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Least squares solutions of quadratic inverse eigenvalue problem with partially bisymmetric matrices under prescribed submatrix constraints

机译:在规定的子矩阵约束下具有部分双对称矩阵的二次特征值逆问题的最小二乘解

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摘要

The inverse eigenvalue problems play an important role in broad application areas such as system identification, Hopfield neural networks, control design, mass-spring system and molecular spectroscopy. This paper proposes an algorithm that yields a new method to efficiently and accurately compute the partially bisymmetric solutions (M, C, K) under prescribed submatrix constraints of the quadratic inverse eigenvalue problem MX Lambda(2) + CX Lambda + KX = 0. The algorithm is developed based on the conjugate gradient normal equations residual minimizing (CGNR) method. We discuss the convergence properties of the algorithm. Finally, the performance of the algorithm is tested on two numerical examples and compared to the previous algorithm. (C) 2018 Elsevier Ltd. All rights reserved.
机译:特征值反问题在系统识别,Hopfield神经网络,控制设计,质量弹簧系统和分子光谱学等广泛的应用领域中发挥着重要作用。本文提出了一种算法,该算法产生了一种新方法,可以在二次反特征值问题MX Lambda(2)+ CX Lambda + KX = 0的规定的子矩阵约束下,高效且准确地计算部分双对称解(M,C,K)。该算法是基于共轭梯度正态方程残差最小化(CGNR)方法开发的。我们讨论了该算法的收敛性。最后,在两个数值示例上测试了该算法的性能,并与之前的算法进行了比较。 (C)2018 Elsevier Ltd.保留所有权利。

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