Data-driven Internal Model Control for Output Regulation
Data-driven Internal Model Control for Output Regulation
Output regulation is a fundamental problem in control theory, extensively studied since the 1970s. Traditionally, research has primarily addressed scenarios where the system model is explicitly known, leaving the problem in the absence of a system model less explored. Leveraging the recent advancements in Willems et al.'s fundamental lemma, data-driven control has emerged as a powerful tool for stabilizing unknown systems. This paper tackles the output regulation problem for unknown single and multi-agent systems (MASs) using noisy data. Previous approaches have attempted to solve data-based output regulation equations (OREs), which are inadequate for achieving zero tracking error with noisy data. To circumvent the need for solving data-based OREs, we propose an internal model-based data-driven controller that reformulates the output regulation problem into a stabilization problem. This method is first applied to linear time-invariant (LTI) systems, demonstrating exact solution capabilities, i.e., zero tracking error, through solving a straightforward data-based linear matrix inequality (LMI). Furthermore, we extend our approach to solve the $k$th-order output regulation problem for nonlinear systems. Extensions to both linear and nonlinear MASs are discussed. Finally, numerical tests validate the effectiveness and correctness of the proposed controllers.
Wenjie Liu、Yifei Li、Jian Sun、Gang Wang、Keyou You、Lihua Xie、Jie Chen
自动化基础理论自动化技术、自动化技术设备
Wenjie Liu,Yifei Li,Jian Sun,Gang Wang,Keyou You,Lihua Xie,Jie Chen.Data-driven Internal Model Control for Output Regulation[EB/OL].(2025-05-14)[2025-06-21].https://arxiv.org/abs/2505.09255.点此复制
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