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Approximate Green's Function Coupled Cluster Method Employing Effective Dimension Reduction

机译:近似绿色的功能耦合集群方法采用有效维度减少

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The Green's function coupled cluster (GFCC) method, originally proposed in the early 1990s, is a powerful many-body tool for computing and analyzing the electronic structure of molecular and periodic systems, especially when electrons of the system are strongly correlated. However, in order for the GFCC to become a method that may be routinely used in the electronic structure calculations, robust numerical techniques and approximations must be employed to reduce its extremely high computational overhead. In our recent studies, it has been demonstrated that the GFCC equations can be solved directly in the frequency domain using iterative linear solvers, which can be easily distributed in a massively parallel environment. In the present work, we demonstrate a successful application of model-order-reduction (MOR) techniques in the GFCC framework. Briefly speaking, for a frequency regime of interest that requires high-resolution descriptions of spectral function, instead of solving the GFCC linear equation of full dimension for every single frequency point of interest, an efficiently solvable linear system model of a reduced dimension may be built upon projecting the original GFCC linear system onto a subspace. From this reduced order model is obtained a reasonable approximation to the full dimensional GFCC linear equations in both interpolative and extrapolative spectral regions. Here, we show that the subspace can be properly constructed in an iterative manner from the auxiliary vectors of the GFCC linear equations at some selected frequencies within the spectral region of interest. During the iterations, the quality of the subspace, as well as the linear system model, can be systematically improved. The method is tested in this work in terms of the efficiency and accuracy of computing spectral functions for some typical molecular systems such as carbon monoxide, 1,3-butadiene, benzene, and adenine. To reach the same level of accuracy as that of the original GFCC method, the application of MOR in the GFCC method is able to significantly lower the original computational cost for the aforementioned molecules in designated frequency regimes. As a byproduct, the reduced order model obtained by this method is found to provide a high-quality initial guess, which improves the convergence rate for the existing iterative linear solver.
机译:绿色的功能耦合集群(GFCC)方法最初在20世纪90年代初提出,是一种强大的多体工具,用于计算和分析分子和周期系统的电子结构,尤其是当系统的电子强烈相关时。然而,为了使GFCC成为可以在电子结构计算中经常使用的方法,必须采用稳健的数值和近似来减少其极高的计算开销。在我们最近的研究中,已经证明了GFCC方程可以使用迭代线性溶剂直接在频域中解决,这可以在大规模平行环境中容易地分布。在本作工作中,我们展示了GFCC框架中的模型顺序减少(Mor)技术的成功应用。简要说话,对于需要频谱函数的高分辨率描述的感兴趣的频率制度,而不是针对每个频率点求解全维度的GFCC线性方程,可以构建减压尺寸的有效可溶性的线性系统模型将原始GFCC线性系统投影到子空间时。从该减少的顺序模型获得了与内插和外谱区域中的全维GFCC线性方程的合理近似。这里,我们示出了子空间可以以迭代方式从GFCC线性方程的辅助矢量处以在光谱区域内的一些选择的频率的辅助矢量中正确地构造。在迭代期间,可以系统地改善子空间的质量以及线性系统模型。在这项工作中,根据计算光谱功能的效率和准确性,以用于一些典型的分子系统,例如一氧化碳,1,3-丁二烯,苯和腺嘌呤的效率和准确性。为了达到与原始GFCC方法相同的准确度,Mor在GFCC方法中的应用能够显着降低指定频率制度中上述分子的原始计算成本。作为副产品,发现通过该方法获得的减少的订单模型提供了高质量的初始猜测,这提高了现有迭代线性求解器的收敛速率。

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