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Convergence analysis of gradient-based iterative algorithms for a class of rectangular Sylvester matrix equations based on Banach contraction principle

机译:基于Banach收缩原理的基于矩形Sylvester矩阵方程的梯度基迭代算法的收敛性分析

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We derive an iterative procedure for solving a generalized Sylvester matrix equation $AXB+CXD = E$ , where $A,B,C,D,E$ are conforming rectangular matrices. Our algorithm is based on gradients and hierarchical identification principle. We convert the matrix iteration process to a first-order linear difference vector equation with matrix coefficient. The Banach contraction principle reveals that the sequence of approximated solutions converges to the exact solution for any initial matrix if and only if the convergence factor belongs to an open interval. The contraction principle also gives the convergence rate and the error analysis, governed by the spectral radius of the associated iteration matrix. We obtain the fastest convergence factor so that the spectral radius of the iteration matrix is minimized. In particular, we obtain iterative algorithms for the matrix equation $AXB=C$ , the Sylvester equation, and the Kalman–Yakubovich equation. We give numerical experiments of the proposed algorithm to illustrate its applicability, effectiveness, and efficiency.
机译:我们派生了迭代程序,用于解决广义Sylvester矩阵方程$ AXB + CXD = E $,其中$ A,B,C,D,E $符合矩形矩阵。我们的算法基于梯度和分层识别原理。我们将矩阵迭代过程转换为具有矩阵系数的一阶线性差向量方程。 Banach收缩原理揭示了近似解的序列,如果收敛因子属于开放间隔,则近似溶液的序列会收敛到任何初始矩阵的精确解决方案。收缩原理还通过相关迭代矩阵的频谱半径来提供收敛速率和误差分析。我们获得最快的收敛系数,使得迭代矩阵的光谱半径最小化。特别是,我们获得矩阵方程的迭代算法$ AXB = C $,Sylvester方程和卡尔曼 - Yakubovich方程。我们给出了所提出的算法的数值实验,以说明其适用性,有效性和效率。

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