国产精品

If you are an Advanced Mathematics or Advanced Science student, then Honours is built into your program. For all other students, if you are keen on Mathematics and have achieved good results in years 1 to 3, you should consider embarking on an Honours year.

Below you can find some specific information about Applied Mathematics Honours.

For other information about doing Honours in Applied Mathematics, see the聽Honours Page.

Honours Coordinator - Applied

If you have any questions about the Honours year, don't hesitate to contact the Honours Coordinator listed below. In particular, if you are just starting third year and vaguely thinking ahead to Honours, then it is important to choose a sufficiently wide variety of third year courses. Please see the Honours Coordinator to discuss your choice of courses.

Dr Amandine Schaeffer

E: a.schaeffer@unsw.edu.au
T: 9385 1679
Office:聽H13 Lawrence East 4102, (formerly Red Centre)聽

Suggested Honours Topics聽

The following are suggestions for possible supervisors and Honours projects in Applied Mathematics. Other projects are possible, and you should contact any potential supervisors to discuss your options. You can find a full list of our Applied Mathematics staff via our Staff Directory. Please feel welcome to contact any staff member whose research is of interest.听

You can get in touch with the potential supervisors below via their details on our Staff Directory.听

2024 Honours Projects in Applied Mathematics

This info below contains descriptions of thesis projects offered for Honours year students in聽Applied Mathematics. Please note that the list is not exhaustive, and feel free to contact聽supervisors for other projects in their field.

Honours candidates are strongly encouraged to contact their preferred supervisor as early聽as possible to discuss potential projects and to make sure they have any requisite聽background knowledge. More information about the Honours year is available by emailing聽the Applied Mathematics Honours Coordinator, or via our聽Honours Year webpage.

Mathematical Modelling

Christopher Angstmann

  • Modelling with fractional differential equations

Fractional derivatives are a type of nonlocal operator that generalise the concept of a derivative away from integer order. Whilst they are rather esoteric in their initial definition, they have had an increasing place in modelling a wide variety of physical phenomena. By exploring a connection between random walks and fractional derivatives it is possible to derive a wide range of models. This project will develop fractional order PDE models with applications to biomathematics.

  • Semi-Markov compartment models

Compartment models are a widely used class of models that are useful when considering the flow of objects or people or energy between different labelled states, referred to as compartments. Recently we have constructed a general framework for fractional order compartment models, where the governing equations involve fractional order derivatives, via the consideration of a semi-Markov stochastic process.听This project will explore the generalisation of the framework to incorporate a wider range of nonlocal operators.

Adelle Coster

  • The insulin signalling pathway in adipocytes: a mathematical investigation

The insulin signalling pathway in adipocytes (fat cells) is the main controller of the uptake of glucose in the cells. Understanding of this system is vital in the investigation of diabetes, which is a deficiency in this control system. Projects in this area include the development a mathematical description of the movement of the vesicles (small membrane spheres)聽containing glucose transporter proteins, and also the diffusion of the proteins if the vesicle fuses with the cell surface, and also the analysis of the biochemical signalling pathway from聽the insulin receptor. These will involve analysis of differential equations and possibly some聽computational simulations of the system. Experimental data for comparison with the聽models will be available.

  • Do glucose transporters queue to get to the cell surface?

Cells transport glucose into their interior via protein channels. In adipocytes (fat cells) glucose uptake is regulated by insulin, as a dynamic balance between exocytosis (outward聽transport) and endocytosis (inward transport) of the proteins. The proteins are, however, packeted into small vesicles (spheres of membrane) when transported. One聽characterisation of the observed transport behaviour utilises queueing theory. This idea stems from the presence of the microtubules that cross the cytoplasm of the cells.

Microtubules are implicated in the sorting of different endocytic vesicular contents and聽have well characterised molecular motors which control the movement of vesicles down聽their lengths. Vesicles carrying the proteins have been observed to be transported along聽microtubules. Could these act as a scaffold for the vesicles, which would then form queues聽waiting for exocytosis? This project will model the recycling system as a closed Markovian聽queueing network and explore what characteristics of the network may be responsible for聽the transitory behaviour when insulin is applied, initiating protein transport. Experimental聽data for comparison will be available and the investigation will have both theoretical and聽computational aspects.

  • Modelling of drug epidemics

In recent years, use of methamphetamine has grown rapidly. It鈥檚 a dangerous drug for the聽user and those with whom they interact. At present we have no working model of the聽methamphetamine epidemic that could be used to explore various policy options to deal聽with the epidemic or simply project its likely course. This project will explore different聽models developed for drug use and develop a credible model of the methamphetamine聽epidemic in Australia. This work would be jointly supervised by Prof Don Weatherburn at聽the National Drug and Alcohol Research Centre.

  • Recidivism in the Criminal Justice System

Researchers are often called upon to evaluate programs designed to reduce the rate of reoffending. Typically, however, there are not observations of every offence a person聽commits, but rather only for those that result in an arrest or a conviction. How big a change聽would you need in actual re-offending rates to see a measurable difference in re-arrest or聽re-conviction rates? What interventions could be made, and what would be their effects?

The investigation will look at different mathematical approaches to model this problem and聽intervention strategies. This work would be jointly supervised by Prof Don Weatherburn at the National Drug and Alcohol Research Centre.

  • Modelling Myelinated Nerve Function

Pacemaking in cardiac and neuronal cells is primarily controlled by the interaction between聽different voltage gated ion channels. An existing mathematical model of the human motor聽axon utilises coupled differential equations to describe the electrical activity within the聽nerve. This model will be explored to interpret the measured responses to extended聽hyperpolarisation and the contribution of different ion currents to the transmission of聽signals. It will also investigate the responses of sensory neurons to strong long lasting聽hyperpolarisation and contrast with motor neurons. Extensions to the model will then be聽made to incorporate additional inhomegeneities within the neuron structure. This project聽will include analysis and development of coupled differential equations, numerical simulations and the optimisation of the model using data from the experimental literature.

Steffen Docken聽(国产精品 Kirby Institute)

  • Mathematical and Statistical analysis of data relating to HIV infection
  • Stochastic models, differential equations, and hypothesis testing

Daniel Han

  • Modelling the growth of neurons

In recent years, detailed synapse-scale maps of animal brains have become available. For examples see the fly brain () and parts of the mouse brain (). Now it has become possible to explore the morphology of neurons in the brain down to each individual synapse. By leveraging these datasets and finding conserved statistical quantities across all neurons in the brain, this project will attempt to find general mathematical algorithms that enables the recreation of neuron morphology. Specifically, we will look at both analytical and computational models of neuron growth from a macroscopic scale using random walks with self-avoidance and branching.

Michael Watson

  • Modelling Phagocytic Capacity in Atherosclerotic Plaque Macrophages

Atherosclerosis, the primary cause of heart attacks and strokes, is characterised by the聽growth of plaques in the walls of arteries. Plaques are initiated by 鈥渂ad cholesterol鈥, which聽accumulates in the artery wall and triggers an immune response. Macrophages (specialised聽immune cells) are recruited to consume (phagocytose) and remove this cholesterol.

However, when cholesterol-loaded macrophages die in the artery wall, the problem聽remains unresolved and a plaque full of fat and cellular debris can develop. Plaque聽formation can be studied mathematically by using structured population models to track聽the dynamic accumulation and recycling of fat within plaque macrophage populations.听Recent models of this type assume that there is no upper limit to how much fat a聽macrophage can internalise. While this assumption is mathematically convenient, it is聽clearly physically unrealistic. This project will develop the theory required for new and聽improved models that include an upper limit on macrophage phagocytic capacity. The聽project will analyse and computationally solve differential equation models to reveal the聽impact of macrophage phagocytic capacity on real life atherosclerotic plaques.

  • Structured Models of Atherosclerotic Plaque Formation with Volumetric Growth

Atherosclerotic plaques are growths in artery walls that lead to heart attacks and strokes.听Plaques are initiated by fat (鈥渂ad cholesterol鈥) that enters the artery wall from the bloodstream. Immune cells called macrophages are recruited to the artery wall to consume聽and remove the fat. However, when macrophages die in the wall, they deposit fatty debris聽that stimulates further macrophage recruitment. This leads to a chronic cycle of cell and聽debris accumulation that causes the plaque to grow. Recent progress in understanding聽plaque formation has been made with the use of structured population models that study聽the dynamics of macrophages, their internalised fat and the debris they deposit when聽dying. These models predict, for example, that increasing plaque macrophage reproduction聽can limit debris accumulation. But what if this accumulation of cells ultimately makes the聽plaque larger? Is the benefit worth the cost? This project will address this question and聽more by developing a novel mathematical framework that couples structured population聽models to models of volumetric plaque growth.

Computational Mathematics

Josef Dick

  • Well distributed points in high dimension with applications to numerical Integration
  • Generation of non-uniform quasi random numbers
  • Approximation properties of neural networks

Gary Froyland

  • Operator-theoretic and differential-geometric kernel methods for Machine Learning

This project will develop new mathematical and computational approaches to analyse high-dimensional data. Operator-theoretic methods will be explored, including the use of聽transfer operators, dynamic Laplace operators, and Laplace-Beltrami operators, which聽extract dominant dynamic and geometric modes from the data. In the theoretical direction,聽this project will tackle the mathematisation of aspects of machine learning. In a combined聽theoretical and numerical direction, this project will investigate the construction of these聽operators from high-dimensional data using dynamic and geometric kernel methods. A聽possible application is to analysing global scalar fields obtained from satellite imagery such聽as sea-surface temperature to extract climate oscillations such as the El Nino Southern聽Oscillation and the Madden-Julian Oscillation. This project will use ideas from dynamical聽systems, functional analysis, and Riemannian geometry.

Frances Kuo

  • The theoretical development and/or practical application of Quasi-Monte Carlo聽Methods

Quasi-Monte Carlo methods, or QMC methods in short, are numerical methods for high聽dimensional integration and related problems. The prefix 鈥渜uasi鈥 indicates that these聽methods rely on cleverly designed pointsets or sequences in high dimensions, as opposed聽to the regular Monte Carlo method which is based on sequences of pseudorandom聽numbers. We now know how to construct good QMC methods efficiently in thousands of聽dimensions, with fast error convergence independently of dimension! A potential honours聽project would be on the theoretical development and/or practical application of QMC聽methods.

Quoc Thong Le Gia

  • Approximate cloaking simulation
  • Analysis of changing data and applications
  • Neural networks and applications

Bill McLean

  • Numerical techniques for reaction-diffusion systems

Reaction-diffusion phenomena are modelled by coupled systems of semilinear聽parabolic PDEs, and have attracted much attention due to the striking聽patterns exhibited by their solutions. The project will compare different聽approaches for time stepping, such as exponential integrators and implicit聽Runge-Kutta schemes, and should suit students with an interest in hands-on聽scientific computing.

  • Approximating the fractional powers of an elliptical differential operator
  • Adaptive error control using discontinuous Galerkin time stepping

Thanh Tran

  • The role of the Landau-Lifschitz equation in micromagnetism

One of the hallmarks of modern society is the increasing demand for the large data storage聽which can be rapidly and efficiently accessed. The most important devices for information聽storage are magnetic memories which are used in, for example, mobile phones, credit聽cards, televisions, and computer hard drives.

Submicron-sized ferromagnetic elements are the main building blocks of data storage聽devices. They preserve magnetic orientation for a long time, allowing bits of information to聽be encoded as directions of the magnetisation vector. The stored information can be modified by an external magnetic field.听A well-known model for magnetisation is the Landau-Lifshitz-Gilbert equation. The聽equation possesses complex mathematical properties such as nonconvex side-constraints,聽strongly nonlinear terms and the appearance of singularities. These properties demand聽sophisticated numerical approximations.

In this project you will learn different numerical methods to solve the equation. Depending聽on your needs and interests, there are open problems to cut your teeth on.

  • Stochastic differential equations

In this project, you will learn how different basic numerical methods are developed for聽stochastic differential equations. You will then learn how to apply them to solve practical聽problems and compare the performance of the methods.

  • Problems in random domains

In many industries (e.g., in aerospace engineering) random discrepancies between the ideal聽geometries conceived in the design phase and their actual realisation may lead to聽considerable variations in expected outcomes.

The effect of randomness in domains is even more dramatic in manufacturing of nanodevices聽(e.g. data storage devices governed by the Landau-Lifshitz-Gilbert equation).听Indeed, under certain resolution, surfaces of these devices become rough, and a minor聽discrepancy results in relatively large adverse effects. In this project you will learn how聽shape calculus can be used to deal with problems on random domains.

  • Boundary element methods

Boundary element methods have long been used in engineering to solve boundary value聽problems. These problems are formulated from many physical phenomena, ranging from聽mechanical engineering (e.g. in car design) to petroleum engineering (e.g. for simulation of聽fractured reservoirs).

In this project, you will first learn basic concepts of boundary element methods, how to聽implement and analyse efficiency and accuracy of the methods. Then, depending on your聽needs and interests, you will use the methods to solve practical problems in engineering or geodesy. Problems in geodesy will involve programming with data collected by a NASA聽satellite, which may contain up to almost 30 million points.

Jan Zika

  • Truncating climate errors: Developing new methods to improve how numerical聽climate models describe fluid flow and improve their projections of global warming

Climate Models are the key tool to predict how the climate will change. Accurate聽projections rely on having models which realistically mix carbon and heat into the deep聽ocean. Numerical models often spuriously mix due to imprecise numerical methods.听Quantifying this spurious mixing is key to developing better climate projects. In this project聽we will develop and apply novel techniques to diagnose and reduce such numerical errors聽in climate models.

Fluid Dynamics, Oceanography and Meteorology

Gary Froyland

  • Lagrangian Coherent Structures in Ocean and Atmosphere Models

The ocean and atmosphere display complex nonlinear behaviour, whose underlying聽evolution rules change over time due to external and internal influences. Mixing processes聽of in the atmosphere and the ocean are also complex, but carry important geometric聽transport information. Using the latest models or observational data, and methods from聽dynamical systems, and spectral theory, this project will identify and track over time those geometric structures that mix least. Known examples of such structures are eddies and聽gyres in the ocean, and vortices in the atmosphere, however, there are likely many undiscovered coherent pathways in these geophysical flows. There is also the possibility for聽the project to further develop mathematical theory and/or algorithms to treat one or more聽specific challenges arising in these application areas. This could be a joint project with Shane聽Keating.

Chris Tisdell

  • Exploring the theory of Navier-Stokes equations and their applications to fluid flow

Navier-Stokes equations are of immense theoretical and physical interest. These partial聽differential equations have been used to better understand the weather, ocean currents,聽water flow in a pipe and air flow around a wing. However, the theory of the equations has聽not yet been fully formed. For example, it has not yet been proven whether solutions always聽exist in three dimensions and, if they do exist, whether they are smooth - i.e. they are聽infinitely differentiable all points in the domain. The Clay Mathematics Institute has聽identified this as one of the seven most important open problems in mathematics and has聽offered a US$1 million prize for a solution or a counter example.

In this project we will examine existence and smoothness of solutions to problems derived聽from the Navier-Stokes equations that arise in laminar fluid flow in porous tubes and聽channels. Channel flows - liquid flows confined within a closed conduit with no free surfaces聽- are everywhere. In plants and animals, they serve as the basic ingredient of vascular聽systems, distributing energy to where it is needed and allowing distal parts of the organism聽to communicate. In engineering, one of the major functions of channels is to transport聽liquids or gases from sites of production to the consumer or industry. Such a project will聽involve the nonlinear analysis of boundary value problems and some numerical聽approximations.

Jan Zika

  • Novel machine learning quantifying the ocean's role in a changing climate

The ocean is turbulent and hosts dynamics on a range of spatial and temporal scales leading聽to rich variability and apparently 鈥榥oisy鈥 signals in data. However, when mapped into certain聽phase spaces, underlying structures emerge. These suggest the ocean can be parameterised聽and the noisy data filtered to clarify underlying long-term trends and their drivers. In this聽project we will use novel machine learning techniques to characterise the ocean鈥檚 underlying structure and improve methods for analysing (big) ocean data.

  • How does heat and carbon get into the ocean? An investigation of the physical mechanisms that control the ocean's uptake of heat and its effect on climate

Heat and carbon uptake by the ocean are central to climate change. However, the physical聽mechanisms by which the ocean transports such properties from the near surface to the聽deep ocean are not well understood. In this project we will project ocean data into novel聽phase diagrams to quantify the underlying energetic and thermodynamic drivers of ocean聽vertical transport.

Mathematics Education

Chris Tisdell

  • Improving the ways we teach and learn mathematics

Research into learning and teaching mathematics at universities is a relatively new and suboptimally theorized field. It has largely remained sheltered from critical debate due to聽dominant views of mathematics and its teaching as a universal, absolute and unchanging聽state within tertiary institutions. As such, inherited long-standing ways of teaching and聽learning therein have gained a lustre of naturalized value, forming what appears to be a聽state of global pedagogical agreement.

Responding to this over-stabilization, this project explores the following research聽questions:

1. What are the limitations and hidden consequences of traditionally dominant聽pedagogy within university mathematics education?

2. How might we constructively reframe and renew these situations by offering聽alternative pedagogical perspectives?

Dynamical Systems

Gary Froyland

Topics in dynamical systems, ergodic theory, or differential geometry

Ergodic theory is the study of the dynamics of ensembles of points, in contrast to topological聽dynamics, which focusses on the dynamics of single points. A number of theoretical聽Honours projects are available in dynamical systems, ergodic theory, and/or differential聽geometry, aiming at developing new mathematics to analyse the complex behaviour of聽nonlinear dynamical systems. Depending on your background, these projects may involve聽mathematics from Ergodic Theory, Functional Analysis, Measure Theory, Riemannian聽Geometry, Stochastic Processes, and Nonlinear and Random Dynamical Systems.

  • Differential and spectral geometry with applications to fluid mixing

Techniques from differential geometry and spectral geometry (via Laplace-type operators)聽have recently been shown to be particularly effective for analysing complex dynamics in a聽variety of theoretical and physical systems. This project will focus on developing and聽extending powerful techniques to extract important geometric and probabilistic dynamical聽structures from fluid-like models. If desired, application areas include the ocean (an聽incompressible fluid) and the atmosphere (a compressible fluid). This project will involve聽dynamical systems and differential/spectral geometry.

  • Stability of linear operator cocycles

Classical perturbation theory yields continuity of the spectrum and eigenprojections of聽compact and quasi-compact linear operators. The situation is dramatically different when聽one creates a cocycle of different operators, driven by some ergodic process. This dramatic聽difference even occurs in finite-dimensions (cocycles of matrices). This project will discover聽theory for which one can expect continuity of the corresponding spectral objects, namely聽Lyapunov exponents and Oseledets spaces. The project will use mathematics from聽probability and statistics, functional analysis, and connects to dynamical systems and聽ergodic theory.

  • Machine-learning dynamical systems

This project explores the use of machine learning in either (i) prediction of dynamical systems or (ii) in the construction of efficient linear operator representations of the dynamics. In the latter case, the project will focus on those linear operators that are generated by the dynamical system and which allow a spectral analysis of the dynamics.

路听听听听听听听听 Transfer operator computations in high dimensions

Many real-world dynamical systems operate in phase spaces that are very high dimensional聽and/or unknown. For example, the dynamics of ocean-atmosphere circulation at various聽spatial and temporal scales (e.g. from local weather to global climate) is invariable聽extremely high dimensional. On the other hand, there is increasing availability of spatial聽datasets from e.g. satellite imagery, which provide high resolution spatial images as聽鈥渕ovies鈥 in time. One can hope to construct dynamics of a projected system from the聽dynamics of these images, which are themselves operating in a high-dimensional space聽(dimension >= number of pixels in the image). This project will investigate recent ideas in聽constructing transfer operator for high-dimensional systems, and use ideas from dynamical聽systems, stochastic processes, functional analysis, and Riemannian geometry.

  • Lagrangian coherent structures in haemodynamics

Haemodynamics (the dynamics of blood flow) is believed to be a crucial factor in aneurysm聽formation, evolution, and eventual rupture. Turbulent motion near the artery wall can weaken already damaged arteries, as can oscillations between turbulent and laminar flow.听Simulations of 3D blood flow is either derived by (i) computational fluid dynamics (CFD)聽from patient-specific mathematical models obtained from angiographic images or (ii) laser scanning of real flow through a patient- specific physical plastic/gel cast. In this project, joint聽with Prof. Tracie Barber (国产精品 Mech. and Manufact. Engineering), you will develop and聽apply new mathematical techniques for flow analysis, based on dynamical systems and聽spectral methods to separate and track regions of turbulent and regular blood flow. Prof.听Barber will provide the realistic flow data from her laboratory, from both CFD simulations聽and physical casts. There is also the opportunity to further develop mathematical theory to聽solve problems specific to haemodynamics.

John Roberts

  • Arithmetic dynamics

The topic is broadly taken to be the intersection of algebra, number theory, and dynamical聽systems. This interdisciplinary area of research is cutting edge and exciting, and has聽important applications to, e.g., cryptography, random matrix theory, materials science and聽engineering.

  • Discrete integrable systems

The study of integrable (partial) difference equations and integrable maps is presently a聽very active field of research. In the first instance, this is due to the increasingly numerous聽areas of physics in which such systems feature. The study of discrete integrable systems also聽has intrinsic mathematical appeal, broadly speaking to do with finding analogues of聽concepts or properties (e.g., the Painleve property, Lax pairs, Hamiltonian structure) that聽exist in integrable systems with continuous time. Increasingly, I am interested in using聽algebraic geometry and ideal theory to understand discrete integrable dynamical systems.

Wolfgang Schief

  • Topics in Soliton Theory

Solitons constitute essentially localised nonlinear waves with remarkable novel interaction聽properties. The soliton represents one of the most intriguing of phenomena in modern聽physics and occurs in such diverse areas as nonlinear optics and relativity theory, plasma聽and solid state physics, as well as hydrodynamics. It has proven to have important聽technological applications in optical fibre communication systems and Josephson junction聽superconducting devices.听

Nonlinear equations which describe solitonic phenomena (`soliton equations鈥 or `integrable聽system鈥) are ubiquitous and of great mathematical interest. They are privileged in that they聽are amenable to a variety of solution generation techniques. Thus, in particular, they聽generically admit invariance under symmetry transformations known as B盲cklund聽transformations and have associated nonlinear superposition principles (permutability聽theorems) whereby analytic expressions descriptive of multi-soliton interaction may be聽constructed. Integrable systems appear in a variety of guises such as ordinary and partial聽differential equations, difference and differential-difference equations, cellular automata聽and convergence acceleration algorithms.听

It is by now well established that there exist deep and far-reaching connections between聽integrable systems and classical differential geometry. For instance, the interaction聽properties of solicons observed in 1953 by Seeger, Donth and Kochend枚rfer in the context聽of Frenkel and Kontorova鈥檚 dislocation theory and later rediscovered by Zabusky and聽Kruskal (1965) in connection with the numerical treatment of the important Fermi-Pasta-Ulam problem are encoded in the geometry of particular classes of surfaces governed by聽the sine-Gordon equation and Korteweg-de Vries (KdV) equation respectively. The聽geometric study of integrable systems has proven to be very profitable to both soliton聽theory and differential geometry.听

Integrable systems play an important role in discrete differential geometry. The term聽鈥榙iscrete differential geometry鈥 reflects the interaction of differential geometry (of curves,聽surfaces or, in general, manifolds) and discrete geometry (of, for instance, polytopes and聽simplicial complexes). This relatively new and active research area is located between pure聽and applied mathematics and is concerned with a variety of problems in such disciplines as聽mathematics, physics, computer science and even architectural modelling. Specifically,聽theoretical and applied areas such as differential, discrete and algebraic geometry,聽variational calculus, approximation theory, computational geometry, computer graphics,聽geometric processing and the theory of elasticity should be mentioned.听

Soliton theory constitutes a rich source of Honours topics which range from applied to pure.听Specific topics will be tailored towards the preferences, skills and knowledge of any聽individual student.

Chris Tisdell

  • Advanced Studies in differential equations

Many problems in nonlinear differential equations can reduced to the study of the set of聽solutions of an equation of the form f(x) = p in an appropriate space. This project will give聽the student an introduction to the applications of analysis to nonlinear differential聽equations. We will answer such questions as:

1. When do these equations have solutions?

2. What are the properties of the solution(s)?

3. How can we approximate the solution(s)?

A student who completes this project will be well-prepared to make the transition to聽research studies in related fields.

  • A Deeper Understanding of Discrete and Continuous Systems Through Analysis on聽Time Scales

Historically, two of the most important types of mathematical equations that have been聽used to mathematically describe various dynamic processes are: differential and integral聽equations; and difference and summation equations, which model phenomena, respectively: in continuous time; or in discrete time. Traditionally, researchers have used聽either differential and integral equations or difference and summation equations | but not聽a combination of the two areas to describe dynamic models. However, it is now becoming聽apparent that certain phenomena do not involve solely continuous aspects or solely聽discrete aspects. Rather, they feature elements of both the continuous and the discrete.

These types of hybrid processes are seen, for example, in population dynamics where nonoverlapping generations occur. Furthermore, neither difference equations nor differential聽equations give a good description of most population growth. To effectively treat hybrid聽dynamical systems, a more modern and flexible mathematical framework is needed to聽accurately model continuous, discrete processes in a mutually consistent manner.

An emerging area that has the potential to effectively manage the above situations is the聽field of dynamic equations on time scales. Created by Hilger in 1990, this new and聽compelling area of mathematics is more general and versatile than the traditional theories聽of differential and difference equations, and appears to be the way forward in the quest for聽accurate and flexible mathematical models. In fact, the field of dynamic equations on time聽scales contains and extends the classical theory of differential, difference, integral and聽summation equations as special cases. This project will perform an analysis of dynamic聽equations on time scales. It will uncover important qualitative and quantitative information聽about solutions; and the modelling possibilities. Students who undertake this project will聽be very well equipped to make contributions to this area of research.

  • Advanced Studies in Nonlinear Difference Equations

Difference equations are of huge importance in modelling discrete phenomena and their聽solutions can possess a richer structure than those of analogous differential equations. This聽project will involve an investigation of nonlinear difference equations and the properties of聽their solutions (existence, multiplicity, boundedness, etc). Students who complete this聽project will be very well-equipped to contribute to the research field.

Optimisation

Gary Froyland

路听听听听听听听听 Machine-learning optimal function bases for linear operators

This project will explore the use of machine learning to find optimal basis functions to represent discrete approximations of linear operators.

Jeya Jeyakumar

  • Robust Classification

Motivated by the fact that there may be inaccuracies in features and labels of training data,聽this project will examine robust optimization techniques to study the uncertainty in data聽features and labels in classification problems, develop robust optimization formulations for聽commonly used classification methods, such as support vector machines, logistic regression聽and decision trees, and compare with regularized and nominal methods.

Guoyin Li

  • Rank Optimisation with matrix variables

Notions such as order, complexity, or dimensionality can often be expressed by means of聽the rank of an appropriate matrix. Therefore, many practical problems can be modelled as聽rank optimisation problems with matrix variables. Typical examples include the matrix聽completion problem (which arises in the Netflix prize), minimum-order linear system聽realisation problem and image compression. The rank optimisation problem can be聽regarded as an extension of the celebrated compress sensing problem and is often hard to聽analyse. One of the major difficulties in solving the rank optimisation problem is the nonsmoothness and non-convexity of the rank function. In this project, we will first examine the fundamental mathematical aspects of rank functions using tools from nonsmooth聽optimisation. We will then develop computationally efficient techniques for solving rank聽optimisation problems. Finally, we will apply these results to solve important problems such聽as the matrix completion problem and the minimum-order linear system realisation聽problem.

  • Optimisation approaches for tensor computation: modern techniques for multirelational data analysis

Modern data analysis is the science of correctly collecting data, assessing it for聽trustworthiness, extracting qualitative information from it, and presenting it in a聽comprehensible informative way. Traditional techniques in data analysis deal with singlerelational data despite the reality that multi-relational data, whose objects have interactions among themselves based on different relations, often appear in our daily life.听

Mathematically, single-relational data can be modelled by a matrix. Likewise, multirelational聽data can be modelled as a tensor, which is a multidimensional extension of the concept of聽a matrix. In this project, we aim to develop optimisation approaches to identify and rank the聽most significant factors from complex and huge-scale multi-relational data, and to express聽them in a way to highlight similarities and differences. Finally, we will apply these results to聽problems arise in modern decision-making and image science.

Mareike Dressler

  • Topics in polynomial optimisation

A polynomial optimisation problem is a special class of nonconvex nonlinear global聽optimisation in which both the objective and constraints are polynomials. That is, it aims at聽finding the global minimiser(s) of a multivariate polynomial on a certain set. Polynomial聽optimisation has a wide range of applications like dynamical systems, robotics, computer聽vision, signal processing, and economics. Mathematically, it is well-known that solving聽polynomial optimisation is very hard in general. One of the most powerful approaches for聽handling such problems with rigorous and global guarantees is via algebraic techniques.

A potential honours project would be on the theoretical development and/or practical聽application of these algebraic techniques.

Jan Zika

  • Novel optimisation techniques to quantify the ocean鈥檚 role in climate

The ocean is warming, carbon concentrations are rising and the concentration of salt in sea聽water is changing. These changes are the net result of both changes in climate forcing聽leading to exchanges at the sea surface and changes in how the ocean mixes and聽redistributes properties. Diagnosing the 鈥榟ow鈥 and 鈥榳hy鈥 of these changes is essential to聽understanding climate. The ways in which the ocean could have arrived at its present state聽can be viewed as a constrained set of solutions for which optimisation methods can be used聽to indicate the most likely subset. This project will develop and implement novel聽optimisation approaches to help quantify the drivers of ocean change.