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State variable based statistical methods for auditing sensors of multivariable dynamic processes

机译:基于状态变量的统计方法,用于多变量动态过程传感器的审核

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A statistical process monitoring method based on a state space model of a dynamic process is introduced for auditing sensor status for bias, drift and excessive noise affecting the sensors of multivariable continuous processes. Changes in the magnitudes of means and variances of residuals between measured and predicted process variables are used to detect and discriminate sensor abnormalities. The statistical model that describes the in-control variability is based on a canonical variate state space (CVSS) model. The CV state variables obtained from the state space model are linear combinations of the past process measurements which explain the variability of the future measurements the most, and they are regarded as the principal dynamic dimensions. The method can detect and discriminate between bias change, drift, and variations in noise levels of process sensors based on the analysis of data batches. An experimental application to a high-temperature short-time (HTST) milk pasteuriztion process illustrates the proposed methodology.
机译:介绍了一种基于动态过程状态空间模型的统计过程监视方法,用于审计传感器状态的偏差,漂移和影响多变量连续过程传感器的过大噪声。测量和预测的过程变量之间的均值幅度变化和残差方差用于检测和区分传感器异常。描述控制中变异性的统计模型基于规范变异状态空间(CVSS)模型。从状态空间模型获得的CV状态变量是过去过程度量的线性组合,这些变量最大程度地解释了将来度量的可变性,它们被视为主要的动态尺寸。该方法可以基于对数据批次的分析来检测并区分过程传感器的偏置变化,漂移和噪声水平的变化。在高温短时(HTST)牛奶巴氏消毒过程中的实验应用说明了所提出的方法。

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