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Gradient-descent iterative algorithm for solving a class of linear matrix equations with applications to heat and Poisson equations

机译:梯度 - 下降迭代算法,用于求解加热和泊松方程的应用中的一类线性矩阵方程

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In this paper, we introduce a new iterative algorithm for solving a generalized Sylvester matrix equation of the form $sum_{t=1}^{p}A_{t}XB_{t}=C$ which includes a class of linear matrix equations. The objective of the algorithm is to minimize an error at each iteration by the idea of gradient-descent. We show that the proposed algorithm is widely applied to any problems with any initial matrices as long as such problem has a unique solution. The convergence rate and error estimates are given in terms of the condition number of the associated iteration matrix. Furthermore, we apply the proposed algorithm to sparse systems arising from discretizations of the one-dimensional heat equation and the two-dimensional Poisson’s equation. Numerical simulations illustrate the capability and effectiveness of the proposed algorithm comparing to well-known methods and recent methods.
机译:在本文中,我们介绍了一种新的迭代算法,用于解决形式$ sum_ {t} ^ {p} a_ {t} xb_ {t} = c $的概括的Sylvester矩阵方程式,包括一类线性矩阵 方程式。 算法的目的是通过梯度下降的思想来最小化每次迭代的误差。 我们表明,只要这些问题具有唯一的解决方案,所提出的算法广泛应用于任何初始矩阵的任何问题。 在关联迭代矩阵的条件号方面给出了收敛速率和错误估计。 此外,我们将所提出的算法应用于一维热方程的离散化和二维泊松等式的离散化产生的稀疏系统。 数值模拟说明了所提出的算法与众所周知的方法和最近的方法相比的能力和有效性。

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