Wu Sheng, Jin Qibing, Zhang Ridong, Zhang Junfeng, Gao Furong
Key Lab for IOT and Information Fusion Technology of Zhejiang, Information and Control Institute, Hangzhou Dianzi University, Hangzhou 310018, PR China.
Institute of Automation, Beijing University of Chemical Technology, Beijing 100029, PR China.
ISA Trans. 2017 Jul;69:273-280. doi: 10.1016/j.isatra.2017.04.006. Epub 2017 Apr 12.
In this paper, an improved constrained tracking control design is proposed for batch processes under uncertainties. A new process model that facilitates process state and tracking error augmentation with further additional tuning is first proposed. Then a subsequent controller design is formulated using robust stable constrained MPC optimization. Unlike conventional robust model predictive control (MPC), the proposed method enables the controller design to bear more degrees of tuning so that improved tracking control can be acquired, which is very important since uncertainties exist inevitably in practice and cause model/plant mismatches. An injection molding process is introduced to illustrate the effectiveness of the proposed MPC approach in comparison with conventional robust MPC.
本文针对存在不确定性的间歇过程,提出了一种改进的约束跟踪控制设计方法。首先提出了一种新的过程模型,该模型通过进一步的附加调整促进了过程状态和跟踪误差的增强。然后,利用鲁棒稳定约束模型预测控制优化方法进行了后续的控制器设计。与传统的鲁棒模型预测控制(MPC)不同,该方法使控制器设计能够承受更多的调整程度,从而获得改进的跟踪控制效果。这一点非常重要,因为在实际中不可避免地存在不确定性并导致模型/工厂失配。引入了注塑成型过程,以说明所提出的MPC方法与传统鲁棒MPC相比的有效性。