<p><p>This book examines discrete dynamical systems with memory—nonlinear systems that exist extensively in biological organisms and financial and economic organizations, and time-delay systems that can be discretized into the memorized, discrete dynamical systems. It book further discusses stabilit
Memorized Discrete Systems and Time-delay
✍ Scribed by Albert C. J. Luo
- Publisher
- Springer
- Year
- 2017
- Tongue
- English
- Leaves
- 307
- Series
- Nonlinear systems and complexity 17
- Edition
- 1st ed.
- Category
- Library
No coin nor oath required. For personal study only.
✦ Synopsis
This book examines discrete dynamical systems with memory―nonlinear systems that exist extensively in biological organisms and financial and economic organizations, and time-delay systems that can be discretized into the memorized, discrete dynamical systems. It book further discusses stability and bifurcations of time-delay dynamical systems that can be investigated through memorized dynamical systems as well as bifurcations of memorized nonlinear dynamical systems, discretization methods of time-delay systems, and periodic motions to chaos in nonlinear time-delay systems.
✦ Table of Contents
Front Matter....Pages i-x
Memorized Linear Discrete Systems....Pages 1-50
Memorized Nonlinear Discrete Systems....Pages 51-114
Discretization of Time-delay Systems....Pages 115-220
Periodic Flows in Time-delay Systems....Pages 221-270
Time-Delayed Duffing Oscillator....Pages 271-296
Back Matter....Pages 297-298
✦ Subjects
Discrete-time systems
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