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Predicting the Future
Details
This book discusses model building and evaluation across disciplines, by means of an exact path integral for transferring information from observations to a model of the observed system. Offers examples in geosciences, nonlinear electrical circuits and more.
Through the development of an exact path integral for use in transferring information from observations to a model of the observed system, the author provides a general framework for the discussion of model building and evaluation across disciplines. Through many illustrative examples drawn from models in neuroscience, geosciences, and nonlinear electrical circuits, the concepts are exemplified in detail. Practical numerical methods for approximate evaluations of the path integral are explored, and their use in designing experiments and determining a model's consistency with observations is explored.
Formulates long standing state and parameter estimation problems Explores numerous examples drawn from a broad interdisciplinary collection of scholarly subjects Proposes a universal approach with practical examples to bolster significant advances in solving the problems of model determination and parameter estimation Includes supplementary material: sn.pub/extras
Autorentext
Henry Abarbanel is a new member of the Springer Complexity Board. He is a Professor of Physics at UCSD in La Jolla, CA. http: //neurograd.ucsd.edu/faculty/detail.php?id=1
Klappentext
Predicting the Future: Completing Models of Observed Complex Systems provides a general framework for the discussion of model building and validation across a broad spectrum of disciplines. This is accomplished through the development of an exact path integral for use in transferring information from observations to a model of the observed system. Through many illustrative examples drawn from models in neuroscience, fluid dynamics, geosciences, and nonlinear electrical circuits, the concepts are exemplified in detail. Practical numerical methods for approximate evaluations of the path integral are explored, and their use in designing experiments and determining a model's consistency with observations is investigated.
Using highly instructive examples, the problems of data assimilation and the means to treat them are clearly illustrated. This book will be useful for students and practitioners of physics, neuroscience, regulatory networks, meteorology and climate science, network dynamics, fluid dynamics, and other systematic investigations of complex systems.
Inhalt
Preface.- 1 An Overview; The Challenge of Complex Systems.- 2 Examples as a Guide to the Issues.- 3 General Formulation of Statistical Data Assimilation.- 4 Evaluating the Path Integral.- 5 Twin Experiments.- 6 Analysis of Experimental Data.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09781493952380
- Genre Maths
- Auflage Softcover reprint of the original 1st ed. 2013
- Sprache Englisch
- Lesemotiv Verstehen
- Anzahl Seiten 238
- Herausgeber Springer
- Größe H14mm x B155mm x T235mm
- Jahr 2016
- EAN 9781493952380
- Format Kartonierter Einband
- ISBN 978-1-4939-5238-0
- Titel Predicting the Future
- Autor Henry Abarbanel
- Untertitel Completing Models of Observed Complex Systems
- Gewicht 394g