Himpe C, Leibner T, Rave S
Forschungsartikel (Zeitschrift) | Peer reviewedProper Orthogonal Decomposition (POD) is a widely used technique for the construction of low-dimensional approximation spaces from high-dimensional input data. For large-scale applications and an increasing amount of input data vectors, however, computing the POD often becomes prohibitively expensive. This work presents a generic, easy to implement approach to compute an approximate POD based on arbitrary tree hierarchies of worker nodes, where each worker computes a POD of only a small amount of input vectors. The tree hierarchy can be freely adapted to optimally suit the available computational resources. In particular, this hierarchical approximate POD (HAPOD) allows for both, simple parallelization with low communication overhead, as well as live sequential POD computation under restricted memory capacities. Rigorous error estimates and extensive numerical examples underline the performance and reliability of our approach.
Himpe, Christian | Professur für Angewandte Mathematik, insbesondere Numerik (Prof. Ohlberger) |
Leibner, Tobias | Professur für Angewandte Mathematik, insbesondere Numerik (Prof. Ohlberger) |
Rave, Stephan | Professur für Angewandte Mathematik, insbesondere Numerik (Prof. Ohlberger) |