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Robust malfunction diagnosis in process industry time series

机译:在过程工业时间序列中进行可靠的故障诊断

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In this work, a modified version of a Slope Statistic Profile (SSP) method is proposed, capable to detect real-time incidents that occur in two interdependent time series. The estimation of incident time point is based on the combination of their linear trend profiles test statistics, computed on a consecutive overlapping data window. Furthermore, the proposed method uses a self-adaptive sliding data window. The adaptation of the size of the sliding data window is based on real-time classification of the linear trend profiles in constant and equal time intervals, according to two different linear trend scenarios, suitably adjusted to the conditions of the problem we face. The proposed method is used for the robust identification of a malfunction and it is demonstrated to real datasets from a chemical process pilot plant that is situated at the premises of CERTH / CPERI during the evolution of the performed experiments at the process unit.
机译:在这项工作中,提出了斜率统计资料(SSP)方法的修改版本,该方法能够检测在两个相互依赖的时间序列中发生的实时事件。入射时间点的估计基于其线性趋势曲线测试统计数据的组合,这些统计数据是在连续重叠的数据窗口上计算得出的。此外,所提出的方法使用自适应滑动数据窗口。滑动数据窗口大小的调整是基于线性趋势轮廓的实时分类,该线性趋势轮廓是在恒定和相等的时间间隔内根据两种不同的线性趋势方案进行调整的,以适应我们面临的问题的情况。所提出的方法用于对故障进行鲁棒性识别,并在过程单元进行的实验发展过程中,对位于CERTH / CPERI所在地的化学过程中试工厂的真实数据集进行了演示。

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