonstrated in the study.
机译:本文提出了一种基于PCA(主成分分析)的诊断方法,将主成分评分与主成分负荷相结合,以确定中试规模SBR(顺序批反应堆活性污泥法)废水处理过程中传感器的故障位置。 。首先利用历史正常数据建立PCA诊断模型,然后通过将得分与主要成分的负荷相结合,进一步确定废水处理过程中传感器的故障位置。研究结果表明,PCA模型可用于故障检测。主成分的负荷可以很好地表示变量对主成分的贡献;主成分的分数清楚地表明了有缺陷的样品。在研究中充分证明了将得分图与负荷图结合用于废水处理过程中传感器故障诊断的可行性和有效性。

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