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Early malfunction diagnosis of industrial process units utilizing online linear trend profiles and real-time classification

机译:利用在线线性趋势图和实时分类对工业过程单元进行早期故障诊断

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摘要

The early detection of potential malfunctions at process systems can significantly reduce downtime and improve their overall operability. In that context, this paper demonstrates the behavior and response, through a comparative analysis, of novel data-driven diagnosis methods for interdependent time series. The proposed real-time slope statistic profile method utilizes a self-adaptive sliding window based on a real-time classification technique of linear trend profiles of both interdependent time series and internal condition so as to avoid misdetections. The calculation of the linear trend profile is based on a standard parametric linear trend test, and the selection of possible incidents is based on its two-level cross-checking. All possible combinations for the calculation of the trend test and cross-checking are created to explore their efficiency. The proposed methods are tested against real data sets from a chemical process system of the Centre for Research and Technology Hellas/Chemical Process Energy and Resources Institute derived from specific scenarios during nominal operating conditions.
机译:及早发现过程系统中的潜在故障可以显着减少停机时间并提高其整体可操作性。在这种情况下,本文通过比较分析证明了相互依存时间序列的新型数据驱动诊断方法的行为和响应。所提出的实时斜率统计剖面方法利用基于相互依赖的时间序列和内部条件的线性趋势剖面的实时分类技术的自适应滑动窗口,从而避免了误检测。线性趋势图的计算基于标准参数线性趋势测试,而可能事件的选择基于其两级交叉检查。创建用于趋势测试和交叉检查的所有可能组合,以探索其效率。所提出的方法是根据来自研究和技术中心Hellas /化学过程能源与资源研究所的化学过程系统的真实数据集进行测试的,这些数据来自标称运行条件下的特定方案。

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