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Nonlinear predictive control for Hammerstein-Wiener systems

机译:Hammerstein-Wiener系统的非线性预测控制

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This paper discusses a nonlinear Model Predictive Control (MPC) algorithm for multiple-input multiple-output dynamic systems represented by cascade Hammerstein-Wiener models. The block-oriented Hammerstein-Wiener model, which consists of a linear dynamic block embedded between two nonlinear steady-state blocks, may be successfully used to describe numerous processes. A direct application of such a model for prediction in MPC results in a nonlinear optimisation problem which must be solved at each sampling instant on-line. To reduce the computational burden, a linear approximation of the predicted system trajectory linearised along the future control scenario is successively found on-line and used for prediction. Thanks to linearisation, the presented algorithm needs only quadratic optimisation, time-consuming and difficult on-line nonlinear optimisation is not necessary. In contrast to some control approaches for cascade models, the presented algorithm does not need inverse of the steady-state blocks of the model. For two benchmark systems, it is demonstrated that the algorithm gives control accuracy very similar to that obtained in the MPC approach with nonlinear optimisation while performance of linear MPC and MPC with simplified linearisation is much worse. (C) 2014 ISA. Published by Elsevier Ltd. All rights reserved.
机译:本文讨论了以级联Hammerstein-Wiener模型为代表的多输入多输出动态系统的非线性模型预测控制(MPC)算法。面向模块的Hammerstein-Wiener模型由嵌入在两个非线性稳态模块之间的线性动态模块组成,可以成功地用于描述众多过程。在MPC中将这种模型直接用于预测会导致非线性优化问题,必须在每个在线采样瞬间解决该问题。为了减少计算负担,在网上连续找到沿着未来控制场景线性化的预测系统轨迹的线性近似值,并将其用于预测。由于线性化,提出的算法只需要二次优化,就不需要耗时且困难的在线非线性优化。与级联模型的某些控制方法相比,所提出的算法不需要模型稳态块的逆。对于两个基准系统,证明了该算法提供的控制精度与采用非线性优化的MPC方法获得的控制精度非常相似,而线性MPC和具有简化线性化的MPC的性能则差得多。 (C)2014 ISA。由Elsevier Ltd.出版。保留所有权利。

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