Developments in Model-Based Optimization and Control

Distributed Control and Industrial Applications

Nonfiction, Science & Nature, Technology, Automation, Mathematics, Calculus
Cover of the book Developments in Model-Based Optimization and Control 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: 9783319266879
Publisher: Springer International Publishing Publication: December 23, 2015
Imprint: Springer Language: English
Author:
ISBN: 9783319266879
Publisher: Springer International Publishing
Publication: December 23, 2015
Imprint: Springer
Language: English

This book deals with optimization methods as tools for decision making and control in the presence of model uncertainty. It is oriented to the use of these tools in engineering, specifically in automatic control design with all its components: analysis of dynamical systems, identification problems, and feedback control design.

Developments in Model-Based Optimization and Control takes advantage of optimization-based formulations for such classical feedback design objectives as stability, performance and feasibility, afforded by the established body of results and methodologies constituting optimal control theory. It makes particular use of the popular formulation known as predictive control or receding-horizon optimization.

The individual contributions in this volume are wide-ranging in subject matter but coordinated within a five-part structure covering material on:

· complexity and structure in model predictive control (MPC);

· collaborative MPC;

· distributed MPC;

· optimization-based analysis and design; and

· applications to bioprocesses, multivehicle systems or energy management.

The various contributions cover a subject spectrum including inverse optimality and more modern decentralized and cooperative formulations of receding-horizon optimal control. Readers will find fourteen chapters dedicated to optimization-based tools for robustness analysis, and decision-making in relation to feedback mechanisms—fault detection, for example—and three chapters putting forward applications where the model-based optimization brings a novel perspective.

Developments in Model-Based Optimization and Control is a selection of contributions expanded and updated from the Optimisation-based Control and Estimation workshops held in November 2013 and November 2014. It forms a useful resource for academic researchers and graduate students interested in the state of the art in predictive control. Control engineers working in model-based optimization and control, particularly in its bioprocess applications will also find this collection instructive.

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

This book deals with optimization methods as tools for decision making and control in the presence of model uncertainty. It is oriented to the use of these tools in engineering, specifically in automatic control design with all its components: analysis of dynamical systems, identification problems, and feedback control design.

Developments in Model-Based Optimization and Control takes advantage of optimization-based formulations for such classical feedback design objectives as stability, performance and feasibility, afforded by the established body of results and methodologies constituting optimal control theory. It makes particular use of the popular formulation known as predictive control or receding-horizon optimization.

The individual contributions in this volume are wide-ranging in subject matter but coordinated within a five-part structure covering material on:

· complexity and structure in model predictive control (MPC);

· collaborative MPC;

· distributed MPC;

· optimization-based analysis and design; and

· applications to bioprocesses, multivehicle systems or energy management.

The various contributions cover a subject spectrum including inverse optimality and more modern decentralized and cooperative formulations of receding-horizon optimal control. Readers will find fourteen chapters dedicated to optimization-based tools for robustness analysis, and decision-making in relation to feedback mechanisms—fault detection, for example—and three chapters putting forward applications where the model-based optimization brings a novel perspective.

Developments in Model-Based Optimization and Control is a selection of contributions expanded and updated from the Optimisation-based Control and Estimation workshops held in November 2013 and November 2014. It forms a useful resource for academic researchers and graduate students interested in the state of the art in predictive control. Control engineers working in model-based optimization and control, particularly in its bioprocess applications will also find this collection instructive.

More books from Springer International Publishing

Cover of the book Social Entrepreneurship and Tourism by
Cover of the book Tensor Calculus for Engineers and Physicists by
Cover of the book Advances in Gender and Cultural Research in Business and Economics by
Cover of the book Company Law and the Law of Succession by
Cover of the book Models for Cooperative Games with Fuzzy Relations among the Agents by
Cover of the book Geostatistics Valencia 2016 by
Cover of the book Quantitative Approaches in Logistics and Supply Chain Management by
Cover of the book Simulation Studies of Recombination Kinetics and Spin Dynamics in Radiation Chemistry by
Cover of the book Differential Diagnosis of Movement Disorders in Clinical Practice by
Cover of the book Convex Functions and Their Applications by
Cover of the book Parasitic Protozoa of Farm Animals and Pets by
Cover of the book Urban Morphology by
Cover of the book Understanding Flood Preparedness by
Cover of the book Knowledge Management in Digital Change by
Cover of the book Hadron Structure in Electroweak Precision Measurements 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