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This contributed volume presents some of the latest research
related to model order reduction of complex dynamical systems with
a focus on time-dependent problems. Chapters are written by leading
researchers and users of model order reduction techniques and are
based on presentations given at the 2019 edition of the workshop
series Model Reduction of Complex Dynamical Systems - MODRED, held
at the University of Graz in Austria. The topics considered can be
divided into five categories: system-theoretic methods, such as
balanced truncation, Hankel norm approximation, and reduced-basis
methods; data-driven methods, including Loewner matrix and
pencil-based approaches, dynamic mode decomposition, and
kernel-based methods; surrogate modeling for design and
optimization, with special emphasis on control and data
assimilation; model reduction methods in applications, such as
control and network systems, computational electromagnetics,
structural mechanics, and fluid dynamics; and model order reduction
software packages and benchmarks. This volume will be an ideal
resource for graduate students and researchers in all areas of
model reduction, as well as those working in applied mathematics
and theoretical informatics.
Optimization problems subject to constraints governed by partial
differential equations (PDEs) are among the most challenging
problems in the context of industrial, economical and medical
applications. Almost the entire range of problems in this field of
research was studied and further explored as part of the Deutsche
Forschungsgemeinschaft (DFG) priority program 1253 on "Optimization
with Partial Differential Equations" from 2006 to 2013. The
investigations were motivated by the fascinating potential
applications and challenging mathematical problems that arise in
the field of PDE constrained optimization. New analytic and
algorithmic paradigms have been developed, implemented and
validated in the context of real-world applications. In this
special volume, contributions from more than fifteen German
universities combine the results of this interdisciplinary program
with a focus on applied mathematics. The book is divided into five
sections on "Constrained Optimization, Identification and Control",
"Shape and Topology Optimization", "Adaptivity and Model
Reduction", "Discretization: Concepts and Analysis" and
"Applications". Peer-reviewed research articles present the most
recent results in the field of PDE constrained optimization and
control problems. Informative survey articles give an overview of
topics that set sustainable trends for future research. This makes
this special volume interesting not only for mathematicians, but
also for engineers and for natural and medical scientists working
on processes that can be modeled by PDEs.
Simulation based on mathematical models plays a major role in
computer aided design of integrated circuits (ICs). Decreasing
structure sizes, increasing packing densities and driving
frequencies require the use of refined mathematical models, and to
take into account secondary, parasitic effects. This leads to very
high dimensional problems which nowadays require simulation times
too large for the short time-to-market demands in industry. Modern
Model Order Reduction (MOR) techniques present a way out of this
dilemma in providing surrogate models which keep the main
characteristics of the device while requiring a significantly lower
simulation time than the full model. With Model Reduction for
Circuit Simulation we survey the state of the art in the
challenging research field of MOR for ICs, and also address its
future research directions. Special emphasis is taken on aspects
stemming from miniturisations to the nano scale. Contributions
cover complexity reduction using e.g., balanced truncation,
Krylov-techniques or POD approaches. For semiconductor applications
a focus is on generalising current techniques to
differential-algebraic equations, on including design parameters,
on preserving stability, and on including nonlinearity by means of
piecewise linearisations along solution trajectories (TPWL) and
interpolation techniques for nonlinear parts. Furthermore the
influence of interconnects and power grids on the physical
properties of the device is considered, and also top-down system
design approaches in which detailed block descriptions are combined
with behavioral models. Further topics consider MOR and the
combination of approaches from optimisation and statistics, and the
inclusion of PDE models with emphasis on MOR for the resulting
partial differential algebraic systems. The methods which currently
are being developed have also relevance in other application areas
such as mechanical multibody systems, and systems arising in
chemistry and to biology. The current number of books in the area
of MOR for ICs is very limited, so that this volume helps to fill a
gap in providing the state of the art material, and to stimulate
further research in this area of MOR. Model Reduction for Circuit
Simulation also reflects and documents the vivid interaction
between three active research projects in this area, namely the
EU-Marie Curie Action ToK project O-MOORE-NICE (members in Belgium,
The Netherlands and Germany), the EU-Marie Curie Action RTN-project
COMSON (members in The Netherlands, Italy, Germany, and Romania),
and the German federal project System reduction in nano-electronics
(SyreNe).
This special volume focuses on optimization and control of
processes governed by partial differential equations. The
contributors are mostly participants of the DFG-priority program
1253: Optimization with PDE-constraints which is active since 2006.
The book is organized in sections which cover almost the entire
spectrum of modern research in this emerging field. Indeed, even
though the field of optimal control and optimization for
PDE-constrained problems has undergone a dramatic increase of
interest during the last four decades, a full theory for nonlinear
problems is still lacking. The contributions of this volume, some
of which have the character of survey articles, therefore, aim at
creating and developing further new ideas for optimization, control
and corresponding numerical simulations of systems of possibly
coupled nonlinear partial differential equations. The research
conducted within this unique network of groups in more than fifteen
German universities focuses on novel methods of optimization,
control and identification for problems in infinite-dimensional
spaces, shape and topology problems, model reduction and
adaptivity, discretization concepts and important applications.
Besides the theoretical interest, the most prominent question is
about the effectiveness of model-based numerical optimization
methods for PDEs versus a black-box approach that uses existing
codes, often heuristic-based, for optimization.
This contributed volume presents some of the latest research
related to model order reduction of complex dynamical systems with
a focus on time-dependent problems. Chapters are written by leading
researchers and users of model order reduction techniques and are
based on presentations given at the 2019 edition of the workshop
series Model Reduction of Complex Dynamical Systems - MODRED, held
at the University of Graz in Austria. The topics considered can be
divided into five categories: system-theoretic methods, such as
balanced truncation, Hankel norm approximation, and reduced-basis
methods; data-driven methods, including Loewner matrix and
pencil-based approaches, dynamic mode decomposition, and
kernel-based methods; surrogate modeling for design and
optimization, with special emphasis on control and data
assimilation; model reduction methods in applications, such as
control and network systems, computational electromagnetics,
structural mechanics, and fluid dynamics; and model order reduction
software packages and benchmarks. This volume will be an ideal
resource for graduate students and researchers in all areas of
model reduction, as well as those working in applied mathematics
and theoretical informatics.
Solving optimization problems subject to constraints given in terms
of partial d- ferential equations (PDEs) with additional
constraints on the controls and/or states is one of the most
challenging problems in the context of industrial, medical and
economical applications, where the transition from model-based
numerical si- lations to model-based design and optimal control is
crucial. For the treatment of such optimization problems the
interaction of optimization techniques and num- ical simulation
plays a central role. After proper discretization, the number of
op- 3 10 timization variables varies between 10 and 10 . It is only
very recently that the enormous advances in computing power have
made it possible to attack problems of this size. However, in order
to accomplish this task it is crucial to utilize and f- ther
explore the speci?c mathematical structure of optimization problems
with PDE constraints, and to develop new mathematical approaches
concerning mathematical analysis, structure exploiting algorithms,
and discretization, with a special focus on prototype applications.
The present book provides a modern introduction to the rapidly
developing ma- ematical ?eld of optimization with PDE constraints.
The ?rst chapter introduces to the analytical background and
optimality theory for optimization problems with PDEs. Optimization
problems with PDE-constraints are posed in in?nite dim- sional
spaces. Therefore, functional analytic techniques, function space
theory, as well as existence- and uniqueness results for the
underlying PDE are essential to study the existence of optimal
solutions and to derive optimality conditions.
Optimization problems subject to constraints governed by partial
differential equations (PDEs) are among the most challenging
problems in the context of industrial, economical and medical
applications. Almost the entire range of problems in this field of
research was studied and further explored as part of the Deutsche
Forschungsgemeinschaft (DFG) priority program 1253 on "Optimization
with Partial Differential Equations" from 2006 to 2013. The
investigations were motivated by the fascinating potential
applications and challenging mathematical problems that arise in
the field of PDE constrained optimization. New analytic and
algorithmic paradigms have been developed, implemented and
validated in the context of real-world applications. In this
special volume, contributions from more than fifteen German
universities combine the results of this interdisciplinary program
with a focus on applied mathematics. The book is divided into five
sections on "Constrained Optimization, Identification and Control",
"Shape and Topology Optimization", "Adaptivity and Model
Reduction", "Discretization: Concepts and Analysis" and
"Applications". Peer-reviewed research articles present the most
recent results in the field of PDE constrained optimization and
control problems. Informative survey articles give an overview of
topics that set sustainable trends for future research. This makes
this special volume interesting not only for mathematicians, but
also for engineers and for natural and medical scientists working
on processes that can be modeled by PDEs.
This special volume focuses on optimization and control of
processes governed by partial differential equations. The
contributors are mostly participants of the DFG-priority program
1253: Optimization with PDE-constraints which is active since 2006.
The book is organized in sections which cover almost the entire
spectrum of modern research in this emerging field. Indeed, even
though the field of optimal control and optimization for
PDE-constrained problems has undergone a dramatic increase of
interest during the last four decades, a full theory for nonlinear
problems is still lacking. The contributions of this volume, some
of which have the character of survey articles, therefore, aim at
creating and developing further new ideas for optimization, control
and corresponding numerical simulations of systems of possibly
coupled nonlinear partial differential equations. The research
conducted within this unique network of groups in more than fifteen
German universities focuses on novel methods of optimization,
control and identification for problems in infinite-dimensional
spaces, shape and topology problems, model reduction and
adaptivity, discretization concepts and important applications.
Besides the theoretical interest, the most prominent question is
about the effectiveness of model-based numerical optimization
methods for PDEs versus a black-box approach that uses existing
codes, often heuristic-based, for optimization.
Simulation based on mathematical models plays a major role in
computer aided design of integrated circuits (ICs). Decreasing
structure sizes, increasing packing densities and driving
frequencies require the use of refined mathematical models, and to
take into account secondary, parasitic effects. This leads to very
high dimensional problems which nowadays require simulation times
too large for the short time-to-market demands in industry. Modern
Model Order Reduction (MOR) techniques present a way out of this
dilemma in providing surrogate models which keep the main
characteristics of the device while requiring a significantly lower
simulation time than the full model. With Model Reduction for
Circuit Simulation we survey the state of the art in the
challenging research field of MOR for ICs, and also address its
future research directions. Special emphasis is taken on aspects
stemming from miniturisations to the nano scale. Contributions
cover complexity reduction using e.g., balanced truncation,
Krylov-techniques or POD approaches. For semiconductor applications
a focus is on generalising current techniques to
differential-algebraic equations, on including design parameters,
on preserving stability, and on including nonlinearity by means of
piecewise linearisations along solution trajectories (TPWL) and
interpolation techniques for nonlinear parts. Furthermore the
influence of interconnects and power grids on the physical
properties of the device is considered, and also top-down system
design approaches in which detailed block descriptions are combined
with behavioral models. Further topics consider MOR and the
combination of approaches from optimisation and statistics, and the
inclusion of PDE models with emphasis on MOR for the resulting
partial differential algebraic systems. The methods which currently
are being developed have also relevance in other application areas
such as mechanical multibody systems, and systems arising in
chemistry and to biology. The current number of books in the area
of MOR for ICs is very limited, so that this volume helps to fill a
gap in providing the state of the art material, and to stimulate
further research in this area of MOR. Model Reduction for Circuit
Simulation also reflects and documents the vivid interaction
between three active research projects in this area, namely the
EU-Marie Curie Action ToK project O-MOORE-NICE (members in Belgium,
The Netherlands and Germany), the EU-Marie Curie Action RTN-project
COMSON (members in The Netherlands, Italy, Germany, and Romania),
and the German federal project System reduction in nano-electronics
(SyreNe).
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