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首页> 外文期刊>IMA Journal of Numerical Analysis >Computation of pseudospectral abscissa for large-scale nonlinear eigenvalue problems
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Computation of pseudospectral abscissa for large-scale nonlinear eigenvalue problems

机译:计算大规模非线性特征值问题的伪谱系横坐标

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摘要

We present an algorithm to compute the pseudospectral abscissa for a nonlinear eigenvalue problem. The algorithm relies on global under-estimator and over-estimator functions for the eigenvalue and singular value functions involved. These global models follow from eigenvalue perturbation theory. The algorithm has three particular features. First, it converges to the globally rightmost point of the pseudospectrum, and it is immune to nonsmoothness. The global convergence assertion is under the assumption that a global lower bound is available for the second derivative of a singular value function depending on one parameter. It may not be easy to deduce such a lower bound analytically, but assigning large negative values works robustly in practice. Second, it is applicable to large-scale problems since the dominant cost per iteration stems from computing the smallest singular value and associated singular vectors, for which efficient iterative solvers can be used. Furthermore, a significant increase in computational efficiency can be obtained by subspace acceleration, that is, by restricting the domains of the linear maps associated with the matrices involved to small but suitable subspaces, and solving the resulting reduced problems. Occasional restarts of these subspaces further enhance the efficiency for large-scale problems. Finally, in contrast to existing iterative approaches based on constructing low-rank perturbations and rightmost eigenvalue computations, the algorithm relies on computing only singular values of complex matrices. Hence, the algorithm does not require solutions of nonlinear eigenvalue problems, thereby further increasing efficiency and reliability. This work is accompanied by a robust implementation of the algorithm that is publicly available.
机译:我们提出了一种计算非线性特征值问题的伪谱横坐标的算法。该算法依赖于全局估计器和互估计函数,用于涉及的特征值和奇异值函数。这些全球模型从特征值扰动理论遵循。该算法具有三种特定的功能。首先,它会聚到伪谱的全球最右边点,并且对非运动不起作用。全局收敛断言是在假设全局下限的假设,这是根据一个参数的奇异值函数的第二阶段可用。在分析上推断这种下限可能不容易,但在实践中分配大的负值是鲁莽的。其次,它适用于大规模问题,因为从计算最小的奇异值和相关奇异载体的主要成本源,可以使用有效的迭代溶剂。此外,通过子空间加速度可以获得计算效率的显着增加,即,通过限制与涉及的矩阵相关的线性映射的域,并且解决了所得的降低的问题。偶尔重启这些子空间进一步提高了大规模问题的效率。最后,与基于构建低级扰动和最直根值计算的现有迭代方法相比,该算法依赖于计算复杂矩阵的奇异值。因此,该算法不需要非线性特征值问题的解决方案,从而进一步提高了效率和可靠性。这项工作伴随着公开可用的算法的强大实现。

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