Extracting Knowledge From Time Series
An Introduction to Nonlinear Empirical Modeling
(Sprache: Englisch)
Mathematical modelling is ubiquitous. Almost every book in exact science touches on mathematical models of a certain class of phenomena, on more or less speci?c approaches to construction and investigation of models, on their applications, etc. As many...
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Klappentext zu „Extracting Knowledge From Time Series “
Mathematical modelling is ubiquitous. Almost every book in exact science touches on mathematical models of a certain class of phenomena, on more or less speci?c approaches to construction and investigation of models, on their applications, etc. As many textbooks with similar titles, Part I of our book is devoted to general qu- tions of modelling. Part II re?ects our professional interests as physicists who spent much time to investigations in the ?eld of non-linear dynamics and mathematical modelling from discrete sequences of experimental measurements (time series). The latter direction of research is known for a long time as "system identi?cation" in the framework of mathematical statistics and automatic control theory. It has its roots in the problem of approximating experimental data points on a plane with a smooth curve. Currently, researchers aim at the description of complex behaviour (irregular, chaotic, non-stationary and noise-corrupted signals which are typical of real-world objects and phenomena) with relatively simple non-linear differential or difference model equations rather than with cumbersome explicit functions of time. In the second half of the twentieth century, it has become clear that such equations of a s- ?ciently low order can exhibit non-trivial solutions that promise suf?ciently simple modelling of complex processes; according to the concepts of non-linear dynamics, chaotic regimes can be demonstrated already by a third-order non-linear ordinary differential equation, while complex behaviour in a linear model can be induced either by random in?uence (noise) or by a very high order of equations.
This book addresses the fundamental question on how to construct mathematical models for the evolution of dynamical systems from experimentally obtained time series.
Emphasis is on chaotic signals and nonlinear modeling, with the aim to obtain a quantitative measure for the forecast of future system evolution. In particular, the reader will learn how to construct difference and differential model equations depending on the amount of a priori information that is available on the system in addition to the experimental data sets.
This book will benefit graduate students and researchers from all natural sciences alike, who seek a self-contained and thorough introduction to this subject.
Emphasis is on chaotic signals and nonlinear modeling, with the aim to obtain a quantitative measure for the forecast of future system evolution. In particular, the reader will learn how to construct difference and differential model equations depending on the amount of a priori information that is available on the system in addition to the experimental data sets.
This book will benefit graduate students and researchers from all natural sciences alike, who seek a self-contained and thorough introduction to this subject.
Inhaltsverzeichnis zu „Extracting Knowledge From Time Series “
- Introduction - Part I: Modeling and Forecast
- The concept of mathematical modelling
- Two approaches to Modeling and Forecast
- Deterministic Models of dynamical evolution
- Stochastic Models of dynamical evolution
- Part II Modeling from Data Series
- Problem settings
- Sources of data
- Reconstruction of explicit temporal dependencies
- Model equations: parameter estimation
- Model equations : reconstruction of nonlinear characteristics
- Reconstruction of equations
- Selected empirical models
- References
- Index
Bibliographische Angaben
- Autoren: Boris P. Bezruchko , Dmitry A. Smirnov
- 2010, XXII, 410 Seiten, Maße: 16 x 24,1 cm, Gebunden, Englisch
- Verlag: Springer, Berlin
- ISBN-10: 3642126006
- ISBN-13: 9783642126000
- Erscheinungsdatum: 05.09.2010
Sprache:
Englisch
Rezension zu „Extracting Knowledge From Time Series “
From the reviews:"Extracting knowledge from time series is a very neat title-it exactly encapsulates the topic which the authors hope to cover in this volume. ... This is admirable, and the result is valuable. ... This is overall a useful volume for providing an overview of the area ... ." (Michael Small, Mathematical Reviews, Issue 2012 d)
"Another book on time-series! ... it is a textbook for physicists and practitioners, and in this way of thought it is welcome. Its main purpose is to explain and illustrate how time series can be used to construct mathematical models for dynamical systems. ... step by step the applications supports the presentation of the basic theoretical formulation." (Guy Jumarie, Zentralblatt MATH, Vol. 1210, 2011)
Pressezitat
From the reviews:"Extracting knowledge from time series is a very neat title-it exactly encapsulates the topic which the authors hope to cover in this volume. ... This is admirable, and the result is valuable. ... This is overall a useful volume for providing an overview of the area ... ." (Michael Small, Mathematical Reviews, Issue 2012 d)
"Another book on time-series! ... it is a textbook for physicists and practitioners, and in this way of thought it is welcome. Its main purpose is to explain and illustrate how time series can be used to construct mathematical models for dynamical systems. ... step by step the applications supports the presentation of the basic theoretical formulation." (Guy Jumarie, Zentralblatt MATH, Vol. 1210, 2011)
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