The ab initio description of the spectral interior of
the absorption spectrum poses both a theoretical and computational
challenge for modern electronic structure theory. Due to
the often spectrally dense character of this domain in the
quantum propagator’s eigenspectrum for medium-to-large sized
systems, traditional approaches based on the partial diagonalization
of the propagator often encounter oscillatory and stagnating
convergence. Electronic structure methods which solve the
molecular response problem through the solution of spectrally
shifted linear systems, such as the complex polarization
propagator, offer an alternative approach which is agnostic to
the underlying spectral density or domain location. This
generality comes at a seemingly high computational cost associated with solving a large linear system for each spectral shift
in some discretization of the spectral domain of interest. In this work, we present a novel, adaptive solution to this high
computational overhead based on model order reduction techniques via interpolation. Model order reduction reduces the
computational complexity of mathematical models and is ubiquitous in the simulation of dynamical systems and control theory.
The efficiency and effectiveness of the proposed algorithm in the ab initio prediction of X-ray absorption spectra is demonstrated
using a test set of challenging water clusters which are spectrally dense in the neighborhood of the oxygen K-edge. On the basis
of a single, user defined tolerance we automatically determine the order of the reduced models and approximate the absorption
spectrum up to the given tolerance. We also illustrate that, for the systems studied, the automatically determined model order
increases logarithmically with the problem dimension, compared to a linear increase of the number of eigenvalues within the
energy window. Furthermore, we observed that the computational cost of the proposed algorithm only scales quadratically with
respect to the problem dimension.
Revised: January 13, 2020 |
Published: October 10, 2017
Citation
Van Beemen R., D.B. Williams-Young, J.M. Kasper, C. Yang, E. Ng, and X. Li. 2017.Model Order Reduction Algorithm for Estimating the Absorption Spectrum.Journal of Chemical Theory and Computation 13, no. 10:4950-4961.PNNL-SA-129876.doi:10.1021/acs.jctc.7b00402