论文标题
一种新颖的约束拧紧方法,用于强大的数据驱动预测控制
A novel constraint tightening approach for robust data-driven predictive control
论文作者
论文摘要
在本文中,我们提出了一个数据驱动的模型预测控制(MPC)方案,该方案能够在过程干扰的影响下稳定未知的线性时间变换系统。为此,Willems的引理用于预测系统的未来行为。这允许仅使用先验测量的数据和系统顺序上的上限的知识来设置整个方案。首先,我们基于输入状态数据开发了一种状态反馈MPC方案,该方案保证了闭环实际指数稳定性和递归可行性以及闭环约束满意度。该方案是通过合适的约束收紧来扩展的,也只能使用数据构建该方案。为了控制先验的不稳定系统,提出的方案包含预先稳定的控制器和相关的输入约束拧紧。我们首先介绍了针对全州测量情况的拟议数据驱动的MPC方案,并为在输出反馈时提供了相似的闭环保证的扩展。提出的方案应用于数值示例。
In this paper, we present a data-driven model predictive control (MPC) scheme that is capable of stabilizing unknown linear time-invariant systems under the influence of process disturbances. To this end, Willems' lemma is used to predict the future behavior of the system. This allows the entire scheme to be set up using only a priori measured data and knowledge of an upper bound on the system order. First, we develop a state-feedback MPC scheme, based on input-state data, which guarantees closed-loop practical exponential stability and recursive feasibility as well as closed-loop constraint satisfaction. The scheme is extended by a suitable constraint tightening, which can also be constructed using only data. In order to control a priori unstable systems, the presented scheme contains a pre-stabilizing controller and an associated input constraint tightening. We first present the proposed data-driven MPC scheme for the case of full state measurements, and also provide extensions for obtaining similar closed-loop guarantees in case of output feedback. The presented scheme is applied to a numerical example.