竞争控制通过在线优化与记忆,延迟反馈,和不准确的预测

Guanya Shi
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引用次数: 2

摘要

最近的一系列研究表明,在线优化工具对控制的适用性,导致了具有学习理论保证的在线控制算法,如次线性后悔。然而,主要的基准,静态遗憾,只比较后见之明的最佳静态线性控制器,与非平稳环境中真正的离线最优策略相比,它可能是任意次优的。此外,控制理论文献中常见的鲁棒性考虑因素,如反馈延迟和不精确预测,仅在在线学习/优化保证的背景下进展甚微。在这次演讲中,基于我们最近的三篇论文,我将介绍具有竞争比保证的在线控制的关键原理和实用算法,它直接将次最优性与真正的离线最优策略相结合。首先,我将展示一类具有内存的新型在线优化与在线控制之间的深层联系,它直接将在线优化保证转化为在线控制保证,并给出了第一个具有对抗性干扰的恒定竞争策略[1]。其次,我将从在线学习的角度分析控制界最流行的在线策略,模型预测控制(MPC)的性能,并显示一些重要的基本限制。我们的结果首次给出了MPC的有限时间性能保证[3]。最后,我将讨论延迟反馈和不精确预测对竞争比分析的影响[2]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Competitive Control via Online Optimization with Memory, Delayed Feedback, and Inexact Predictions
Recently a line of work has shown the applicability of tools from online optimization for control, leading to online control algorithms with learning-theoretic guarantees, such as sublinear regret. However, the predominant benchmark, static regret, only compares to the best static linear controller in hindsight, which could be arbitrarily sub-optimal compared to the true offline optimal policy in non-stationary environments. Moreover, the common robustness considerations in control theory literature, such as feedback delays and inexact predictions, only have little progress in the context of online learning/optimization guarantees. In this talk, based on our three recent papers, I will present key principles and practical algorithms towards online control with competitive ratio guarantees, which directly bound the suboptimality compared to the true offline optimal policy. First, I will show the deep connections between a novel class of online optimization with memory and online control, which directly translates online optimization guarantees to online control guarantees and gives the first constant-competitive policy with adversarial disturbances [1]. Second, I will analyze the performance of the most popular online policy in the control community, Model Predictive Control (MPC), from the online learning's perspective, and show a few important fundamental limits. Our results give the first finite-time performance guarantees for MPC [3]. Finally, I will discuss the influence of delayed feedback and inexact predictions on competitive ratio analysis [2].
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