2017
DOI: 10.1002/pamm.201710388
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Fast Low‐Rank Empirical Cross Gramians

Abstract: The cross Gramian matrix encodes the input-output coherence of linear control systems and is used in projection-based model reduction. The empirical cross Gramian is a data-driven variant of the cross Gramian which also extends to nonlinear systems. A drawback of the empirical cross Gramian for large-scale systems is its full order and dense structure; yet, it may be computed column-wise. Using the hierarchical approximate proper orthogonal decomposition (HAPOD), this partial computability can be exploited to … Show more

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Cited by 5 publications
(6 citation statements)
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“…3.1.3] is used, as in-memory storage of the Gramian(s) is possible. For settings, where only parts of the cross Gramian can be kept in memory, the low-rank empirical cross Gramian [19] for the left singular vectors, and the low-rank empirical cross Gramian of the adjoint system for the right singular vectors, can be utilized, since the cross Gramian of the adjoint system is equal to the system's transposed cross Gramian:…”
Section: Fused Computationmentioning
confidence: 99%
See 1 more Smart Citation
“…3.1.3] is used, as in-memory storage of the Gramian(s) is possible. For settings, where only parts of the cross Gramian can be kept in memory, the low-rank empirical cross Gramian [19] for the left singular vectors, and the low-rank empirical cross Gramian of the adjoint system for the right singular vectors, can be utilized, since the cross Gramian of the adjoint system is equal to the system's transposed cross Gramian:…”
Section: Fused Computationmentioning
confidence: 99%
“…For large-scale systems, the computation of dense system Gramians, which are of dimension N × N , may be infeasible or at least inefficient. To this end, lowrank representations of the Gramians can be computed, for the cross Gramian, in example by the implicitly restarted Arnoldi algorithm [40], the factorized iteration [3], a factored ADI [5] or a low-rank empirical cross Gramian [19]. Overall, the cross-Gramian-based dominant subspace algorithm is summarized by:…”
Section: Algorithmic Computationmentioning
confidence: 99%
“…hence this distributed empirical cross Gramian [37,Sec. 4.2] is computable in parallel and communication-free on a distributed memory computer system, or sequentially in a memory-economical manner as a low-rank empirical cross Gramian [38] on a unified memory computer system. This column-wise computability translates also to the empirical joint Gramian and the non-symmetric variants of the empirical cross and joint Gramian.…”
Section: Distributed Memory Parallelizationmentioning
confidence: 99%
“…hence this distributed empirical cross Gramian [72] (Section 4.2) is computable in parallel and communication-free on a distributed memory computer system, or sequentially in a memory-economical manner as a low-rank empirical cross Gramian [73] on a unified memory computer system. This column-wise computability translates also to the empirical joint Gramian and the non-symmetric variants of the empirical cross and joint Gramian.…”
Section: Distributed Memory Parallelizationmentioning
confidence: 99%
“…Together with a partitioned singular value decomposition, such as the HAPOD [72], an empirical-cross-Gramian-based Galerkin projection is computable with minimal communication in parallel on a distributed memory system, or sequentially on a shared memory system [73].…”
Section: Partitioned Computationmentioning
confidence: 99%