首页> 外文会议>IFAC Symposium on Fault Detection, Supervision and Safety of Technical Processes >ABNORMAL SITUATION DETECTION, THREE WAY DATA AND PROJECTION METHODS ; ROBUST MODELING FOR INDUSTRIAL APPLICATIONS
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ABNORMAL SITUATION DETECTION, THREE WAY DATA AND PROJECTION METHODS ; ROBUST MODELING FOR INDUSTRIAL APPLICATIONS

机译:异常情况检测,三种数据和投影方法;工业应用的鲁棒建模

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Three - way data collected from batch processes and from transitions of continuous processes are dynamic in nature; the process variables in such processes are both auto correlated and cross correlated. Empirical models developed for the statistical process control of these processes should be capable of capturing the auto and cross correlation of the process variables. Statistical process control checks deviations from a nominal behaviour. Therefore for the statistical process control of batch processes and transitions we should look at deviations of process variable trajectories from their nominal trajectories and from their nominal auto/cross correlations. This paper addresses issues related to modelling three way data collected from such processes using projection methods, such as principal component analysis (PCA) and partial least squares (PLS).
机译:从批处理过程中收集的三种方式以及连续过程的转换是动态的;此类过程中的过程变量均为自动相关性并交叉相关。为这些过程的统计过程控制开发的经验模型应该能够捕获过程变量的自动和互相关。统计过程控制检查与标称行为的偏差。因此,对于批处理过程和转换的统计过程控制,我们应该从其标称轨迹以及其标称自动/交叉相关来看看过程变量轨迹的偏差。本文解决了使用投影方法(例如主成分分析(PCA)和偏最小二乘(PL))从这些过程中建模的三种方式数据建模数据。

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