Data-conforming data-driven control: avoiding premature generalizations beyond data

Mohammad Ramadan, Evan Toler, Mihai Anitescu
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Abstract

Data-driven and adaptive control approaches face the problem of introducing sudden distributional shifts beyond the distribution of data encountered during learning. Therefore, they are prone to invalidating the very assumptions used in their own construction. This is due to the linearity of the underlying system, inherently assumed and formulated in most data-driven control approaches, which may falsely generalize the behavior of the system beyond the behavior experienced in the data. This paper seeks to mitigate these problems by enforcing consistency of the newly designed closed-loop systems with data and slow down any distributional shifts in the joint state-input space. This is achieved through incorporating affine regularization terms and linear matrix inequality constraints to data-driven approaches, resulting in convex semi-definite programs that can be efficiently solved by standard software packages. We discuss the optimality conditions of these programs and then conclude the paper with a numerical example that further highlights the problem of premature generalization beyond data and shows the effectiveness of our proposed approaches in enhancing the safety of data-driven control methods.
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符合数据要求的数据驱动控制:避免过早超出数据范围一概而论
数据驱动和自适应控制方法面临着在学习过程中遇到的数据分布之外突然引入分布变化的问题。因此,这些方法很容易使其构建过程中使用的假设失效。这是由于大多数数据驱动控制方法固有地假定和制定了基础系统的线性,这可能会错误地概括系统行为,使其超出数据中体验到的行为。本文试图通过加强新设计的闭环系统与数据的一致性来缓解这些问题,并减缓联合状态-输入空间中的任何分布偏移。为此,我们在数据驱动方法中加入了仿射正则化项和线性矩阵质量约束,从而产生了凸半有限元程序,可通过标准软件包高效求解。我们讨论了这些程序的最优性条件,然后以一个数值示例结束本文,该示例进一步突出了过早泛化数据的问题,并显示了我们提出的方法在提高数据驱动控制方法安全性方面的有效性。
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