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Numerical solution of large-scale Lyapunov equations, Riccati equations, and linear-quadratic optimal control problems

机译:大型Lyapunov方程,Riccati方程和线性二次最优控制问题的数值解

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We study large-scale, continuous-time linear time-invariant control systems with a sparse or structured state matrix and a relatively small number of inputs and outputs. The main contributions of this paper are numerical algorithms for the solution of large algebraic Lyapunov and Riccati equations and linear-quadratic optimal control problems, which arise from such systems. First, we review an alternating direction implicit iteration-based method to compute approximate low-rank Cholesky factors of the solution matrix of large-scale Lyapunov equations, and we propose a refined version of this algorithm. Second, a combination of this method with a variant of Newton's method (in this context also called Kleinman iteration) results in an algorithm for the solution of large-scale Riccati equations. Third, we describe an implicit version of this algorithm for the solution of linear-quadratic optimal control problems, which computes the feedback directly without solving the underlying algebraic Riccati equation explicitly. Our algorithms are efficient with respect to both memory and computation. In particular, they can be applied to problems of very large scale, where square, dense matrices of the system order cannot be stored in the computer memory. We study the performance of our algorithms in numerical experiments. Copyright (c) 2008 John Wiley & Sons, Ltd.
机译:我们研究具有稀疏或结构化状态矩阵以及相对较少数量的输入和输出的大规模,连续时间线性时不变控制系统。本文的主要贡献是用于求解大型代数Lyapunov和Riccati方程的数值算法以及由此系统引起的线性二次最优控制问题。首先,我们回顾了一种基于交替方向隐式迭代的方法来计算大规模Lyapunov方程解矩阵的近似低秩Cholesky因子,并提出了该算法的改进版本。其次,将此方法与牛顿方法的一种变体(在本文中也称为Kleinman迭代)相结合,得出了一种解决大规模Riccati方程的算法。第三,我们描述了该算法的隐式版本,用于求解线性二次最优控制问题,该算法无需显式求解基础代数Riccati方程即可直接计算反馈。我们的算法在存储和计算方面都是高效的。特别是,它们可以应用于非常大的问题,在这些问题中,系统级的方形密集矩阵无法存储在计算机内存中。我们在数值实验中研究算法的性能。版权所有(c)2008 John Wiley&Sons,Ltd.

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