Tutorial: process control through nonlinear modeling
暂无分享,去创建一个
Technical advances in computers make it feasible to use nonlinear process models for automatic control. One advantage over linear model-based controllers is that nonlinear controllers are functional over a wider operating range without retuning; and, where process nonlinearity is the major control problem, nonlinear controllers have demonstrated industrial success. When designed with adaptive models, tracking phenomenologically meaningful model coefficients for process diagnosis, and using the model for supervisory optimization are other advantages. Disadvantages are the required case-by-case controller design and inability to mathematically guarantee such features as convergence, stability, etc.
[1] R. Russell Rhinehart,et al. Two simple methods for on-line incremental model parameterization , 1991 .
[2] R. R. Rhinehart,et al. An efficient method for on-line identification of steady state , 1995 .
[3] R. Russell Rhinehart,et al. EXPERIMENTAL COMPARISON OF CONTROL STRATEGIES , 1997 .
[4] R. Russell Rhinehart,et al. Critical values for a steady-state identifier , 1997 .
[5] G. R. Sullivan,et al. Generic model control (GMC) , 1988 .