Distributionally Robust Model Predictive Control: Closed-Loop Guarantees and Scalable Algorithms

IF 7 1区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS IEEE Transactions on Automatic Control Pub Date : 2024-11-14 DOI:10.1109/TAC.2024.3498702
Robert D. McAllister;Peyman Mohajerin Esfahani
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Abstract

We establish a collection of closed-loop guarantees and propose a scalable optimization algorithm for distributionally robust model predictive control (DRMPC) applied to linear systems, convex constraints, and quadratic costs. Via standard assumptions for the terminal cost and constraint, we establish distributionally robust long-term and stagewise performance guarantees for the closed-loop system. We further demonstrate that a common choice of the terminal cost, i.e., via the discrete-algebraic Riccati equation, renders the origin input-to-state stable for the closed-loop system. This choice also ensures that the exact long-term performance of the closed-loop system is independent of the choice of ambiguity set for the DRMPC formulation. Thus, we establish conditions under which DRMPC does not provide a long-term performance benefit relative to stochastic MPC. To solve the DRMPC optimization problem, we propose a Newton-type algorithm that empirically achieves superlinear convergence and guarantees the feasibility of each iterate. We demonstrate the implications of the closed-loop guarantees and the scalability of the proposed algorithm via two examples. To facilitate the reproducibility of the results, we also provide open-source code to implement the proposed algorithm and generate the figures.
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分布式鲁棒模型预测控制:闭环保证和可扩展算法
我们建立了一组闭环保证,并提出了一种可扩展的优化算法,用于分布鲁棒模型预测控制(DRMPC),适用于线性系统,凸约束和二次成本。通过对终端成本和约束的标准假设,我们建立了闭环系统的分布式鲁棒长期和阶段性性能保证。通过离散代数Riccati方程,我们进一步证明了终端成本的一个共同选择,即,使闭环系统的原始输入到状态稳定。这种选择还确保闭环系统的确切长期性能独立于DRMPC配方的模糊集的选择。因此,我们建立了相对于随机MPC, DRMPC不提供长期性能优势的条件。为了解决DRMPC优化问题,我们提出了一种牛顿型算法,该算法经验地实现了超线性收敛,并保证了每次迭代的可行性。我们通过两个例子证明了闭环保证的含义和所提出算法的可扩展性。为了促进结果的再现性,我们还提供了开源代码来实现所提出的算法并生成图形。
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来源期刊
IEEE Transactions on Automatic Control
IEEE Transactions on Automatic Control 工程技术-工程:电子与电气
CiteScore
11.30
自引率
5.90%
发文量
824
审稿时长
9 months
期刊介绍: In the IEEE Transactions on Automatic Control, the IEEE Control Systems Society publishes high-quality papers on the theory, design, and applications of control engineering. Two types of contributions are regularly considered: 1) Papers: Presentation of significant research, development, or application of control concepts. 2) Technical Notes and Correspondence: Brief technical notes, comments on published areas or established control topics, corrections to papers and notes published in the Transactions. In addition, special papers (tutorials, surveys, and perspectives on the theory and applications of control systems topics) are solicited.
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