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2014 | Book

Separated Representations and PGD-Based Model Reduction

Fundamentals and Applications

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About this book

The papers in this volume start with a description of the construction of reduced models through a review of Proper Orthogonal Decomposition (POD) and reduced basis models, including their mathematical foundations and some challenging applications, then followed by a description of a new generation of simulation strategies based on the use of separated representations (space-parameters, space-time, space-time-parameters, space-space,…), which have led to what is known as Proper Generalized Decomposition (PGD) techniques. The models can be enriched by treating parameters as additional coordinates, leading to fast and inexpensive online calculations based on richer offline parametric solutions. Separated representations are analyzed in detail in the course, from their mathematical foundations to their most spectacular applications. It is also shown how such an approximation could evolve into a new paradigm in computational science, enabling one to circumvent various computational issues in a vast array of applications in engineering science.

Table of Contents

Frontmatter
Model Order Reduction based on Proper Orthogonal Decomposition
Abstract
In this chapter we review the basics of classical model order reduction techniques based on Proper Orthogonal Decomposition (POD), Principal Component Analysis (PCA) or Karhunen-Loève decompositions.
Elías Cueto, Francisco Chinesta, Antonio Huerta
PGD for solving multidimensional and parametric models
Abstract
In this chapter we are addressing a new paradigm in the field of simulation-based engineering sciences (SBES) to face the challenges posed by current ICT technologies. Despite the impressive progress attained by simulation capabilities and techniques, some challenging problems remain today intractable. These problems, that are common to many branches of science and engineering, are of different nature. Among them, we can cite those related to high-dimensional problems, which do not admit mesh-based approaches due to the exponential increase of degrees of freedom. We developed in recent years a novel technique, called Proper Generalized Decomposition (PGD). It is based on the assumption of a separated form of the unknown field and it has demonstrated its capabilities in dealing with high-dimensional problems overcoming the strong limitations of classical approaches. But the main opportunity given by this technique is that it allows for a completely new approach for classic problems, not necessarily high dimensional. Many challenging problems can be efficiently cast into a multidimensional framework and this opens new possibilities to solve old and new problems with strategies not envisioned until now. For instance, parameters in a model can be set as additional extra-coordinates of the model. In a PGD framework, the resulting model is solved once for life, in order to obtain a general solution that includes all the solutions for every possible value of the parameters, that is, a sort of computational vademecum. Under this rationale, optimization of complex problems, uncertainty quantification, simulation-based control and real-time simulation are now at hand, even in highly complex scenarios, by combining an off-line stage in which the general PGD solution, the vademecum, is computed, and an on-line phase in which, even on deployed, handheld, platforms such as smartphones or tablets, real-time response is obtained as a result of our queries.
Francisco Chinesta, Elías Cueto, Antonio Huerta
PGD in linear and nonlinear Computational Solid Mechanics
Abstract
Mechanics continues to supply numerous science and engineering problems which remain inaccessible to standard FE codes. Not all these problems are exotic, and many are indeed practical problems. A significant number of these engineering challenges are related to the today’s growing interest in physics-based material models described on a scale smaller than that of the macroscopic structure, with applications such as structural design for which quasi real time simulation is mandatory. Design parameters and lacks of knowledge (variability, uncertainties) involving multiple parameters make these problems even more difficult.
This chapter addresses our answer to these computational challenges which is based on the Proper Generalized Decomposition (PGD) method that we have introduced in 1985 and developed until now. The two papers (Néron and Ladevèze, 2010; Chamoin et al., 2012) and the book (Ladevèze, 1996, 1999) are at the center of this chapter. Additions concern the main technical points which are detailed here for the first time.
Pierre Ladevèze
Fundamentals of reduced basis method for problems governed by parametrized PDEs and applications
Abstract
In this chapter we consider Reduced Basis (RB) approximations of parametrized Partial Differential Equations (PDEs). The the idea behind RB is to decouple the generation and projection stages (Offline/Online computational procedures) of the approximation process in order to solve parametrized PDEs in a fast, inexpensive and reliable way. The RB method, especially applied to 3D problems, allows great computational savings with respect to the classical Galerkin Finite Element (FE) Method. The standard FE method is typically ill suited to (i) iterative contexts like optimization, sensitivity analysis and many-queries in general, and (ii) real time evaluation. We consider for simplicity coercive PDEs. We discuss all the steps to set up a RB approximation, either from an analytical and a numerical point of view. Then we present an application of the RB method to a steady thermal conductivity problem in heat transfer with emphasis on geometrical and physical parameters.
Gianluigi Rozza
Metadata
Title
Separated Representations and PGD-Based Model Reduction
Editors
Francisco Chinesta
Pierre Ladevèze
Copyright Year
2014
Publisher
Springer Vienna
Electronic ISBN
978-3-7091-1794-1
Print ISBN
978-3-7091-1793-4
DOI
https://doi.org/10.1007/978-3-7091-1794-1

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