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Deterministic and Stochastic Optimal Control 1975. Corr. 2nd Edition
Contributor(s): Fleming, Wendell H. (Author), Rishel, Raymond W. (Author)
ISBN: 0387901558     ISBN-13: 9780387901558
Publisher: Springer
OUR PRICE:   $189.99  
Product Type: Hardcover - Other Formats
Published: November 1975
Qty:
Additional Information
BISAC Categories:
- Gardening
- Technology & Engineering | Robotics
- Science | System Theory
Dewey: 515.64
LCCN: 75028391
Series: Ergebnisse der Mathematik Und Ihrer Grenzgebiete
Physical Information: 0.73" H x 6.34" W x 9.52" (1.10 lbs) 222 pages
 
Descriptions, Reviews, Etc.
Publisher Description:
This book may be regarded as consisting of two parts. In Chapters I-IV we pre- sent what we regard as essential topics in an introduction to deterministic optimal control theory. This material has been used by the authors for one semester graduate-level courses at Brown University and the University of Kentucky. The simplest problem in calculus of variations is taken as the point of departure, in Chapter I. Chapters II, III, and IV deal with necessary conditions for an opti- mum, existence and regularity theorems for optimal controls, and the method of dynamic programming. The beginning reader may find it useful first to learn the main results, corollaries, and examples. These tend to be found in the earlier parts of each chapter. We have deliberately postponed some difficult technical proofs to later parts of these chapters. In the second part of the book we give an introduction to stochastic optimal control for Markov diffusion processes. Our treatment follows the dynamic pro- gramming method, and depends on the intimate relationship between second- order partial differential equations of parabolic type and stochastic differential equations. This relationship is reviewed in Chapter V, which may be read inde- pendently of Chapters I-IV. Chapter VI is based to a considerable extent on the authors' work in stochastic control since 1961. It also includes two other topics important for applications, namely, the solution to the stochastic linear regulator and the separation principle.