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Continuous annealing process fault detection method based on recursive kernel principal component analysis

机译:基于递归核主成分分析的连续退火过程故障检测方法

摘要

A fault detection method in a continuous annealing process based on a recursive kernel principal component analysis (RKPCA) is disclosed. The method includes: collecting data of the continuous annealing process including roll speed, current and tension of an entry loop (ELP); building a model using the RKPCA and updating the model, and calculating the eigenvectors {circumflex over (P)}. In the fault detection of the continuous annealing process, when the T2 statistic and SPE statistic are greater than their confidence limit, a fault is identified; on the contrary, the whole process is normal. The method mainly solves the nonlinear and time-varying problems of data, updates the model and calculates recursively the eigenvalues and eigenvectors of the training data covariance by the RKPCA. The results show that the method can not only greatly reduce false alarms, but also improve the accuracy of fault detection.
机译:公开了一种基于递归核主成分分析(RKPCA)的连续退火过程中的故障检测方法。该方法包括:收集连续退火过程的数据,包括轧制速度,电流和进入回路的张力(ELP);使用RKPCA建立模型并更新模型,然后计算特征向量。在连续退火过程的故障检测中,当T 2 统计量和SPE统计量大于置信度极限时,就确定为故障。相反,整个过程是正常的。该方法主要解决了数据的非线性和时变问题,更新了模型,并通过RKPCA递归计算了训练数据协方差的特征值和特征向量。结果表明,该方法不仅可以大大减少误报,而且可以提高故障检测的准确性。

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