Perspectives in Flow Control and Optimization

Perspectives in Flow Control and Optimization
Author :
Publisher : SIAM
Total Pages : 275
Release :
ISBN-10 : 0898718724
ISBN-13 : 9780898718720
Rating : 4/5 (24 Downloads)

Synopsis Perspectives in Flow Control and Optimization by : Max D. Gunzburger

Flow control and optimization has been an important part of experimental flow science throughout the last century. As research in computational fluid dynamics (CFD) matured, CFD codes were routinely used for the simulation of fluid flows. Subsequently, mathematicians and engineers began examining the use of CFD algorithms and codes for optimization and control problems for fluid flows. Perspectives in Flow Control and Optimization presents flow control and optimization as a subdiscipline of computational mathematics and computational engineering. It introduces the development and analysis of several approaches for solving flow control and optimization problems through the use of modern CFD and optimization methods. The author discusses many of the issues that arise in the practical implementation of algorithms for flow control and optimization, and provides the reader with a clear idea of what types of flow control and optimization problems can be solved, how to develop effective algorithms for solving such problems, and potential problems in implementing the algorithms. Audience: this book is written for both those new to the field of control and optimization as well as experienced practitioners, including engineers, applied mathematicians, and scientists interested in computational methods for flow control and optimization. Readers with a solid background in calculus and only slight familiarity with partial differential equations should find the book easy to understand. Knowledge of fluid mechanics, computational fluid dynamics, calculus of variations, control theory or optimization is beneficial, but is not essential, to comprehend the bulk of the presentation. Only Chapter 6 requires a substantially higher level of mathematical knowledge, most notably in the areas of functional analysis, numerical analysis, and partial differential equations.

Flow Control

Flow Control
Author :
Publisher :
Total Pages : 400
Release :
ISBN-10 : 1461225272
ISBN-13 : 9781461225270
Rating : 4/5 (72 Downloads)

Synopsis Flow Control by : Max D Gunzburger

Flow Control

Flow Control
Author :
Publisher : Springer
Total Pages : 408
Release :
ISBN-10 : UOM:39015034265499
ISBN-13 :
Rating : 4/5 (99 Downloads)

Synopsis Flow Control by : Max D. Gunzburger

The articles in this volume cover recent work in the area of flow control from the point of view of both engineers and mathematicians. These writings are especially timely, as they coincide with the emergence of the role of mathematics and systematic engineering analysis in flow control and optimization. Recently this role has significantly expanded to the point where now sophisticated mathematical and computational tools are being increasingly applied to the control and optimization of fluid flows. These articles document some important work that has gone on to influence the practical, everyday design of flows; moreover, they represent the state of the art in the formulation, analysis, and computation of flow control problems. This volume will be of interest to both applied mathematicians and to engineers.

Applied Stochastic Processes and Control for Jump Diffusions

Applied Stochastic Processes and Control for Jump Diffusions
Author :
Publisher : SIAM
Total Pages : 461
Release :
ISBN-10 : 9780898716337
ISBN-13 : 0898716330
Rating : 4/5 (37 Downloads)

Synopsis Applied Stochastic Processes and Control for Jump Diffusions by : Floyd B. Hanson

A practical, entry-level text integrating the basic principles of applied mathematics and probability, and computational science.

The Shapes of Things

The Shapes of Things
Author :
Publisher : SIAM
Total Pages : 156
Release :
ISBN-10 : 9781611973969
ISBN-13 : 1611973961
Rating : 4/5 (69 Downloads)

Synopsis The Shapes of Things by : Shawn W. Walker

Many things around us have properties that depend on their shape--for example, the drag characteristics of a rigid body in a flow. This self-contained overview of differential geometry explains how to differentiate a function (in the calculus sense) with respect to a "shape variable." This approach, which is useful for understanding mathematical models containing geometric partial differential equations (PDEs), allows readers to obtain formulas for geometric quantities (such as curvature) that are clearer than those usually offered in differential geometry texts. Readers will learn how to compute sensitivities with respect to geometry by developing basic calculus tools on surfaces and combining them with the calculus of variations. Several applications that utilize shape derivatives and many illustrations that help build intuition are included.

Nonlinear Output Regulation

Nonlinear Output Regulation
Author :
Publisher : SIAM
Total Pages : 330
Release :
ISBN-10 : 9780898715620
ISBN-13 : 0898715628
Rating : 4/5 (20 Downloads)

Synopsis Nonlinear Output Regulation by : Jie Huang

This book provides a comprehensive and in-depth treatment of the nonlinear output regulation problem.

Stability and Stabilization of Time-Delay Systems

Stability and Stabilization of Time-Delay Systems
Author :
Publisher : SIAM
Total Pages : 383
Release :
ISBN-10 : 9780898716320
ISBN-13 : 0898716322
Rating : 4/5 (20 Downloads)

Synopsis Stability and Stabilization of Time-Delay Systems by : Wim Michiels

An overall solution to the (robust) stability analysis and stabilisation problem of linear time-delay systems.

Model Reduction of Nonlinear Mechanical Systems Via Optimal Projection and Tensor Approximation

Model Reduction of Nonlinear Mechanical Systems Via Optimal Projection and Tensor Approximation
Author :
Publisher : Stanford University
Total Pages : 130
Release :
ISBN-10 : STANFORD:td542hm2304
ISBN-13 :
Rating : 4/5 (04 Downloads)

Synopsis Model Reduction of Nonlinear Mechanical Systems Via Optimal Projection and Tensor Approximation by : Kevin Thomas Carlberg

Despite the advent and maturation of high-performance computing, high-fidelity physics-based numerical simulations remain computationally intensive in many fields. As a result, such simulations are often impractical for time-critical applications such as fast-turnaround design, control, and uncertainty quantification. The objective of this thesis is to enable rapid, accurate analysis of high-fidelity nonlinear models to enable their use in time-critical settings. Model reduction presents a promising approach for realizing this goal. This class of methods generates low-dimensional models that preserves key features of the high-fidelity model. Such methods have been shown to generate fast, accurate solutions when applied to specialized problems such as linear time-invariant systems. However, model reduction techniques for highly nonlinear systems has been limited primarily to approaches based on the heuristic proper orthogonal decomposition (POD)--Galerkin approach. These methods often generate inaccurate responses because 1) POD--Galerkin does not generally minimize any measure of the system error, and 2) the POD basis is not constructed to minimize errors in the system's outputs of interest. Furthermore, simulation times for these models usually remain large, as reducing the dimension of a nonlinear system does not necessarily reduce its computational complexity. This thesis presents two model reduction techniques that addresses these shortcomings of the POD--Galerkin method. The first method is a `compact POD' approach for computing the small-dimensional trial basis; this approach is applicable to parameterized static systems. The compact POD basis is constructed using a goal-oriented framework that allows sensitivity derivatives to be employed as snapshots. The second method is a Gauss--Newton with approximated tensors (GNAT) method applicable to nonlinear systems. Similar to other POD-based approaches, the GNAT method first executes high-fidelity simulations during a costly `offline' stage; it computes a POD subspace that optimally represents the state as observed during these simulations. To compute fast, accurate `online' solutions, the method introduces two approximations that satisfy optimality and consistency conditions. First, the method decreases the system dimension by searching for the solutions in the low-dimensional POD subspace. As opposed to performing a Galerkin projection, the method handles the resulting overdetermined system of equations arising at each time step by formulating a least-squares problem; this ensures that a measure of the system error (i.e. the residual) is minimized. Second, the method decreases the model's computational complexity by approximating the residual and Jacobian using the `gappy POD' technique; this requires computing only a few rows of the approximated quantities. For computational mechanics problems, the GNAT method leads to the concept of a sample mesh: the subset of the mesh needed to compute the selected rows of the residual and Jacobian. Because the reduced-order model uses only the sample mesh for computations, the online stage requires minimal computational resources.

Parallel Processing for Scientific Computing

Parallel Processing for Scientific Computing
Author :
Publisher : SIAM
Total Pages : 421
Release :
ISBN-10 : 0898718139
ISBN-13 : 9780898718133
Rating : 4/5 (39 Downloads)

Synopsis Parallel Processing for Scientific Computing by : Michael A. Heroux

Parallel processing has been an enabling technology in scientific computing for more than 20 years. This book is the first in-depth discussion of parallel computing in 10 years; it reflects the mix of topics that mathematicians, computer scientists, and computational scientists focus on to make parallel processing effective for scientific problems. Presently, the impact of parallel processing on scientific computing varies greatly across disciplines, but it plays a vital role in most problem domains and is absolutely essential in many of them. Parallel Processing for Scientific Computing is divided into four parts: The first concerns performance modeling, analysis, and optimization; the second focuses on parallel algorithms and software for an array of problems common to many modeling and simulation applications; the third emphasizes tools and environments that can ease and enhance the process of application development; and the fourth provides a sampling of applications that require parallel computing for scaling to solve larger and realistic models that can advance science and engineering.