基于时间序列分类和新颖性检测的工业报警洪水识别

Gianluca Manca, A. Fay
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引用次数: 1

摘要

报警洪水分类(AFC)方法用于支持人工操作员识别和评估工业过程工厂中反复发生的报警洪水。然而,最先进的AFC方法在处理激活和警报顺序的模糊性以及检测先前未观察到的警报洪水方面显示出缺点。为了解决这些限制,我们提出了一种新的三层AFC方法,该方法使用报警序列作为输入。在分类阶段,采用基于卷积核变换的线性脊回归分类器(MultiRocket),根据报警洪水的动态特性对其进行分类。在检测阶段,采用基于“局部离群概率”(LoOP)的新颖性检测方法来判断未知报警洪水是属于已知类别还是属于新类别。最后,利用集成方法对分类结果进行改进。使用基于“Tennessee-Eastman”流程的公开数据集,将我们提出的方法与文献中的两条naïve基线和三种相关方法进行了比较。很明显,我们的方法在所有考虑的方法中显示出最高的总体分类性能和鲁棒性,并有效地克服了AFC中存在的挑战。
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Identification of Industrial Alarm Floods Using Time Series Classification and Novelty Detection
Alarm flood classification (AFC) methods are used to support human operators to identify and assess recurring alarm floods in industrial process plants. State-of-the-art AFC methods, however, show shortcomings in handling an ambiguity of the activations and order of alarms and the detection of previously unobserved alarm floods. To solve these limitations, we present a novel three-tier AFC method that uses alarm series as input. In the classification stage, a linear ridge regression classifier with a convolutional kernel-based transformation (MultiRocket) is used to classify alarm floods according to their dynamic properties. In the detection stage, a novelty detection method based on the "local outlier probability" (LoOP) is used to decide whether an unknown alarm flood belongs to a known class or a novel one. Finally, we improve the classification results using an ensemble approach. Our proposed method is compared to two naïve baselines and three relevant methods from the literature using a publicly available dataset based on the "Tennessee-Eastman" process. It is evident that our method shows the highest overall classification performance and robustness of all of the considered methods and effectively overcomes existing challenges in AFC.
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