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首页> 外文期刊>Annual Review in Control >Abnormal situation detection, three-way data and projection methods; robust data archiving and modeling for industrial applications
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Abnormal situation detection, three-way data and projection methods; robust data archiving and modeling for industrial applications

机译:异常情况检测,三向数据和投影方法;适用于工业应用的强大数据归档和建模

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摘要

Three-way data collected from batch processes and from transitions of continuous processes (start ups, grade to grade transitions, re-starts) 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. Data acquisition and storage should also be performed in a way that preserves these correlations. This paper addresses issues related to acquisition and compression of multivariate data and to modeling of three-way data using projection methods, such as principal component analysis (PCA) and partial least squares (PLS). Other issues such as trajectory alignment, direction of unfolding and modeling data collected from complicated multistage configurations are also discussed.
机译:本质上,从批处理过程和连续过程的过渡(启动,等级过渡到等级过渡,重新启动)收集的三向数据是动态的。这样的过程中的过程变量既是自动相关的又是互相关的。为这些过程的统计过程控制而开发的经验模型应该能够捕获过程变量的自动和互相关。数据获取和存储也应以保留这些相关性的方式执行。本文解决与多元数据的获取和压缩以及使用投影方法(例如主成分分析(PCA)和偏最小二乘(PLS))对三向数据建模有关的问题。还讨论了其他问题,例如轨迹对齐,展开方向以及从复杂的多级配置收集的建模数据。

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