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Iterative nonlinear model predictive control. Stability, robustness and applications

机译:迭代非线性模型预测控制。稳定性,鲁棒性和应用

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The article presents a new methodology applicable to batch processes called iterative nonlinear model predictive control (INMPC). It incorporates the ability of learning from past batches (known as iterative learning control or ILC) to an underlying nonlinear model predictive controller. The main advantage with respect to the existent iterative controllers is a faster convergence to the set points and guaranteed stability. The convergence is proven for a wide class of nonlinear processes when the desired trajectory is reachable. The controller ensures convergence for the nominal model whatever the parameters are. In the presence of uncertainties, a numerical analysis using randomized algorithms is utilized to ensure the desired probability of stability. The controller is tested on a highly nonlinear example with noise and model uncertainty, a pH plant. A numerical robustness analysis has been done in order to verify the sensitivity and performance of this new algorithm. The results obtained in the experiments are good, bettering other existent controllers.
机译:本文介绍了一种适用于批处理的新方法,称为迭代非线性模型预测控制(INMPC)。它结合了从过去的批次(称为迭代学习控制或ILC)到基础非线性模型预测控制器的学习能力。现有迭代控制器的主要优点是可以更快地收敛到设定值并保证稳定性。当可以达到所需的轨迹时,这种收敛被证明适用于各种非线性过程。无论参数是什么,控制器都能确保名义模型的收敛。在存在不确定性的情况下,使用随机算法进行数值分析可确保所需的稳定性概率。在一个具有噪声和模型不确定性的高度非线性示例(pH值工厂)上对控制器进行了测试。为了验证这种新算法的敏感性和性能,已经进行了数值鲁棒性分析。实验获得的结果很好,优于其他现有控制器。

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