Data-driven Stochastic Output-Feedback Predictive Control: Recursive Feasibility through Interpolated Initial Conditions

Guanru Pan, Ruchuan Ou, T. Faulwasser
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引用次数: 4

Abstract

The paper investigates data-driven output-feedback predictive control of linear systems subject to stochastic disturbances. The scheme relies on the recursive solution of a suitable data-driven reformulation of a stochastic Optimal Control Problem (OCP), which allows for forward prediction and optimization of statistical distributions of inputs and outputs. Our approach avoids the use of parametric system models. Instead it is based on previously recorded data using a recently proposed stochastic variant of Willems' fundamental lemma. The stochastic variant of the lemma is applicable to a large class of linear dynamics subject to stochastic disturbances of Gaussian and non-Gaussian nature. To ensure recursive feasibility, the initial condition of the OCP -- which consists of information about past inputs and outputs -- is considered as an extra decision variable of the OCP. We provide sufficient conditions for recursive feasibility and closed-loop practical stability of the proposed scheme as well as performance bounds. Finally, a numerical example illustrates the efficacy and closed-loop properties of the proposed scheme.
数据驱动的随机输出反馈预测控制:通过插值初始条件的递归可行性
研究了随机扰动下线性系统的数据驱动输出反馈预测控制问题。该方案依赖于一个合适的数据驱动的随机最优控制问题(OCP)的重新表述的递归解决方案,它允许输入和输出的统计分布的前向预测和优化。我们的方法避免使用参数化系统模型。相反,它是基于先前记录的数据,使用最近提出的Willems基本引理的随机变体。引理的随机变体适用于受高斯和非高斯性质的随机扰动的大类线性动力学。为了确保递归的可行性,将OCP的初始条件(由过去的输入和输出信息组成)作为OCP的额外决策变量。给出了该方案的递归可行性和闭环实际稳定性的充分条件,并给出了性能界。最后,通过一个算例说明了该方法的有效性和闭环特性。
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