未知噪声分布下的自适应随机MPC

Charis J. Stamouli, Anastasios Tsiamis, M. Morari, George J. Pappas
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引用次数: 2

摘要

本文研究了在未知噪声分布下,受随机状态约束和硬输入约束的线性系统的随机MPC (SMPC)问题。首先,我们将机会状态约束重新表述为仅依赖于显式噪声统计的确定性约束。基于这些重新表述的约束,我们设计了一个分布鲁棒性和鲁棒稳定性的基准SMPC算法,用于已知噪声统计量的理想设置。然后,我们利用该基准控制器推导出一种新的鲁棒稳定自适应SMPC方案,该方案在线学习必要的噪声统计量,同时保证未知的重构状态约束以高概率满足时间均匀性。后者是通过使用依赖于经验噪声统计的置信区间来实现的,并且随着时间的推移均匀有效。此外,随着时间的推移,控制性能得到改善,因为收集了更多的噪声样本,并获得了更好的噪声统计估计,考虑到估计的重新制定的约束的在线适应。此外,在跟踪多个连续目标的问题时,与鲁棒的基于管的MPC相比,我们的方法导致了在线扩大的吸引力域。通过对直流-直流变换器的数值模拟,验证了所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Stochastic MPC under Unknown Noise Distribution
In this paper, we address the stochastic MPC (SMPC) problem for linear systems, subject to chance state constraints and hard input constraints, under unknown noise distribution. First, we reformulate the chance state constraints as deterministic constraints depending only on explicit noise statistics. Based on these reformulated constraints, we design a distributionally robust and robustly stable benchmark SMPC algorithm for the ideal setting of known noise statistics. Then, we employ this benchmark controller to derive a novel robustly stable adaptive SMPC scheme that learns the necessary noise statistics online, while guaranteeing time-uniform satisfaction of the unknown reformulated state constraints with high probability. The latter is achieved through the use of confidence intervals which rely on the empirical noise statistics and are valid uniformly over time. Moreover, control performance is improved over time as more noise samples are gathered and better estimates of the noise statistics are obtained, given the online adaptation of the estimated reformulated constraints. Additionally, in tracking problems with multiple successive targets our approach leads to an online-enlarged domain of attraction compared to robust tube-based MPC. A numerical simulation of a DC-DC converter is used to demonstrate the effectiveness of the developed methodology.
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