Min-max Model Predictive Control of Nonlinear Systems: A Unifying Overview on Stability

D. Raimondo, D. Limón, M. Lazar, L. Magni, E. Camacho
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引用次数: 209

Abstract

Min-max model predictive control (MPC) is one of the few techniques suitable for robust stabilization of uncertain nonlinear systems subject to constraints. Stability issues as well as robustness have been recently studied and some novel contributions on this topic have appeared in the literature. In this survey, we distill from an extensive literature a general framework for synthesizing min-max MPC schemes with ana priori robust stability guarantee. First, we introduce a general predictionmodel that covers a wide class of uncertainties, which includes bounded disturbances as well as state and input dependent disturbances (uncertainties). Second, we extend the notion of regional input-to-state stability (ISS) in order to fit the considered class of uncertainties. Then, we establish that the standard min-max approach can only guarantee practical stability. We concentrate our attention on two different solutions for solving this problem. The first one is based on a particular design of the stage cost of the performance index, which leads to aH∞ strategy, while the second one is based on a dual-mode strategy. Under fairly mild assumptions both controllers guarantee ISS of the resulting closed-loop system.Moreover, it is shown that the nonlinear auxiliary control law introduced in [29] to solve theH∞ problem can be used, for nonlinear systems affine in control, in all the proposed min-max schemes and also in presence of state-independent disturbances. A simulation example illustrates the techniques surveyed in this article.
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非线性系统的最小-最大模型预测控制:稳定性的统一概述
最小-最大模型预测控制(MPC)是为数不多的适用于约束不确定非线性系统鲁棒镇定的技术之一。稳定性问题和鲁棒性问题最近得到了研究,并且在这一主题上出现了一些新的贡献。在这个调查中,我们从大量的文献中提取了一个综合具有先验鲁棒稳定性保证的最小-最大MPC方案的一般框架。首先,我们引入了一个通用的预测模型,该模型涵盖了广泛的不确定性,包括有界干扰以及状态和输入相关的干扰(不确定性)。其次,我们扩展了区域输入状态稳定性(ISS)的概念,以拟合所考虑的不确定性类别。然后,我们证明了标准的最小最大方法只能保证实际的稳定性。我们把注意力集中在解决这个问题的两种不同的方法上。第一种是基于性能指标的特定阶段成本设计,从而产生aH∞策略,第二种是基于双模策略。在相当温和的假设下,两个控制器都保证闭环系统的ISS。此外,本文还证明了[29]中引入的用于解决h∞问题的非线性辅助控制律,对于控制中的非线性系统仿射,可以在所有提出的最小-最大方案中使用,也可以在存在状态无关干扰的情况下使用。一个仿真示例演示了本文中介绍的技术。
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