Model Reduction of Parametrized Systems

Nonfiction, Science & Nature, Mathematics, Counting & Numeration, Computers, Programming
Cover of the book Model Reduction of Parametrized Systems by , Springer International Publishing
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart
Author: ISBN: 9783319587868
Publisher: Springer International Publishing Publication: September 5, 2017
Imprint: Springer Language: English
Author:
ISBN: 9783319587868
Publisher: Springer International Publishing
Publication: September 5, 2017
Imprint: Springer
Language: English

The special volume offers a global guide to new concepts and approaches concerning the following topics: reduced basis methods, proper orthogonal decomposition, proper generalized decomposition, approximation theory related to model reduction, learning theory and compressed sensing, stochastic and high-dimensional problems, system-theoretic methods, nonlinear model reduction, reduction of coupled problems/multiphysics, optimization and optimal control, state estimation and control, reduced order models and domain decomposition methods, Krylov-subspace and interpolatory methods, and applications to real industrial and complex problems.

The book represents the state of the art in the development of reduced order methods. It contains contributions from internationally respected experts, guaranteeing a wide range of expertise and topics. Further, it reflects an important effor

t, carried out over the last 12 years, to build a growing research community in this field.

Though not a textbook, some of the chapters can be used as reference materials or lecture notes for classes and tutorials (doctoral schools, master classes).

View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart

The special volume offers a global guide to new concepts and approaches concerning the following topics: reduced basis methods, proper orthogonal decomposition, proper generalized decomposition, approximation theory related to model reduction, learning theory and compressed sensing, stochastic and high-dimensional problems, system-theoretic methods, nonlinear model reduction, reduction of coupled problems/multiphysics, optimization and optimal control, state estimation and control, reduced order models and domain decomposition methods, Krylov-subspace and interpolatory methods, and applications to real industrial and complex problems.

The book represents the state of the art in the development of reduced order methods. It contains contributions from internationally respected experts, guaranteeing a wide range of expertise and topics. Further, it reflects an important effor

t, carried out over the last 12 years, to build a growing research community in this field.

Though not a textbook, some of the chapters can be used as reference materials or lecture notes for classes and tutorials (doctoral schools, master classes).

More books from Springer International Publishing

Cover of the book Applied Mechanics, Behavior of Materials, and Engineering Systems by
Cover of the book Representing Communism After the Fall by
Cover of the book AeroStruct: Enable and Learn How to Integrate Flexibility in Design by
Cover of the book Financial Market Bubbles and Crashes, Second Edition by
Cover of the book Higher Education Governance in the Arab World by
Cover of the book The Fed at One Hundred by
Cover of the book Teacher Education for High Poverty Schools by
Cover of the book Edgar Rubin and Psychology in Denmark by
Cover of the book Place, Space and Hermeneutics by
Cover of the book Intelligent Systems in Production Engineering and Maintenance – ISPEM 2017 by
Cover of the book NASA Formal Methods by
Cover of the book The World of Applied Electromagnetics by
Cover of the book Resources, Services and Risks by
Cover of the book Pragmatism in Philosophical Inquiry by
Cover of the book Linear Algebra by
We use our own "cookies" and third party cookies to improve services and to see statistical information. By using this website, you agree to our Privacy Policy