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GCRO with dynamic deflated restarting for solving adjoint systems of equations for aerodynamic shape optimization

机译:具有动态放气重启功能的GCRO用于求解方程组的辅助系统以实现空气动力学形状优化

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Purpose This paper aims to present a dynamically adjusted deflated restarting procedure for the generalized conjugate residual method with an inner orthogonalization (GCRO) method. Design/methodology/approach The proposed method uses a GCR solver for the outer iteration and the generalized minimal residual (GMRES) with deflated restarting in the inner iteration. Approximate eigenpairs are evaluated at the end of each inner GMRES restart cycle. The approach determines the number of vectors to be deflated from the spectrum based on the number of negative Ritz values, k*. Findings The authors show that the approach restores convergence to cases where GMRES with restart failed and compare the approach against standard GMRES with restarts and deflated restarting. Efficiency is demonstrated for a 2D NACA 0012 airfoil and a 3D common research model wing. In addition, numerical experiments confirm the scalability of the solver. Originality/value This paper proposes an extension of dynamic deflated restarting into the traditional GCRO method to improve convergence performance with a significant reduction in the memory usage. The novel deflation strategy involves selecting the number of deflated vectors per restart cycle based on the number of negative harmonic Ritz eigenpairs and defaulting to standard restarted GMRES within the inner loop if none, and restricts the deflated vectors to the smallest eigenvalues present in the modified Hessenberg matrix.
机译:目的本文旨在为采用内部正交化(GCRO)方法的广义共轭残差方法提供一种动态调整的放气重启程序。设计/方法/方法所提出的方法将GCR求解器用于外部迭代,并在内部迭代中使用紧缩重新启动的广义最小残差(GMRES)。在每个内部GMRES重新启动周期结束时评估大约的特征对。该方法基于负Ritz值k *的数量确定要从频谱缩小的矢量的数量。研究结果表明,该方法可将GMRES恢复为重启失败的情况,并将该方法与带有重启和放气重启的标准GMRES进行比较。 2D NACA 0012机翼和3D通用研究模型机翼证明了效率。另外,数值实验证实了求解器的可扩展性。独创性/价值本文提出将动态放气重启功能扩展到传统的GCRO方法中,以提高收敛性能并显着减少内存使用量。新颖的放气策略包括根据负谐波Ritz本征对的数量选择每个重新启动周期的放气矢量数量,如果没有,则默认在内环中使用标准重新启动的GMRES,并将放气矢量限制为修改后的Hessenberg中存在的最小特征值矩阵。

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