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A parallel additive Schwarz preconditioned Jacobi-Davidson algorithm for polynomial eigenvalue problems in quantum dot simulation

机译:量子点模拟中多项式特征值问题的并行加性Schwarz预处理Jacobi-Davidson算法

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摘要

We develop a parallel Jacobi-Davidson approach for finding a partial set of eigenpairs of large sparse polynomial eigenvalue problems with application in quantum dot simulation. A Jacobi-Davidson eigenvalue solver is implemented based on the Portable, Extensible Toolkit for Scientific Computation (PETSc). The eigensolver thus inherits PETSc's efficient and various parallel operations, linear solvers, preconditioning schemes, and easy usages. The parallel eigenvalue solver is then used to solve higher degree polynomial eigenvalue problems arising in numerical simulations of three dimensional quantum dots governed by Schrdinger's equations. We find that the parallel restricted additive Schwarz preconditioner in conjunction with a parallel Krylov subspace method (e.g. GMRES) can solve the correction equations, the most costly step in the Jacobi-Davidson algorithm, very efficiently in parallel. Besides, the overall performance is quite satisfactory. We have observed near perfect superlinear speedup by using up to 320 processors. The parallel eigensolver can find all target interior eigenpairs of a quintic polynomial eigenvalue problem with more than 32 million variables within 12 minutes by using 272 Intel 3.0GHz processors.
机译:我们开发了一种并行的Jacobi-Davidson方法,以找到大型稀疏多项式特征值问题的本征对的部分集,并将其应用于量子点仿真。 Jacobi-Davidson特征值求解器是基于可移植,可扩展的科学计算工具包(PETSc)实现的。因此,本征求解器继承了PETSc的高效和各种并行操作,线性求解器,预处理方案以及易于使用的特性。然后,使用并行特征值求解器来解决由Schrdinger方程控制的三维量子点的数值模拟中出现的更高次多项式特征值问题。我们发现,并行限制加法Schwarz预处理器与并行Krylov子空间方法(例如GMRES)结合可以非常有效地并行解决校正方程,这是Jacobi-Davidson算法中最昂贵的步骤。此外,整体表现还算令人满意。通过使用多达320个处理器,我们已经观察到近乎完美的超线性加速。通过使用272个Intel 3.0GHz处理器,并行特征求解器可以在12分钟内找到具有超过3200万个变量的五次多项式特征值问题的所有目标内部特征对。

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