Abstract
Modeling of distributed parameter systems (DPSs) is difficult because of their infinite-dimensional spatiotemporal nature and complex nonlinearities. Data-based modeling is necessary because there are usually some unknown uncertainties in first-principles modeling. In practice, a low-dimensional spatiotemporal model is often required for real-time implementations. In this study, a time/space-separation-based support-vector-machine (SVM) model identification approach is proposed for unknown nonlinear DPSs. The spatiotemporal output of the system is measured at a finite number of spatial locations, and for easy implementation, the input is assumed to be a finite-dimensional temporal variable. First, Karhunen-Loève (KL) decomposition is used for time/space separation and dimension reduction. Subsequently, the spatiotemporal output is expanded onto a low-dimensional Karhunen-Loève space with temporal coefficients. Finally, the least-squares support-vector-machine (LS-SVM) approach is used to model the system dynamics in a low-dimensional temporal domain. After the time/space synthesis, the nonlinear spatiotemporal dynamics can be reconstructed. Simulations are presented to demonstrate the effectiveness of this spatiotemporal modeling method. © 2010 American Chemical Society.
| Original language | English |
|---|---|
| Pages (from-to) | 332-341 |
| Journal | Industrial & Engineering Chemistry Research |
| Volume | 50 |
| Issue number | 1 |
| DOIs | |
| Publication status | Published - 5 Jan 2011 |
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