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Multivariable process identification for mpc: the asymptotic method and its applications
Authors:Yucai Zhu
Affiliation:Tai-Ji Control, Hageheldlaan 62, NL-5641 GP Eindhoven, The Netherlands
Abstract:In this work we will introduce the asymptotic method (ASYM) of identification and provide two case studies. The ASYM was developed for multivariable process identification for model based control. The method calculates time domain parametric models using frequency domain criterion. Fundamental problems, such as test signal design for control, model order/structure selection, parameter estimation and model error quantification, are solved in a systematic manner. The method can supply not only input/output model and unmeasured disturbance model which are asymptotic maximum likelihood estimates, but also the upper bound matrix for the model errors that can be used for model validation and robustness analysis. To demonstrate the use of the method for model predictive control (MPC), the identification of a Shell benchmark process (a simulated distillation column) and an industrial application to a crude unit atmospheric tower will be presented.
Keywords:Process control  Predictive control systems  Multivariable control systems  Parameter estimation  Control system synthesis  Time domain analysis  Frequency domain analysis  Mathematical models  Distillation columns  Error analysis  Model predictive control (MPC) method  Asymptotic maximum likelihood estimation
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