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Data-Driven Minimum-Energy Controls for Linear Systems

机译:线性系统的数据驱动最小能量控制

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In this letter, we study the problem of computing minimum-energy controls for linear systems from experimental data. The design of open-loop minimum-energy control inputs to steer a linear system between two different states in finite time is a classic problem in control theory, whose solution can be computed in closed form using the system matrices and its controllability Gramian. Yet, the computation of these inputs is known to be ill-conditioned, especially when the system is large, the control horizon long, and the system model uncertain. Due to these limitations, open-loop minimum-energy controls and the associated state trajectories have remained primarily of theoretical value. Surprisingly, in this letter, we show that open-loop minimum-energy controls can be learned exactly from experimental data, with a finite number of control experiments over the same time horizon, without knowledge or estimation of the system model, and with an algorithm that is significantly more reliable than the direct model-based computation. These findings promote a new philosophy of controlling large, uncertain, linear systems where data is abundantly available.
机译:在这封信中,我们研究了根据实验数据计算线性系统的最小能量控制的问题。设计开环最小能量控制输入以在有限时间内控制两个不同状态之间的线性系统是控制理论中的经典问题,可以使用系统矩阵及其可控制性Gramian以封闭形式计算其解。然而,已知这些输入的计算是不正确的,特别是在系统较大,控制范围较长且系统模型不确定的情况下。由于这些限制,开环最小能量控制和相关的状态轨迹仍主要具有理论价值。出乎意料的是,在这封信中,我们证明了可以从实验数据中准确学习开环最小能量控制,而在同一时间范围内进行有限数量的控制实验,而无需了解或估计系统模型,并且可以使用算法这比直接基于模型的计算要可靠得多。这些发现推动了一种控制大量不确定数据的大型不确定线性系统的新哲学。

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