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Learning-based Robust Model Predictive Control for Sector-bounded Lur’e Systems

机译:基于学习的扇区界限LURE系统的鲁棒模型预测控制

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摘要

For dynamical systems with uncertainty, robust controllers can be designed by assuming that the uncertainty is bounded. The less we know about the uncertainty in the system, the more conservative the bound must be, which in turn may lead to reduced control performance. If measurements of the uncertain term are available, this data may be used to reduce the uncertainty in order to make bounds as tight as possible. In this paper, we consider a linear system with a sector-bounded uncertainty. We develop a model predictive control algorithm to control the system, and use a weighted Bayesian linear regression model to learn the least conservative sector condition using measurements collected in closed-loop. The resulting robust model predictive control algorithm therefore reduces the conservativeness of the controller, and provides probabilistic guarantees of asymptotic stability and constraint satisfaction. The efficacy of the proposed method is shown in simulation.
机译:对于具有不确定性的动态系统,可以通过假设不确定性被界定来设计鲁棒控制器。 我们对系统的不确定性的了解越少,绑定必须越保守,这又可能导致控制性能降低。 如果可用的不确定术语的测量值,则该数据可用于减少不确定性以使界限尽可能紧。 在本文中,我们考虑一个具有扇区有界不确定性的线性系统。 我们开发了一种模型预测控制算法来控制系统,并使用加权贝叶斯线性回归模型使用闭环收集的测量来学习最低保守的扇区状况。 因此,由此产生的鲁棒模型预测控制算法降低了控制器的保守性,并提供了渐近稳定性和约束满足的概率保证。 所提出的方法的功效显示在模拟中。

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