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Chaotic transitions in deterministic and stochastic dynamical systems : applications of Melnikov processes in engineering, physics, and neuroscience / Emil Simiu.
Math/Physics/Astronomy Library QA614.8 .S55 2002
Available
- Format:
- Book
- Author/Creator:
- Simiu, Emil.
- Series:
- Princeton series in applied mathematics
- Princeton series in applied mathematics.
- Language:
- English
- Subjects (All):
- Differentiable dynamical systems.
- Chaotic behavior in systems.
- Stochastic systems.
- Physical Description:
- xiv, 224 pages : illustrations ; 24 cm.
- Place of Publication:
- Princeton, N.J. : Princeton University Press, [2002]
- Summary:
- The classical Melnikov method provides information on the behavior of deterministic planar systems that may exhibit transitions, that is, escapes from and captures into preferred regions of phase space. This book develops a unified treatment of deterministic and stochastic systems that extends the applicability of the Melnikov method to physically realizable stochastic planar systems with additive, state-dependent, white, colored, or dichotomous noise. The extended Melnikov method yields the novel result that motions with transitions are chaotic regardless of whether the excitation is deterministic or stochastic. It explains the role in the occurrence of transitions of the characteristics of the system and its deterministic or stochastic excitation, and is a powerful modeling and identification tool. The book is designed primarily for readers interested in applications. The level of preparation required corresponds to the equivalent of a first-year graduate course in applied mathematics. No previous exposure to dynamical systems theory or the theory of stochastic processes is required. The theoretical prerequisites and developments are presented in the first part of the book. The second part of the book is devoted to applications, ranging from physics to mechanical engineering, naval architecture, oceanography, nonlinear control, stochastic resonance, and neurophysiology.
- Contents:
- Chapter 2. Transitions in Deterministic Systems and the Melnikov Function 11
- 2.1 Flows and Fixed Points. Integrable Systems. Maps: Fixed and Periodic Points 13
- 2.2 Homoclinic and Heteroclinic Orbits. Stable and Unstable Manifolds 20
- 2.3 Stable and Unstable Manifolds in the Three-Dimensional Phase Space {x[subscript 1], x[subscript 2], t} 23
- 2.4 The Melnikov Function 27
- 2.5 Melnikov Functions for Special Types of Perturbation. Melnikov Scale Factor 29
- 2.6 Condition for the Intersection of Stable and Unstable Manifolds. Interpretation from a System Energy Viewpoint 36
- 2.7 Poincare Maps, Phase Space Slices, and Phase Space Flux 38
- 2.8 Slowly Varying Systems 45
- Chapter 3. Chaos in Deterministic Systems and the Melnikov Function 51
- 3.1 Sensitivity to Initial Conditions and Lyapounov Exponents. Attractors and Basins of Attraction 52
- 3.2 Cantor Sets. Fractal Dimensions 57
- 3.3 The Samle Horseshoe Map and the Shift Map 59
- 3.4 Symbolic Dynamics. Properties of the Space [Sigma subscript 2]. Sensitivity to Initial Conditions of the Smale Horseshoe Map. Mathematical Definition of Chaos 65
- 3.5 Smale-Birkhoff Theorem. Melnikov Necessary Condition for Chaos. Transient and Steady-State Chaos 67
- 3.6 Chaotic Dynamics in Planar Systems with a Slowly Varying Parameter 70
- 3.7 Chaos in an Experimental System: The Stoker Column 71
- Chapter 4. Stochastic Processes 76
- 4.1 Spectral Density, Autocovariance, Cross-Covariance 76
- 4.2 Approximate Representations of Stochastic Processes 87
- 4.3 Spectral Density of the Output of a Linear Filter with Stochastic Input 94
- Chapter 5. Chaotic Transitions in Stochastic Dynamical Systems and the Melnikov Process 98
- 5.1 Behavior of a Fluidelastic Oscillator with Escapes: Experimental and Numerical Results 100
- 5.2 Systems with Additive and Multiplicative Gaussian Noise: Melnikov Processes and Chaotic Behavior 102
- 5.3 Phase Space Flux 106
- 5.4 Condition Guaranteeing Nonoccurrence of Escapes in Systems Excited by Finite-Tailed Stochastic Processes. Example: Dichotomous Noise 109
- 5.5 Melnikov-Based Lower Bounds for Mean Escape Time and for Probability of Nonoccurrence of Escapes during a Specified Time Interval 112
- 5.6 Effective Melnikov Frequencies and Mean Escape Time 119
- 5.7 Slowly Varying Planar Systems 122
- 5.8 Spectrum of a Stochastically Forced Oscillator: Comparison between Fokker-Planck and Melnikov-Based Approaches 122
- Part 2. Applications 127
- Chapter 6. Vessel Capsizing 129
- 6.1 Model for Vessel Roll Dynamics in Random Seas 129
- 6.2 Numerical Example 132
- Chapter 7. Open-Loop Control of Escapes in Stochastically Excited Systems 134
- 7.1 Open-Loop Control Based on the Shape of the Melnikov Scale Factor 134
- 7.2 Phase Space Flux Approach to Control of Escapes Induced by Stochastic Excitation 140
- Chapter 8. Stochastic Resonance 144
- 8.1 Definition and Underlying Physical Mechanism of Stochastic Resonance. Application of the Melnikov Approach 145
- 8.2 Dynamical Systems and Melnikov Necessary Condition for Chaos 146
- 8.3 Signal-to-Noise Ratio Enhancement for a Bistable Deterministic System 147
- 8.4 Noise Spectrum Effect on Signal-to-Noise Ratio for Classical Stochastic Resonance 149
- 8.5 System with Harmonic Signal and Noise: Signal-to-Noise Ratio Enhancement through the Additional of a Harmonic Excitation 152
- 8.6 Nonlinear Transducing Device for Enhancing Signal-to-Noise Ratio 153
- Chapter 9. Cutoff Frequency of Experimentally Generated Noise for a First-Order Dynamical System 156
- 9.2 Transformed Equation Excited by White Noise 157
- Chapter 10. Snap-Through of Transversely Excited Buckled Column 159
- 10.1 Equation of Motion 160
- 10.2 Harmonic Forcing 161
- 10.3 Stochastic Forcing. Nonresonance Conditions. Melnikov Processes for Gaussian and Dichotomous Noise 163
- 10.4 Numerical Example 164
- Chapter 11. Wind-Induced Along-Shore Currents over a Corrugated Ocean Floor 167
- 11.1 Offshore Flow Model 168
- 11.2 Wind Velocity Fluctuations and Wind Stresses 170
- 11.3 Dynamics of Unperturbed System 172
- 11.4 Dynamics of Perturbed System 173
- 11.5 Numerical Example 174
- Chapter 12. The Auditory Nerve Fiber as a Chaotic Dynamical System 178
- 12.1 Experimental Neurophysiological Results 179
- 12.2 Results of Simulations Based on the Fitzhugh-Nagumo Model. Comparison with Experimental Results 182
- 12.3 Asymmetric Bistable Model of Auditory Nerve Fiber Response 183
- 12.4 Numerical Simulations 186
- Appendix A1 Derivation of Expression for the Melnikov Function 191
- Appendix A2 Construction of Phase Space Slice through Stable and Unstable Manifolds 193
- Appendix A3 Topological Conjugacy 199
- Appendix A4 Properties of Space [Sigma subscript 2] 201
- Appendix A5 Elements of Probability Theory 203
- Appendix A6 Mean Upcrossing Rate [tau superscript -1 subscript u] for Gaussian Processes 211
- Appendix A7 Mean Escape Rate [tau superscript -1 subscript [epsilon] for Systems Excited by White Noise 213.
- Notes:
- Includes bibliographical references (pages [215]-220) and index.
- ISBN:
- 0691050945
- OCLC:
- 48363158
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