1.

Record Nr.

UNINA9910997096203321

Autore

Chen Nan

Titolo

Stochastic Methods for Modeling and Predicting Complex Dynamical Systems : Uncertainty Quantification, State Estimation, and Reduced-Order Models / / by Nan Chen

Pubbl/distr/stampa

Cham : , : Springer Nature Switzerland : , : Imprint : Springer, , 2025

ISBN

9783031819247

3031819241

Edizione

[2nd ed. 2025.]

Descrizione fisica

1 online resource (369 pages)

Collana

Synthesis Lectures on Mathematics & Statistics, , 1938-1751

Disciplina

515.39

Soggetti

Stochastic processes

Stochastic models

System theory

Mathematics

Artificial intelligence - Data processing

Computer science

Stochastic Systems and Control

Stochastic Modelling

Complex Systems

Applications of Mathematics

Data Science

Models of Computation

Lingua di pubblicazione

Inglese

Formato

Materiale a stampa

Livello bibliografico

Monografia

Nota di contenuto

Stochastic Toolkits -- Introduction to Information Theory -- Basic Stochastic Computational Methods -- Simple Gaussian and Non-Gaussian SDEs -- Data Assimilation -- Optimal Control -- Prediction -- Data-Driven Low-Order Stochastic Models -- Conditional Gaussian Nonlinear Systems -- Parameter Estimation with Uncertainty Quantification -- Combining Stochastic Models with Machine Learning -- Instruction Manual for the MATLAB Codes.

Sommario/riassunto

This second edition is an essential guide to understanding, modeling, and predicting complex dynamical systems using new methods with



stochastic tools. Expanding upon the original book, the author covers a unique combination of qualitative and quantitative modeling skills, novel efficient computational methods, rigorous mathematical theory, as well as physical intuitions and thinking. The author presents mathematical tools for understanding, modeling, and predicting complex dynamical systems using various suitable stochastic tools. The book provides practical examples and motivations when introducing these tools, merging mathematics, statistics, information theory, computational science, and data science. The author emphasizes the balance between computational efficiency and modeling accuracy while equipping readers with the skills to choose and apply stochastic tools to a wide range of disciplines. This second edition includes updated discussion of combining stochastic models with machine learning and addresses several additional topics, including importance sampling, regression, and maximum likelihood estimate. The author also introduces a new chapter on optimal control. In addition, this book: Covers key topics in modeling and prediction, such as extreme events, high-dimensional systems, and multiscale features Discusses applications for various disciplines including math, physics, engineering, neural science, and ocean science Includes MATLABĀ® codes for the provided examples to help readers better understand and apply the concepts About the Author Nan Chen, Ph.D., is an Associate Professor at the Department of Mathematics, University of Wisconsin-Madison. He is also a faculty affiliate of the Institute for Foundations of Data Science.