首頁 > 期刊 > 自然科學與工程技術 > 基礎科學 > 數學 > 高等學校計算數學學報 > 偽譜計算的降維迭代算法 【正文】
摘要:The pseudospectra is a helpful tool to analyze the behavior of systems involved with non-normal matrices or linear operators. In this paper, we present a new met hod to approximate the pseudospetra of large scale matrices. Using the Induced Dimension Reduction it eration (IDR), which was originally proposed for solving systems of linear equations, then we obtain a Hessenberg decomposition, from which we approximate the pseudospectra of a matrix since the IDR iteration is a short-recurrence method which is attractive for large scale compu tat ions. Ad? ditionally, the IDR polynomial create this Hessenberg decomposition is also used as a filter to discard the unwanted eigenvalues, which is specially constructive and meaningful for computing pseudospectra of large mat rices. Numerical experiments and comparisons on the test mat rices from the literature show that the proposed met hod is much more efficien 11 han the Grid-SVD met hod, inverse Lanczos method, and the implicitly restarted Arnoldi method (IRAM).
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