Predictive control of nonlinear dynamic processes

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摘要

Predictive control can be applied if the reference value of the process is known in advance and the deterministic disturbances can be predicted. A cost function defined in the future horizon is minimized. The control signal is calculated for a control horizon, but only the first one is applied and the procedure is repeated (receding horizon strategy). Processes with mild analytical nonlinear characteristics are considered. The possible process models are either nonparametric (linear, Hammerstein, and Volterra weighting function series) or parametric ones (generalized Hammerstein, parametric Volterra, and bilinear models). The algorithms of the optimal and suboptimal predictive control based on the nonparametric and the parametric models mentioned are derived. Several simulations present how effective these methods are. The adaptive case is dealt with as well.

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论文评审过程:Available online 7 April 2000.

论文官网地址:https://doi.org/10.1016/0096-3003(94)00122-K