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Monitoring of chemical processes using improved multiscale KPCA

机译:使用改进的MultiScale KPCA监测化学过程

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Statistical process monitoring charts are critical in ensuring safety for many chemical processes. Principal Component Analysis (PCA) is often used, due to its computational simplicity. However, many chemical processes may be inherently nonlinear, and this degrades the performance of the linear PCA method. Kernel Principal Component Analysis (KPCA) is an extension of the conventional PCA chart, which can help deal with nonlinearity in a given process. Additionally, PCA assumes that process data are Gaussian and uncorrelated, and only contain a moderate level of noise. These assumptions do not usually hold in practice. Multiscale wavelet-based data representation produces wavelet coefficients that possess characteristics that are able to handle violations in these assumptions. A multiscale kernel principal component analysis (MSKPCA) method has already been developed to tackle all of these issues, but it usually provides a high false alarm rate. In this paper, an improved MKSPCA chart is developed in order to deal with the false alarm rate issue, by smoothening the detection statistic using a mean filter. The advantages brought forward by the improved method are demonstrated through a simulated example in which the developed fault detection method is used to monitor a continuous stirred tank reactor (CSTR). The results clearly show that the improved MSKPCA method provides lower missed detection and false alarm rates as well as ARL1 values compared to those provided by the conventional methods.
机译:统计过程监测图表对于确保许多化学过程的安全性至关重要。由于其计算简单,通常使用主成分分析(PCA)。然而,许多化学过程可能是固有的非线性的,这降低了线性PCA方法的性能。内核主成分分析(KPCA)是传统PCA图表的扩展,可以帮助处理给定过程中的非线性。此外,PCA假设过程数据是高斯和不相关的,并且只包含适度的噪声水平。这些假设通常不会在实践中保持。基于MultiScale小波的数据表示产生了具有能够在这些假设中处理违规的特性的小波系数。已经开发了多尺度内核主成分分析(MSKPCA)方法来解决所有这些问题,但通常提供高误报率。在本文中,通过使用平均滤波器平滑检测统计来制定一种改进的MKSPCA图表,以处理误报率问题。通过改进方法提出的优点通过模拟示例来证明,其中开发的故障检测方法用于监测连续搅拌罐反应器(CSTR)。结果清楚地表明,与传统方法提供的那些相比,改进的MSKPCA方法提供更低的未错过的检测和误报率以及ARL1值。

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