Directional ‐matrix compression for high‐frequency problems
Standard numerical algorithms, such as the fast multipole method or ‐matrix schemes, rely on low‐rank approximations of the underlying kernel function. For high‐frequency problems, the ranks grow rapidly as the mesh is refined, and standard techniques are no longer attractive. Directional compressio...
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Veröffentlicht in: | Numerical linear algebra with applications 2017-12, Vol.24 (6) |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Standard numerical algorithms, such as the fast multipole method or
‐matrix schemes, rely on low‐rank approximations of the underlying kernel function. For high‐frequency problems, the ranks grow rapidly as the mesh is refined, and standard techniques are no longer attractive.
Directional
compression techniques solve this problem by using decompositions based on plane waves. Taking advantage of hierarchical relations between these waves' directions, an efficient approximation is obtained. This paper is dedicated to
directional
‐
matrices
that employ local low‐rank approximations to handle directional representations efficiently. The key result is an algorithm that takes an arbitrary matrix and finds a quasi‐optimal approximation of this matrix as a directional
‐matrix using a prescribed block tree. The algorithm can reach any given accuracy, and the approximation requires only
units of storage, where
n
is the matrix dimension,
κ
is the wave number, and
k
is the local rank. In particular, we have a complexity of
if
κ
is constant and
for high‐frequency problems characterized by
κ
2
∼
n
. Because the algorithm can be applied to arbitrary matrices, it can serve as the foundation of fast techniques for constructing preconditioners. |
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ISSN: | 1070-5325 1099-1506 |
DOI: | 10.1002/nla.2112 |