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  • 1
    Monograph available for loan
    Monograph available for loan
    Cambridge [u.a.] : Cambridge Univ. Press
    Associated volumes
    Call number: PIK M 311-08-0229 ; PIK M 311-08-0230 ; PIK M 311-09-0040
    In: Cambridge nonlinear science series
    Type of Medium: Monograph available for loan
    Pages: XVI, 369 S. : graph. Darst.
    Edition: 2. ed., reprinted.
    ISBN: 0521529026 , 978-0-521-52902-0
    Series Statement: Cambridge nonlinear science series
    Location: A 18 - must be ordered
    Location: A 18 - must be ordered
    Location: A 18 - must be ordered
    Branch Library: PIK Library
    Branch Library: PIK Library
    Branch Library: PIK Library
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  • 2
    Monograph available for loan
    Monograph available for loan
    Cambridge : Cambridge University Press
    Associated volumes
    Call number: AWI S2-98-0216
    In: Cambridge nonlinear science series, 7
    Description / Table of Contents: Deterministic chaos offers a striking explanation for irregular behaviour and anomalies in systems which do not seem to be inherently stochastic. The most direct link between chaos theory and the real world is the analysis of time series from real systems in terms of nonlinear dynamics. This book provides experimentalists with methods for processing, enhancing, and analysing measured signals using these methods; and for theorists it also demonstrates the practical applicability of mathematical results. The framework of deterministic chaos constitutes a new approach to the analysis of irregular time series. Traditionally, nonperiodic signals have been modelled by linear stochastic processes. But even very simple chaotic dynamical systems can exhibit strongly irregular time evolution without random inputs. Chaos theory offers completely new concepts and algorithms for time series analysis which can lead to a thorough understanding of the signals. The book introduces a broad choice of such concepts and methods, including phase space embeddings, nonlinear prediction and noise reduction, Lyapunov exponents, dimensions and entropies, as well as statistical tests for nonlinearity. Related topics such as chaos control, wavelet analysis, and pattern dynamics are also discussed. Applications range from high-quality, strictly deterministic laboratory data to short, noisy sequences which typically occur in medicine, biology, geophysics, and the social sciences. All the material discussed is illustrated using real experimental data. This book will be of value to any graduate student or researcher who needs to be able to analyse time series data, especially in the fields of physics, chemistry, biology, geophysics, medicine, economics, and the social sciences.
    Type of Medium: Monograph available for loan
    Pages: XVI, 304 Seiten , Illustrationen , 25 cm
    Edition: First published
    ISBN: 0-521-55144-7
    Series Statement: Cambridge nonlinear science series 7
    Language: English
    Note: Preface Acknowledgements Part S Basic topics Chapter I Introduction: Why nonlinear methods? Chapter 2 Linear tools and general considerations 2.1 Stationarity and sampling 2.2 Testing for stationarity 2.3 Linear correlations and the power spectrum 2.3.1 Stationarity and the low-frequency component in the power spectrum 2.4 Linear filters 2.5 Linear predictions Chapter 3 Phase space methods 3.1 Determinism: Uniqueness in phase space 3.2 Delay reconstruction 3.3 Finding a good embedding 3.4 Visual inspection of data 3.5 Poincare surface of section Chapter 4 Determinism and predictability 4.1 Sources of predictability 4.2 Simple nonlinear prediction algorithm 4.3 Verification of successful prediction 4.4 Probing stationarity with nonlinear predictions 4.5 Simple nonlinear noise reduction Chapter 5 Instability: Lyapunov exponents 5.1 Sensitive dependence on initial conditions 5.2 Exponential divergence 5.3 Measuring the maximal exponent from data Chapter 6 Self-similarity: Dimensions 6.1 Attractor geometry and fractals 6.2 Correlation dimension 6.3 Correlation sum from a time series 6.4 Interpretation and pitfalls 6.5 Temporal correlations, nonstationarity, and space time separation plots 6.6 Practical considerations 6.7 A useful application: Determination of the noise level Chapter 7 Using nonlinear methods when determinism is weak 7.1 Testing for nonlinearity with surrogate data 7.1.1 The null hypothesis 7.1.2 How to make surrogate data sets 7.1.3 Which statistics to use 7.1.4 What can go wrong 7.1.5 What we have learned 7.2 Nonlinear statistics for system discrimination 7.3 Extracting qualitative information from a time series Chapters Selected nonlinear phenomena 8.1 Coexistence of attractors 8.2 Transients 8.3 Intermittency 8.4 Structural stability 8.5 Bifurcations 8.6 Quasi-periodicity Part 2 Advanced topics Chapter 9 Advanced embedding methods 9.1 Embedding theorems 9.1.1 Whitney's embedding theorem 9.1.2 Takens's delay embedding theorem 9.2 The time lag 9.3 Filtered delay embeddings 9.3.1 Derivative coordinates 9.3.2 Principal component analysis 9.4 Fluctuating time intervals 9.5 Multichannel measurements 9.5.1 Equivalent variables at different positions 9.5.2 Variables with different physical meanings 9.5.3 Distributed systems 9.6 Embedding of interspike intervals Chapter 10 Chaotic data and noise 10.1 Measurement noise and dynamical noise 10.2 Effects of noise 10.3 Nonlinear noise reduction 10.3.1 Noise reduction by gradient descent 10.3.2 Local projective noise reduction 10.3.3 Implementation of locally projective noise reduction 10.3.4 How much noise is taken out? 10.3.5 Consistency tests 10.4 An application: Foetal ECG extraction Chapter ! 1 More about invariant quantities 11.1 Ergodicity and strange attractors 11.2 Lyapunov exponents II 11.2.1 The spectrum of Lyapunov exponents and invariant manifolds 11.2.2 Flows versus maps 11.2.3 Tangent space method 11.2.4 Spurious exponents 11.2.5 Almost two-dimensional flows 11.3 Dimensions II 11.3.1 Generalised dimensions, multifractals 11.3.2 Information dimension from a time series 11.4 Entropies 11.4.1 Chaos and the flow of information 11.4.2 Entropies of a static distribution 11.4.3 The Kolmogorov-Sinai entropy 11.4.4 Entropies from time series data 11.5 How things are related 11.5.1 Pesin's identity 11.5.2 Kaplan-Yorke conjecture Chapter 12 Modelling and forecasting 12.1 Stochastic models 12.1.1 Linear filter 12.1.2 Nonlinear filters 12.1.3 Markov models 12.2 Deterministic dynamics 12.3 Local methods in phase space 12.3.1 Almost model free methods 12.3.2 Local linear fits 12.4 Global nonlinear models 12.4.1 Polynomials 12.4.2 Radial basis functions 12.4.3 Afeura/ networks 12.4.4 Wfcat to do in practice 12.5 Improved cost functions 12.5.1 Overfitting and model costs 12.5.2 The errors-in-variables problem 12.6 Model verification Chapter 13 Chaos control 13.1 Unstable periodic orbits and their invariant manifolds 13.1.1 Locating periodic orbits 13.1.2 Stable/unstable manifolds from data 13.2 OGY-control and derivates 13.3 Variants of OGY-control 13.4 Delayed feedback 13.5 Chaos suppression without feedback 13.6 Tracking 13.7 Related aspects Chapter 14 Other selected topics 14.1 High dimensional chaos 14.1.1 Analysis of higher dimensional signals 14.1.2 Spatially extended systems 14.2 Analysis of spatiotemporal patterns 14.3 Multiscale or self-similar signals, wavelets 14.3.1 Dynamical origin of multiscale signals 14.3.2 Scaling laws 14.3.3 Wavelet analysis Appendix A Efficient neighbour searching Appendix B Program listings Appendix C Description of the experimental data sets References Index
    Location: AWI Reading room
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  • 3
    Monograph available for loan
    Monograph available for loan
    Cambridge [u.a.] : Univ. Press
    Associated volumes
    Call number: PIK M 311-04-0191
    In: Cambridge nonlinear science series
    Type of Medium: Monograph available for loan
    Pages: XVI, 369 S
    Edition: 2. ed
    ISBN: 0521529026
    Series Statement: Cambridge nonlinear science series 7
    Location: A 18 - must be ordered
    Branch Library: PIK Library
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  • 4
    Electronic Resource
    Electronic Resource
    Woodbury, NY : American Institute of Physics (AIP)
    Chaos 5 (1995), S. 133-142 
    ISSN: 1089-7682
    Source: AIP Digital Archive
    Topics: Physics
    Notes: A prominent limiting factor in the analysis of chaotic time series are measurement errors in the data. We show that this influence can be quite severe, depending on the nature of the noise, the complexity of the signal, and on the application one has in mind. Theoretical considerations yield general upper bounds on the tolerable noise level for dimension, entropy and Lyapunov estimates. We discuss methods to detect and analyze the noise present in a measured data set. We show how the situation can be improved by nonlinear noise reduction. © 1995 American Institute of Physics.
    Type of Medium: Electronic Resource
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  • 5
    Electronic Resource
    Electronic Resource
    Woodbury, NY : American Institute of Physics (AIP)
    Chaos 3 (1993), S. 127-141 
    ISSN: 1089-7682
    Source: AIP Digital Archive
    Topics: Physics
    Notes: Recently proposed noise reduction methods for nonlinear chaotic time sequences with additive noise are analyzed and generalized. All these methods have in common that they work iteratively, and that in each step of the iteration the noise is suppressed by requiring locally linear relations among the delay coordinates, i.e., by moving the delay vectors towards some smooth manifold. The different methods can be compared unambiguously in the case of strictly hyperbolic systems corrupted by measurement noise of infinitesimally low level. It was found that all proposed methods converge in this ideal case, but not equally fast. Different problems arise if the system is not hyperbolic, and at higher noise levels. A new scheme which seems to avoid most of these problems is proposed and tested, and seems to give the best noise reduction so far. Moreover, large improvements are possible within the new scheme and the previous schemes if their parameters are not kept fixed during the iteration, and if corrections are included which take into account the curvature of the attracting manifold. Finally, the fact that comparison with simple low-pass filters tends to overestimate the relative achievements of these nonlinear noise reduction schemes is stressed, and it is suggested that they should be compared to Wiener-type filters.
    Type of Medium: Electronic Resource
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  • 6
    Electronic Resource
    Electronic Resource
    Woodbury, NY : American Institute of Physics (AIP)
    Chaos 6 (1996), S. 87-92 
    ISSN: 1089-7682
    Source: AIP Digital Archive
    Topics: Physics
    Notes: The electrical activity of the heart usually shows dynamical behavior which is neither periodic nor deterministically chaotic: The interbeat intervals seem to contain a random component. Although long term predictions are thus impossible, good predictions can be made for times smaller than one heart cycle. This fact is used in order to suppress measurement errors by a local geometric projection method which was originally developed for chaotic signals. The result constitutes evidence that techniques of time series analysis based on chaos theory can be useful despite the fact that very few natural phenomena have been actually established to be deterministically chaotic. © 1996 American Institute of Physics.
    Type of Medium: Electronic Resource
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  • 7
    Electronic Resource
    Electronic Resource
    Woodbury, NY : American Institute of Physics (AIP)
    Chaos 5 (1995), S. 143-154 
    ISSN: 1089-7682
    Source: AIP Digital Archive
    Topics: Physics
    Notes: Dimension estimates for data from physiological systems are notoriously difficult since the data are far from ideal in the sense of deterministic dynamical systems. Possible pitfalls and necessary precautions are pointed out and a recipe is given which is viable for those researchers who want to use the Grassberger–Procaccia algorithm but who are not familiar with the vast existing literature on dimension estimates. The relevance of dimension estimates for the characterization of physiological data is discussed, where both the cases of finding and not finding a low dimension are considered. © 1995 American Institute of Physics.
    Type of Medium: Electronic Resource
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  • 8
    Electronic Resource
    Electronic Resource
    Woodbury, NY : American Institute of Physics (AIP)
    Chaos 2 (1992), S. 85-90 
    ISSN: 1089-7682
    Source: AIP Digital Archive
    Topics: Physics
    Notes: The diffusion constant and the Lyapunov exponent for the spatially periodic Lorentz gas are evaluated numerically in terms of periodic orbits. A symbolic description of the dynamics reduced to a fundamental domain is used to generate the shortest periodic orbits. Applied to a dilute Lorentz gas with finite horizon, the theory works well, but for the dense Lorentz gas the convergence is hampered by the strong pruning of the admissible orbits.
    Type of Medium: Electronic Resource
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  • 9
    ISSN: 1520-5126
    Source: ACS Legacy Archives
    Topics: Chemistry and Pharmacology
    Type of Medium: Electronic Resource
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  • 10
    Electronic Resource
    Electronic Resource
    [s.l.] : Macmillan Magazines Ltd.
    Nature 401 (1999), S. 875-876 
    ISSN: 1476-4687
    Source: Nature Archives 1869 - 2009
    Topics: Biology , Chemistry and Pharmacology , Medicine , Natural Sciences in General , Physics
    Notes: [Auszug] Gaspard et al. have shown that the position of a brownian particle behaves like a Wiener process with positive resolution-dependent entropy. More surprisingly, they claim that this observation provides proof of ‘microscopic chaos’, a term they illustrate by examples of finite ...
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