多变量工业数据集在线漂移检测的无监督方法

Sarah Klein, Mathias Verbeke
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引用次数: 0

摘要

工业机械或工艺的测量参数的演变中的轻微偏差可以表明性能下降和即将发生的故障。因此,及时准确地检测这些漂移是很重要的,但由于工业数据集通常是多变量的,本质上是动态的,并且经常有噪声,这一事实使其变得复杂。本文提出了一种鲁棒漂移检测方法,该方法扩展了具有自适应窗的半参数对数似然检测器,允许随着时间的推移动态适应新传入的数据。结果表明,与非自适应方法相比,该方法更精确,可以大大减少计算时间,同时实现相似的检测延迟。当在工业数据集上进行评估时,该方法可以与离线漂移检测方法相竞争。
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An unsupervised methodology for online drift detection in multivariate industrial datasets
Slight deviations in the evolution of measured parameters of industrial machinery or processes can signal performance degradations and upcoming failures. Therefore, the timely and accurate detection of these drifts is important, yet complicated by the fact that industrial datasets are often multivariate in nature, inherently dynamic and often noisy. In this paper, a robust drift detection approach is proposed that extends a semi-parametric log-likelihood detector with adaptive windowing, allowing to dynamically adapt to the newly incoming data over time. It is shown that the approach is more accurate and can strongly reduce the computation time when compared to non-adaptive approaches, while achieving a similar detection delay. When evaluated on an industrial data set, the methodology can compete with offline drift detection methods.
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