Multiscale Analysis of Complex Time Series

Multiscale Analysis of Complex Time Series
Title Multiscale Analysis of Complex Time Series PDF eBook
Author Jianbo Gao
Publisher John Wiley & Sons
Pages 368
Release 2007-12-04
Genre Mathematics
ISBN 0470191643

Download Multiscale Analysis of Complex Time Series Book in PDF, Epub and Kindle

The only integrative approach to chaos and random fractal theory Chaos and random fractal theory are two of the most important theories developed for data analysis. Until now, there has been no single book that encompasses all of the basic concepts necessary for researchers to fully understand the ever-expanding literature and apply novel methods to effectively solve their signal processing problems. Multiscale Analysis of Complex Time Series fills this pressing need by presenting chaos and random fractal theory in a unified manner. Adopting a data-driven approach, the book covers: DNA sequence analysis EEG analysis Heart rate variability analysis Neural information processing Network traffic modeling Economic time series analysis And more Additionally, the book illustrates almost every concept presented through applications and a dedicated Web site is available with source codes written in various languages, including Java, Fortran, C, and MATLAB, together with some simulated and experimental data. The only modern treatment of signal processing with chaos and random fractals unified, this is an essential book for researchers and graduate students in electrical engineering, computer science, bioengineering, and many other fields.

Multiscale Signal Analysis and Modeling

Multiscale Signal Analysis and Modeling
Title Multiscale Signal Analysis and Modeling PDF eBook
Author Xiaoping Shen
Publisher Springer Science & Business Media
Pages 388
Release 2012-09-18
Genre Technology & Engineering
ISBN 1461441455

Download Multiscale Signal Analysis and Modeling Book in PDF, Epub and Kindle

Multiscale Signal Analysis and Modeling presents recent advances in multiscale analysis and modeling using wavelets and other systems. This book also presents applications in digital signal processing using sampling theory and techniques from various function spaces, filter design, feature extraction and classification, signal and image representation/transmission, coding, nonparametric statistical signal processing, and statistical learning theory.

Time Series Analysis in Seismology

Time Series Analysis in Seismology
Title Time Series Analysis in Seismology PDF eBook
Author Alejandro Ramírez-Rojas
Publisher Elsevier
Pages 406
Release 2019-08-02
Genre Science
ISBN 0128149027

Download Time Series Analysis in Seismology Book in PDF, Epub and Kindle

Time Series Analysis in Seismology: Practical Applications provides technical assistance and coverage of available methods to professionals working in the field of seismology. Beginning with a thorough review of open problems in geophysics, including tectonic plate dynamics, localization of solitons, and forecasting, the book goes on to describe the various types of time series or punctual processes obtained from those systems. Additionally, the book describes a variety of methods and techniques relating to seismology and includes a discussion of future developments and improvements. Time Series Analysis in Seismology offers a concise presentation of the most recent advances in the analysis of geophysical data, particularly with regard to seismology, making it a valuable tool for researchers and students working in seismology and geophysics. Presents the necessary tools for time series analysis as it relates to seismology in a compact and consistent manner Includes a discussion of technical resources that can be applied to time series data analysis across multiple disciplines Describes the methods and techniques available for solving problems related to the analysis of complex data sets Provides exercises at the end of each chapter to enhance comprehension

The Analysis of Multiple Time-series

The Analysis of Multiple Time-series
Title The Analysis of Multiple Time-series PDF eBook
Author M. H. Quenouille
Publisher
Pages 120
Release 1968
Genre Mathematics
ISBN

Download The Analysis of Multiple Time-series Book in PDF, Epub and Kindle

Multiscale Signal Analysis and Modeling

Multiscale Signal Analysis and Modeling
Title Multiscale Signal Analysis and Modeling PDF eBook
Author
Publisher Springer
Pages 398
Release 2012-09-19
Genre
ISBN 9781461441465

Download Multiscale Signal Analysis and Modeling Book in PDF, Epub and Kindle

Multiscale Signal Analysis and Modeling

Multiscale Signal Analysis and Modeling
Title Multiscale Signal Analysis and Modeling PDF eBook
Author Xiaoping Shen
Publisher Springer Science & Business Media
Pages 388
Release 2012-09-18
Genre Technology & Engineering
ISBN 1461441447

Download Multiscale Signal Analysis and Modeling Book in PDF, Epub and Kindle

Multiscale Signal Analysis and Modeling presents recent advances in multiscale analysis and modeling using wavelets and other systems. This book also presents applications in digital signal processing using sampling theory and techniques from various function spaces, filter design, feature extraction and classification, signal and image representation/transmission, coding, nonparametric statistical signal processing, and statistical learning theory.

Nonlinear Analysis in Neuroscience and Behavioral Research

Nonlinear Analysis in Neuroscience and Behavioral Research
Title Nonlinear Analysis in Neuroscience and Behavioral Research PDF eBook
Author Tobias A. Mattei
Publisher Frontiers Media SA
Pages 273
Release 2016-10-31
Genre Neurosciences. Biological psychiatry. Neuropsychiatry
ISBN 2889199967

Download Nonlinear Analysis in Neuroscience and Behavioral Research Book in PDF, Epub and Kindle

Although nonlinear dynamics have been mastered by physicists and mathematicians for a long time (as most physical systems are inherently nonlinear in nature), the recent successful application of nonlinear methods to modeling and predicting several evolutionary, ecological, physiological, and biochemical processes has generated great interest and enthusiasm among researchers in computational neuroscience and cognitive psychology. Additionally, in the last years it has been demonstrated that nonlinear analysis can be successfully used to model not only basic cellular and molecular data but also complex cognitive processes and behavioral interactions. The theoretical features of nonlinear systems (such unstable periodic orbits, period-doubling bifurcations and phase space dynamics) have already been successfully applied by several research groups to analyze the behavior of a variety of neuronal and cognitive processes. Additionally the concept of strange attractors has lead to a new understanding of information processing which considers higher cognitive functions (such as language, attention, memory and decision making) as complex systems emerging from the dynamic interaction between parallel streams of information flowing between highly interconnected neuronal clusters organized in a widely distributed circuit and modulated by key central nodes. Furthermore, the paradigm of self-organization derived from the nonlinear dynamics theory has offered an interesting account of the phenomenon of emergence of new complex cognitive structures from random and non-deterministic patterns, similarly to what has been previously observed in nonlinear studies of fluid dynamics. Finally, the challenges of coupling massive amount of data related to brain function generated from new research fields in experimental neuroscience (such as magnetoencephalography, optogenetics and single-cell intra-operative recordings of neuronal activity) have generated the necessity of new research strategies which incorporate complex pattern analysis as an important feature of their algorithms. Up to now nonlinear dynamics has already been successfully employed to model both basic single and multiple neurons activity (such as single-cell firing patterns, neural networks synchronization, autonomic activity, electroencephalographic measurements, and noise modulation in the cerebellum), as well as higher cognitive functions and complex psychiatric disorders. Similarly, previous experimental studies have suggested that several cognitive functions can be successfully modeled with basis on the transient activity of large-scale brain networks in the presence of noise. Such studies have demonstrated that it is possible to represent typical decision-making paradigms of neuroeconomics by dynamic models governed by ordinary differential equations with a finite number of possibilities at the decision points and basic heuristic rules which incorporate variable degrees of uncertainty. This e-book has include frontline research in computational neuroscience and cognitive psychology involving applications of nonlinear analysis, especially regarding the representation and modeling of complex neural and cognitive systems. Several experts teams around the world have provided frontline theoretical and experimental contributions (as well as reviews, perspectives and commentaries) in the fields of nonlinear modeling of cognitive systems, chaotic dynamics in computational neuroscience, fractal analysis of biological brain data, nonlinear dynamics in neural networks research, nonlinear and fuzzy logics in complex neural systems, nonlinear analysis of psychiatric disorders and dynamic modeling of sensorimotor coordination. Rather than a comprehensive compilation of the possible topics in neuroscience and cognitive research to which non-linear may be used, this e-book intends to provide some illustrative examples of the broad range of