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Generalized predictive control of a nonlinear process using fuzzy model

机译:基于模糊模型的非线性过程的广义预测控制

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摘要

This paper proposes a new approach to predictive control of highly nonlinear processes based on Takagi-Sugeno fuzzy model. It is investigated how the Takagi-Sugeno fuzzy models can be linked to a special type of model based predictive control algorithm, the Generalized Predictive Control (GPC); Oringinally in GPC design, purely linear transfer function model is used for long-range prediction. The advantage of GPC and other linear MBPC methods is in garanteed convergence within each time sample, but they are not able to deal with strong process nonlinearities. In our approach, approximate linear models are extracted at each time sample by instantaneous linearization of nonlinear fuzzy model and adaptive GPC is used. Applicability of this approach to control a real world process (nonlinear laboratory-scale thermal plant) with operating point dependent gain and time constants is demonstrated in the paper.
机译:本文提出了一种基于Takagi-Sugeno模糊模型的高非线性过程预测控制的新方法。研究如何将Takagi-Sugeno模糊模型与一种基于模型的特殊类型的预测控制算法,即通用预测控制(GPC)链接起来;最初,在GPC设计中,纯线性传递函数模型用于远程预测。 GPC和其他线性MBPC方法的优势在于每个时间样本内的保证收敛性,但是它们不能处理强大的过程非线性。在我们的方法中,通过非线性模糊模型的瞬时线性化在每个时间样本上提取近似线性模型,并使用自适应GPC。本文证明了这种方法具有控制工作点相关增益和时间常数的现实过程(非线性实验室规模的热电厂)的适用性。

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