On the tripling algorithm for large-scale nonlinear matrix equations with low rank structure
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摘要
For the large-scale nonlinear matrix equations with low rank structure, the well-developed doubling algorithm in low rank form (DA-LR) is known as an efficient method to compute the stabilizing solution. By further analyzing the global efficiency index constructed in this paper, we propose a tripling algorithm in low rank form (TA-LR) from two points of view, the cyclic reduction and the symplectic structure preservation. The new presented algorithm shares the same pre-processing complexity with that of DA-LR, but can attain the prescribed normalized residual level within less iterations by only consuming some negligible iteration time as an offset. Under the solvability condition, the proposed algorithm is demonstrated to inherit a cubic convergence and is capable of delivering errors from the current iteration to the next with the same order. Numerical experiments including some from nano research show that the TA-LR is highly efficient to compute the stabilizing solution of large-scale nonlinear matrix equations with low rank structure.
论文关键词:65F50,15A24,Large-scale nonlinear matrix equations,Doubling algorithm,Tripling algorithm,Cyclic reduction,Low rank,Nano research
论文评审过程:Received 10 September 2014, Revised 19 December 2014, Available online 7 April 2015.
论文官网地址:https://doi.org/10.1016/j.cam.2015.03.036