NANASep 19, 2017

Robust and scalable domain decomposition solvers for unfitted finite element methods

arXiv:1703.0632339 citationsh-index: 38
Originality Incremental advance
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For researchers in computational mechanics and large-scale simulations, this provides a scalable solver for unfitted methods, overcoming the bottleneck of sparse direct solvers.

This work addresses the ill-conditioned linear systems arising from unfitted finite element methods by proposing customized domain decomposition preconditioners (BDDC) that achieve robustness and algorithmic scalability, demonstrated through complex 3D numerical experiments.

Unfitted finite element methods, e.g., extended finite element techniques or the so-called finite cell method, have a great potential for large scale simulations, since they avoid the generation of body-fitted meshes and the use of graph partitioning techniques, two main bottlenecks for problems with non-trivial geometries. However, the linear systems that arise from these discretizations can be much more ill-conditioned, due to the so-called small cut cell problem. The state-of-the-art approach is to rely on sparse direct methods, which have quadratic complexity and are thus not well suited for large scale simulations. In order to solve this situation, in this work we investigate the use of domain decomposition preconditioners (balancing domain decomposition by constraints) for unfitted methods. We observe that a straightforward application of these preconditioners to the unfitted case has a very poor behavior. As a result, we propose a {customization} of the classical BDDC methods based on the stiffness weighting operator and an improved definition of the coarse degrees of freedom in the definition of the preconditioner. These changes lead to a robust and algorithmically scalable solver able to deal with unfitted grids. A complete set of complex 3D numerical experiments show the good performance of the proposed preconditioners.

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