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Low-rank updates and divide-and-conquer methods for quadratic matrix equations

机译:二次矩阵方程的低级更新和划分和征服方法

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In this work, we consider two types of large-scale quadratic matrix equations: continuous-time algebraic Riccati equations, which play a central role in optimal and robust control, and unilateral quadratic matrix equations, which arise from stochastic processes on 2D lattices and vibrating systems. We propose a simple and fast way to update the solution to such matrix equations under low-rank modifications of the coefficients. Based on this procedure, we develop a divide-and-conquer method for quadratic matrix equations with coefficients that feature a specific type of hierarchical low-rank structure, which includes banded matrices. This generalizes earlier work on linear matrix equations. Numerical experiments indicate the advantages of our newly proposed method versus iterative schemes combined with hierarchical low-rank arithmetic.
机译:在这项工作中,我们考虑了两种类型的大规模二次矩阵方程:连续时间代数Riccati方程,其在最佳和鲁棒控制中起着核心作用,并且单侧二次矩阵方程在2D格和振动上从随机过程产生的 系统。 我们提出了一种简单而快速的方法,可以在系数的低级修改下更新到这种矩阵方程的解决方案。 基于此过程,我们开发了具有具有特定类型的分层低级结构的系数的二次矩阵方程的分判和征管方法,其包括带状矩阵。 这概括了线性矩阵方程的早期工作。 数值实验表明我们的新提出方法与迭代方案的优点与分层低级算法相结合。

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