NANAFeb 16, 2018

SBP-SAT finite difference discretization of acoustic wave equations on staggered block-wise uniform grids

arXiv:1802.0612332 citationsh-index: 47
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For researchers in seismic imaging, this provides a more flexible and efficient numerical method that relaxes uniform grid constraints while maintaining stability and accuracy.

This work develops an energy-conserving staggered grid finite difference method for acoustic wave equations on block-wise uniform grids with nonconforming interfaces, enabling efficient handling of varying wave speeds in seismic simulations. The method is shown to be accurate and stable on test cases.

We consider the numerical simulation of the acoustic wave equations arising from seismic applications, for which staggered grid finite difference methods are popular choices due to their simplicity and efficiency. We relax the uniform grid restriction on finite difference methods and allow the grids to be block-wise uniform with nonconforming interfaces. In doing so, variations in the wave speeds of the subterranean media can be accounted for more efficiently. Staggered grid finite difference operators satisfying the summation-by-parts (SBP) property are devised to approximate the spatial derivatives appearing in the acoustic wave equation. These operators are applied within each block independently. The coupling between blocks is achieved through simultaneous approximation terms (SATs), which impose the interface condition weakly, i.e., by penalty. Ratio of the grid spacing of neighboring blocks is allowed to be rational number, for which specially designed interpolation formulas are presented. These interpolation formulas constitute key pieces of the simultaneous approximation terms. The overall discretization is shown to be energy-conserving and examined on test cases of both theoretical and practical interests, delivering accurate and stable simulation results.

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