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9781611974492 Academic Inspection Copy

Dynamic Mode Decomposition

Data-Driven Modeling of Complex Systems
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Data-driven dynamical systems is a burgeoning field - it connects how measurements of nonlinear dynamical systems and/or complex systems can be used with well-established methods in dynamical systems theory. This is a critically important new direction because the governing equations of many problems under consideration by practitioners in various scientific fields are not typically known. Thus, using data alone to help derive, in an optimal sense, the best dynamical system representation of a given application allows for important new insights. The recently developed dynamic mode decomposition (DMD) is an innovative tool for integrating data with dynamical systems theory. The DMD has deep connections with traditional dynamical systems theory and many recent innovations in compressed sensing and machine learning. Dynamic Mode Decomposition is the first book to address the DMD algorithm, it: Presents a pedagogical and comprehensive approach to all aspects of DMD currently developed or under development. Blends theoretical development, example codes, and applications to showcase the theory and its many innovations and uses. Highlights the numerous innovations around the DMD algorithm and demonstrates its efficacy using example problems from engineering and the physical and biological sciences. Provides extensive MATLAB code, data for intuitive examples of key methods, and graphical presentations.
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.
The first book to address the DMD algorithm and present a pedagogical approach to aspects of DMD currently or under development.
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