English

Low-rank tensor methods for model order reduction

Numerical Analysis 2018-10-22 v1

Abstract

Parameter-dependent models arise in many contexts such as uncertainty quantification, sensitivity analysis, inverse problems or optimization. Parametric or uncertainty analyses usually require the evaluation of an output of a model for many instances of the input parameters, which may be intractable for complex numerical models. A possible remedy consists in replacing the model by an approximate model with reduced complexity (a so called reduced order model) allowing a fast evaluation of output variables of interest. This chapter provides an overview of low-rank methods for the approximation of functions that are identified either with order-two tensors (for vector-valued functions) or higher-order tensors (for multivariate functions). Different approaches are presented for the computation of low-rank approximations, either based on samples of the function or on the equations that are satisfied by the function, the latter approaches including projection-based model order reduction methods. For multivariate functions, different notions of ranks and the corresponding low-rank approximation formats are introduced.

Keywords

Cite

@article{arxiv.1511.01555,
  title  = {Low-rank tensor methods for model order reduction},
  author = {Anthony Nouy},
  journal= {arXiv preprint arXiv:1511.01555},
  year   = {2018}
}

Comments

To appear as a book chapter

R2 v1 2026-06-22T11:37:54.872Z