EPN-V2

PENG9570 Anvendt matematisk modellering og analyse Emneplan

Engelsk emnenavn
Applied Mathematical Modelling and Analysis
Omfang
10.0 stp.
Studieår
2020/2021
Emnehistorikk
Timeplan
  • Innledning

    Students taking the course must have a thorough knowledge of advanced calculus, including ordinary and partial differential equations. The student should also be familiar with linear algebra and Fourier and Laplace transform theory. In terms of programming, the candidate should have some experience in implementing numerical methods, including schemes for solving partial differential equations.

    The candidate should also have a certain knowledge of mathematical analysis, modern physics or physiology – depending on specialization.

    The course will be offered once a year, provided 3 or more students sign up for the course. If less than 3 students sign up for a course, the course will be cancelled for that year.

  • Anbefalte forkunnskaper

    A thorough knowledge of advanced calculus, including ordinary and partial differential equations. It is a great advantage if students are familiar with linear algebra and Fourier and Laplace transform theory. In terms of programming, some experience in implementing various numerical methods, including schemes for solving partial differential equations is recommended. Some knowledge of mathematical analysis, modern physics or physiology is recommended, depending on their specialisation.

  • Forkunnskapskrav

    None.

  • Læringsutbytte

    Students who complete the course are expected to have the following learning outcomes, defined in terms of knowledge, skills and general competence:

    Knowledge

    On successful completion of the course, the student:

    • knows how mathematical models can be derived from facts and first principles.
    • has a repertoire of methods to solve and/or analyse both ordinary differential equation (ODE) systems and certain partial differential equations (PDEs).
    • is able to apply analytical and/or numerical solution methods for PDEs to models of heat transfer, wave propagation and diffusion-convection and discuss the relevance of these models to real-world phenomena.
    • is able to construct and develop relevant models and discuss the validity of the models.

    Skills

    On successful completion of the course, the student can:

    • can determine steady states of ODE systems and use linear approximation to elucidate the stability properties of these states.
    • can solve and/or analyse selected PDE models.
    • is able to implement and use some numerical methods for solving relevant PDEs.
    • can devise the solution of certain composite quantitative problems.
    • can disseminate results and findings in an accessible manner – both orally and in writing.

    General competence

    • is aware of the usefulness and limitations of mathematical modelling as well as of pitfalls frequently encountered in modelling and simulation.
    • is able to discuss properties of a system using the equations of the mathematical model that describes the system.
    • can explain and use numerical methods, know their strengths and weaknesses and interpret results of numerical simulations.
  • Innhold

    Introductory module:

    • Principles of modelling and derivation of mathematical models
    • Analysis of ordinary differential equations (ODEs)
    • Linear partial differential equations (PDEs)
    • Prominent results from functional analysis and their application to ODEs and PDEs
    • Numerical methods for computing of solutions of PDEs

    Functional analysis:

    • Completeness for normed spaces
    • Hilbert spaces, compact and diagonalisable operators
    • Theory of topological vector spaces
    • Test functions, distributions and the Fourier transform
    • Sobolev spaces and fundamental solutions of partial differential equations

    Biosystems:

    • Mathematical models for biological systems
    • Analytical and numerical methods for simulation of system response
    • Actuators and sensors for stimulation and measurements of biological systems
    • Interaction of biological and measurement system

    Modern physics:

    • Monte Carlo techniques
    • Splines and other expansion techniques
    • Applications of expansions in spherical harmonics
    • Numerical problems in general relativity and quantum physics
    • Manifolds with geometric structures central to physics and engineering.

    Within all specializations, the content may be adjusted to accommodate for the research area of each PhD candidate.

  • Arbeids- og undervisningsformer

    The teaching is organised as sessions where the subject material is presented, and as sessions where the students solve problems using analytical and/or numerical methods. Between these sessions, the students should work individually with literature studies and problem solving.

    In the last, specialised part, the students are required to complete and present a rather extensive individual project involving theoretical and practical/implementational aspects.

  • Arbeidskrav og obligatoriske aktiviteter

    The grade scale Pass / Fail is used.

  • Vurdering og eksamen

    The course assignment will be assessed by two internal examiners.

    In accordance with the Guidelines for Appointment and Use of Examiners at OsloMet, the mode of assessment will periodically be reviewed by an external programme supervisor.

  • Hjelpemidler ved eksamen

    The course consists of two parts, covering central aspects of social science research methodology and methods as appropriate for international development, education, and sustainabilities:

    1. Consolidation of ‘theory of knowledge’ introduced in course FLKM4210, which, among other things, covers:
    • fundamental issues of scientific explanation and their manifestation in the social sciences.
    • an introduction to the social roles of science and the political, cultural and ethical grounds for and functions of knowledge, with particular reference to the interdisciplinary field of this program

    1. Research methodology which, among other things, covers:
    • concepts in social science research methodology
    • research design in the master’s thesis, including selecting a project topic, formulating research questions, understanding the role of theory, and selecting specific methods, including:
      • Case-study/ies.
      • Interviews.
      • Document / text / policy analysis.
      • Observations and participant observations.
      • Analysis of qualitative and quantitative data.
      • Questions of quality, reliability and validity in social science research.
  • Vurderingsuttrykk

    Pass or fail.

  • Sensorordning

    Two examiners. External examiner is used periodically.