模型预测控制
稳健性(进化)
加权
控制理论(社会学)
计算机科学
先验与后验
人工神经网络
控制工程
鲁棒控制
机器学习
控制系统
人工智能
工程类
控制(管理)
医学
生物化学
化学
哲学
电气工程
放射科
认识论
基因
作者
Xing Liu,Lin Qiu,Youtong Fang,Kui Wang,Yongdong Li,José Rodríguez
标识
DOI:10.1109/tie.2023.3303646
摘要
This letter concentrates on introducing a learning methodology that extends and improves classical finite control-set model predictive control approach, which is able to significantly mitigate the inherent limitations of system uncertainties and unknown perturbations subject to robustness characteristics. To this end, in our work, a finite control-set learning predictive control architecture, which is addressed as an unsupervised learning technique, is presented. In this control task, we define a single neural network to learn the tracking control part online, and a robustifying control term is embedded into the suggested control solution so as to handle the approximator error and/or external disturbances, thereby leading to considerable enhancement of robustness. Dissimilar to classical finite control-set model predictive control, we establish that this method does not require a priori knowledge of model information and weighting factors, making our approach applicable to a variety of power converter systems. Finally, we highlight its advantages with a case study.
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