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SBP
Unveiling the potential of energy/entropy stable numerical methods for hyperbolic/mixed hyperbolic-parabolic PDEs
Matteo Parsani, Associate Professor, Applied Mathematics and Computational Science
Feb 13, 12:00
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13:00
B9 L2 H1
algorithm
Hyperbolic PDEs
PDE
parabolic-hyperbolic PDE
SBP
numerical methods for PDE's
Abstract The demand for increasingly multidisciplinary reliable simulations, for both analysis and design optimization purposes, requires transformational advances in individual components of future PDEs solvers. At the algorithmic level, hardware compatibility and efficiency are of paramount importance in determining viability on future hardware. However, equally important (if not more so) is provable algorithmic robustness which becomes progressively more challenging to achieve as problem size and physics complexity increase. We show that rigorously designed adaptive semi- and fully-discrete