Autor: |
Cabestany, Joan, Prieto, Alberto, Sandoval, Francisco, Herrero, J.M., Blasco, X., Martínez, M., Ramos, C. |
Zdroj: |
Computational Intelligence & Bioinspired Systems; 2005, p993-1001, 9p |
Abstrakt: |
In nonlinear robust identification context, a process model is represented by a nominal model and possible deviations. With parametric models this process model can be expressed as the so-called Feasible Parameter Set (FPS), which derives from the minimization of identification error specific norms. In this work, several norms are used simultaneously to obtain the FPS. This fact improves the model quality but, as counterpart, it increases the optimization problem complexity resulting in a multimodal problem with an infinite number of minima with the same value which constitutes FPS contour. A special Evolutionary Algorithm (ε- GA) has been developed to find this contour. Finally, an application to a thermal process identification is presented. [ABSTRACT FROM AUTHOR] |
Databáze: |
Complementary Index |
Externí odkaz: |
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