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Statistical Monitoring of Processes with Multiple Operating Modes

机译:具有多种操作模式的过程的统计监视

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Varying production regimes and loading conditions on equipment often result in multiple operating modes in process operations. The data recorded from such processes will typically be multimodal in nature leading to challenges in applying standard data-driven process monitoring approaches. Moreover, even if a monitoring approach is able to account for the variability present in a training set comprised of historical process data, in order to be robust and reliable the method will need to account for any new operating modes which might emerge during production. Therefore, it is desirable to have a monitoring algorithm that can both handle data multimodality in off-line training and, when implemented on-line, can actively update in order to incorporate new operating modes. This paper proposes a monitoring framework which combines an unsupervised clustering approach with a kernel-based Multivariate Statistical Process Monitoring (MSPM) algorithm. A monitoring model is trained off-line and is subsequently used to detect anomalies on-line. An anomaly might be indicative of either a developing fault or a change in the process to a new operating mode. In the latter case, the monitoring model can be updated to account for the new mode whilst still being able to detect faults under this framework. The advantages of the off-line training procedure relative to a standard kernel-based method are demonstrated via a numerical simulation. Additionally, the monitoring performance in the presence of faults and the capability of updating the model in the presence of new operating modes is demonstrated using a benchmark data set from an experimental pilot plant.
机译:设备上不同的生产方式和负载条件通常会导致过程操作中出现多种操作模式。从此类过程记录的数据本质上通常将是多模式的,从而导致在应用标准数据驱动的过程监视方法方面面临挑战。而且,即使监视方法能够解决由历史过程数据组成的训练集中存在的可变性,为了稳健可靠,该方法将需要考虑在生产过程中可能出现的任何新的操作模式。因此,希望有一种既能在离线训练中处理数据多模态又能在在线实施时主动更新以纳入新的操作模式的监视算法。本文提出了一种监视框架,该框架结合了无监督聚类方法和基于内核的多元统计过程监视(MSPM)算法。离线训练监视模型,随后将其用于在线检测异常。异常可能表示出现故障或过程更改为新的操作模式。在后一种情况下,可以更新监视模型以说明新模式,同时仍然能够在此框架下检测故障。相对于标准的基于核的方法,脱机训练程序的优势通过数值模拟得到了证明。此外,使用来自试验性中试工厂的基准数据集证明了在存在故障的情况下的监视性能以及在存在新操作模式的情况下更新模型的能力。

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