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An Improved Approach for Robust MPC Tuning Based on Machine Learning

机译:基于机器学习的鲁棒MPC调谐改进方法

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A robust tuning method based on an artificial neural network for model predictive control (MPC) of industrial systems with parametric uncertainties is put forward in this work. Firstly, an efficient approach to characterize the mapping relationship between the controller parameters and the robust performance indices is established. As there are normally multiple conflicted robust performance indices to be considered in MPC tuning, the neural network is further used to fuse the indices to produce a simple label representing the acceptable level of the robust performance. Finally, an automated algorithm is proposed to tune the MPC parameters for the considered uncertain system to achieve the desired robust performance. In addition, the regulation of the pH value of the sewage treatment system is used to verify the effectiveness of the robust tuning algorithm which is described in this paper.
机译:在这项工作中提出了一种基于具有参数不确定性的工业系统模型预测控制(MPC)的人工神经网络的鲁棒调谐方法。 首先,建立一种有效的方法来表征控制器参数与鲁棒性能指标之间的映射关系。 由于通常在MPC调谐中考虑多种冲突的稳健性能指标,因此神经网络进一步用于熔断指数以产生表示稳健性能可接受级别的简单标签。 最后,提出了一种自动算法来调整所考虑的不确定系统的MPC参数以实现所需的鲁棒性能。 此外,污水处理系统的pH值的调节用于验证本文中描述的鲁棒调谐算法的有效性。

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