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Online course materials for MATH64041Applied Dynamical Systems
Unit code:  MATH64041 
Credit Rating:  15 
Unit level:  Level 6 
Teaching period(s):  Semester 1 
Offered by  School of Mathematics 
Available as a free choice unit?:  N 
Requisites
NoneAdditional Requirements
Students are not permitted to take MATH45041 and MATH65041 for credit in an undergraduate programme and then a postgraduate programme.
Aims
To develop a basic understanding dynamical systems theory, particularly those aspects important in applications. To describe and illustrate how the basic behaviours found in dynamical systems may be recognized and analyzed.
Overview
Dynamical systems theory is the mathematical theory of timevarying systems; it is used in the modelling of a wide range of physical, biological, engineering, economic and other phenomena. This module presents a broad introduction to the area, with emphasis on those aspects important in the modelling and simulation of systems. General dynamical systems are described, along with the most basic sorts of behaviour that they can show. The dynamical systems most commonly encountered in applications are formed from sets of differential equations, and these are described, including some practical aspects of their simulation. The most regular kinds of behaviourequilibrium and periodicare the most easy to analyze theoretically; linearization about such trajectories are discussed (for periodic behaviour this is done using the PoincarÃ© map.)
Much more complex behaviours, including chaos, may be found; these are described by means of their attractors. The linearization approach can be extended to these, and leads to the concept of Lyapunov exponents.
In applications it is often important to know how the observed behaviour changes with changes in the system parameters; such changes can often be sudden, but frequently conform to one of a relatively small number of scenarios: the study of these forms the subject of bifurcation theory. The simplest bifurcations are discussed.
Learning outcomes
 On successful completion of this course unit students will
 understand the general concept of a dynamical system, and the significance of dynamical systems for modelling real world phenomena;
 be able to analyze simple dynamical systems to find and classify regular behaviour;
 appreciate some of the more complex behaviours (including chaotic), and understand some of the features of the attractors characterizing such behaviour;
 be familiar with some of the simpler bifurcation scenarios, and how they can be analyzed.
Assessment methods
 Other  25%
 Written exam  75%
Assessment Further Information
 Midsemester coursework: 25%
 End of semester examination: three hours weighting 75%
Syllabus

Basics. Basic concepts of dynamical systems: states, state spaces, dynamics. Discrete and continuous time systems. [1 lecture]
Some motivating examples: (discrete): simple population models, numerical algorithms; (continuous): chemical and population kinetics, mechanical systems, electronic and biological oscillators. [1]  Basic features of dynamical systems. Trajectories, fixed points, periodic orbits, attractors and basins. Autonomous and nonautonomous systems. Phase portraits in the plane and higher dimensions; examples of phase portraits of 2d and 3d systems. [2]
 Ordinary differential equations. Systems of first order ordinary differential equations; initial value problems, existence and uniqueness of solutions. Flows. [2]
 Equilibria and linearization. Fixed and equilibrium points and their linearization; classification and the HartmanGrobman theorem; invariant manifolds; examples in 2d and 3d. Computing equilibrium points. Stability and Liapounov functions. [5]
 Periodic orbits and linearization. Poincaré sections and the Poincaré map. Linearization and characteristic multipliers of periodic orbits, and stability; examples. Computing periodic orbits. [3]
 Attractors and longterm behaviour. ωlimit sets and long term behaviour. Chaotic attractors; illustrative examples. Lyapunov exponents and their computation. Onedimensional maps and simple routes to chaos (unimodal maps and Lorenz maps). Crises, chaotic transients [8]
 Bifurcations of flows. Local bifurcations and centre manifolds, global bifurcations; examples. Computing bifurcation diagrams by continuation.[8]
Recommended reading
 Stephen~H. Strogatz, Nonlinear Dynamics and Chaos, Perseus Books, Cambridge, MA, USA, 1994.
 Kathleen T. Alligood, Tim D. Sauer and James A. Yorke, Chaos: An Introduction to Dynamical Systems, SpringerVerlag, New York, NY, USA, 1996.
 Thomas S. Parker and Leon O. Chua, Practical Numerical Algorithms for Chaotic Systems, SpringerVerlag, New York, NY, USA, 1989.
 Stephen Wiggins, Introduction to Applied Nonlinear Dynamical Systems and Chaos, SpringerVerlag, New York, NY, USA, second edition, 2003.
 Y.A. Kuznetsov Elements of Applied Bifurcation Theory, Springer Applied Math. Sci. 112, 1995.
Feedback methods
Feedback tutorials will provide an opportunity for students' work to be discussed and provide feedback on their understanding. Coursework or inclass tests (where applicable) also provide an opportunity for students to receive feedback. Students can also get feedback on their understanding directly from the lecturer, for example during the lecturer's office hour.
Study hours
 Lectures  22 hours
 Tutorials  11 hours
 Independent study hours  117 hours
Teaching staff
Yanghong Huang  Unit coordinator