Rigorous Solutions of Large-Scale Scattering Problems Discretized with Hundreds of Millions of Unknowns

2009-09-18
We present fast and accurate solutions of large-scale scattering problems using a parallel implementation of the multilevel fast multipole algorithm (MLFMA). By employing a hierarchical partitioning strategy, MLFMA can be parallelized efficiently on distributed-memory architectures. This way, it becomes possible to solve very large problems discretized with hundreds of millions of unknowns. Effectiveness of the developed simulation environment is demonstrated on various scattering problems involving canonical and complicated objects.

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Citation Formats
L. Guerel and Ö. S. Ergül, “Rigorous Solutions of Large-Scale Scattering Problems Discretized with Hundreds of Millions of Unknowns,” 2009, Accessed: 00, 2020. [Online]. Available: https://hdl.handle.net/11511/54636.