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Nonstationarity and cointegration tests for fault detection of dynamic processes

机译:动态过程故障检测的非运动和协整测试

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As continuous industrial processes often operate around a desirable region of profitability, the measurement series for most process variables act as stationary series. However, there are inevitably some observed time series which are nonstationary caused by unexpected disturbances. Some series grow slowly for a long time with the equipment aging, and others appear to wander around as if they have no fixed population mean. For these series, traditional dynamic PCA or other statistical modeling methods are not applicable because the statistical properties of variables are time variant. In this paper, nonstationarity test is adopted to distinguish nonstationary series from stationary series. After that, cointegration analysis is used to describe the stochastic common trends and equilibrium error, which can be used to construct monitoring indices. Case study on Tennessee Eastman process shows that the proposed nonstationary process monitoring can efficiently detect faults in the nonstationary dynamic process.
机译:由于连续工业过程经常围绕理想的盈利区域运行,大多数过程变量的测量系列充当固定系列。然而,不可避免地有一些观察时间序列,这是由意外扰动引起的非标准。有些系列随着设备老化而慢慢成长,其他人似乎徘徊,好像没有固定的人口意味着。对于这些系列,传统的动态PCA或其他统计建模方法不适用,因为变量的统计特性是时间变量。本文采用了非间抗测试来区分静止系列的非间断系列。之后,协整分析用于描述随机共同趋势和平衡误差,可用于构建监测指标。田纳西州伊斯特曼进程的案例研究表明,所提出的非营养过程监测可以有效地检测非间断动态过程中的故障。

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