Dynamic Mode Decomposition


Data-Driven Modeling of Complex Systems

Price:
Sale price$177.00
Stock:
Temporarily out of stock. Order now & we'll deliver when available

By J. Nathan Kutz, Steven L. Brunton, Bingni W. Brunton, Joshua L. Proctor
Imprint:
SIAM - SOCIETY FOR INDUSTRIAL AND APPLIED
Release Date:
Format:
PAPERBACK
Dimensions:
229 x 152 mm
Weight:
550 g
Pages:
250

Request Academic Copy

Button Actions

Please copy the ISBN for submitting review copy form

Description

J. Nathan Kutz is the Robert Bolles and Yasuko Endo Professor of Applied Mathematics, Adjunct Professor of Physics and Electrical Engineering, and Senior Data Science Fellow with the eScience Institute at the University of Washington. Steven L. Brunton is an Assistant Professor of Mechanical Engineering, Adjunct Assistant Professor of Applied Mathematics, and a Data Science Fellow with the eScience Institute at the University of Washington. Bingni W. Brunton is the Washington Research Foundation Innovation Assistant Professor of Biology and a Data Science Fellow with the eScience Institute at the University of Washington. Joshua L. Proctor is an Associate Principal Investigator with the Institute for Disease Modeling, Washington, as well as Affiliate Assistant Professor of Applied Mathematics and Mechanical Engineering at the University of Washington.

Preface Notations Acronyms Chapter 1: Dynamic Mode Decomposition: An Introduction Chapter 2: Fluid Dynamics Chapter 3: Koopman Analysis Chapter 4: Video Processing Chapter 5: Multiresolution DMD Chapter 6: DMD with Control Chapter 7: Delay Coordinates, ERA, and Hidden Markov Models Chapter 8: Noise and Power Chapter 9: Sparsity and DMD Chapter 10: DMD on Nonlinear Observables Chapter 11: Epidemiology Chapter 12: Neuroscience Chapter 13: Financial Trading Glossary Bibliography Index.

You may also like

Recently viewed