We describe some recent mathematical results in constructing computational methods that lead to the development of fast and accurate multiresolution numerical methods for solving quantum chemistry and nuclear physics problems based on Density Functional Theory (DFT). Using low separation rank representations of functions and operators in conjunction with representations in multiwavelet bases, we developed a multiscale solution method for integral and differential equations and integral transforms. The Poisson equation, the Schrodinger equation, and the projector on the divergence free functions provide important examples with a wide range of applications in computational chemistry, nuclear physics, computational electromagnetic and fluid dynamics. We have implemented this approach along with adaptive representations of operators and functions in the multiwavelet basis and low separation rank (LSR) approximation of operators and functions. These methods have been realized and implemented in a software package called Multiresolution Adaptive Numerical Evaluation for Scientific Simulation (MADNESS). © 2007 IOP Publishing Ltd.
CITATION STYLE
Fann, G. I., Harrison, R. J., Beylkin, G., Jia, J., Hartman-Baker, R., Shelton, W. A., & Sugiki, S. (2007). MADNESS applied to density functional theory in chemistry and nuclear physics. Journal of Physics: Conference Series, 78(1). https://doi.org/10.1088/1742-6596/78/1/012018
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