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Statuss(Neaktīvs) Izdruka Arhīvs(0) Studiju plāns Vecais plāns Kursu katalogs Vēsture

Course title Mathematical Modelling of Processes I
Course code Mate5015
Credit points (ECTS) 3
Total Hours in Course 81
Number of hours for lectures 12
Number of hours for laboratory classes 12
Independent study hours 57
Date of course confirmation 10/02/2016
Responsible Unit Institute of Mathematics and Physics
 
Course developers
Dr. math., asoc. prof. Svetlana Atslēga
Dr. sc. ing., asoc. prof. Tatjana Rubina

There is no prerequisite knowledge required for this course
 
Course abstract
The aim of this course is to accumulate the knowledge of the mathematical models creation, their application and realization possibilities in the program Matlab, application and development of the programming skills in the decision of different problems using mathematical modelling. Within the course it is supposed to consider examples of different mathematical models, which describe the processes occurring in the nature, living and social systems.
Learning outcomes and their assessment
• knowledge of approximation and interpolation of functions, finite difference, spline interpolation, cubic splines, mathematical modeling, rand;
• skills evaluate algebraic expressions, plot the graphs of functions using software Matlab, approximate and interpolate, define a random sample, construct a distribution, formulate a mathematical model of a given situation, solve the model, interpret the solution, use Monte Carlo method; • competence of mathematical thinking, of handle symbols and formal mathematics language, of mathematical problem formulating and solving, of reasoning, of modelling (ability analyze and build mathematical models concerning other area), of aids and tools (ability to make use of and relate to the aids and tools of mathematics, incl. IT) and of communication (ability to communicate in, with and about mathematics).
Compulsory reading
1. Kronbergs E., Rivža P., Bože Dz. Augstākā matemātika II daļa. Rīga: Zvaigzne, 1988. 527 lpp.
2. Lorencs A. Statistisku datu ieguve un analīze. Rīga: Latvijas Universitāte, 2003. 60 lpp. 3. Ануфриев И., Смирнов А., Смирнова Е. MATLAB 7. Санкт-Петербург: БХВ-Петербург, 2005. 1104 с.
Further reading
1. Christian P. Robert, George Casella. Monte Carlo statistical methods. Springer, 2004. 645 p.
2. Said Elnashaie, Frank Uhlig. Numerical techniques for Chemical and biological engineers using MATLAB. A simple bifurcation approach. Springer, 2007. 590 p. 3. Самарский А.А., Гулин А.В. Численные методы: Учеб. пособие для вузов. Москва: Наука, 1989. 432 с.