Applications of multivariate statistical methods to process monitoring and controller design
- 12 March 1994
- journal article
- research article
- Published by Taylor & Francis in International Journal of Control
- Vol. 59 (3) , 743-765
- https://doi.org/10.1080/00207179408923103
Abstract
Novel ways of using multivariate statistical methods to develop process models for on-line monitoring and control are proposed. On a binary distillation column, PLS is used to develop a regression estimation using multiple tray temperature measurements and a manipulated variable to estimate and control distillate composition. Additionally, a feedback controller design based on a static PCA/PCR model is developed and demonstrated on the binary column. This controller's performance is compared with a PI controller for disturbance rejection and setpoint tracking. On a real-world chemical process, it is shown how both PLS and PCS are necessary to model normal plant operations. These models permit real-time monitoring and detection in a reduced subspace defined by the statistical independent variations in the data. Techniques for real-time monitoring and fault detection are demonstrated.Keywords
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