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Soft Constrained Model Predictive Control With Robust Stability Guarantees

机译:具有鲁棒稳定性保证的软约束模型预测控制

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摘要

Soft constrained model predictive control (MPC) is frequently applied in practice in order to ensure feasibility of the optimization during online operation. Standard techniques offer global feasibility by relaxing state or output constraints, but cannot ensure closed-loop stability. This paper presents a new soft constrained MPC approach for tracking that provides stability guarantees even for unstable systems. Two types of soft constraints and slack variables are proposed to enlarge the terminal constraint and relax the state constraints. The approach ensures feasibility of the MPC problem in a large region of the state space, depending on the imposed hard constraints, and stability is guaranteed by design. The optimal performance of the MPC control law is preserved whenever all state constraints can be enforced. Asymptotic stability of all feasible reference steady-states under the proposed control law is shown, as well as input-to-state stability for the system under additive disturbances. The soft constrained method can be combined with a robust MPC approach, in order to exploit the benefits of both techniques. The properties of the proposed methods are illustrated by numerical examples.
机译:软约束模型预测控制(MPC)经常在实践中应用,以确保在线操作期间进行优化的可行性。标准技术通过放宽状态或输出约束来提供全局可行性,但不能确保闭环稳定性。本文提出了一种新的软约束MPC跟踪方法,即使对于不稳定的系统也可以提供稳定性保证。提出了两种类型的软约束和松弛变量来扩大终端约束和放松状态约束。根据所施加的硬约束,该方法确保了在状态空间的较大区域中MPC问题的可行性,并且通过设计保证了稳定性。每当可以强制执行所有状态约束时,都会保留MPC控制律的最佳性能。显示了在拟议的控制律下所有可行参考稳态的渐近稳定性,以及在加性扰动下系统的输入到状态稳定性。为了利用这两种技术的优势,可以将软约束方法与鲁棒的MPC方法结合使用。数值例子说明了所提出方法的性质。

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