638-3002/02 – Modelling and Simulation (MS)

Gurantor departmentDepartment of Automation and Computing in IndustryCredits6
Subject guarantorprof. Ing. Zora Koštialová Jančíková, CSc.Subject version guarantorprof. Ing. Zora Koštialová Jančíková, CSc.
Study levelundergraduate or graduateRequirementCompulsory
Year1Semesterwinter
Study languageEnglish
Year of introduction2014/2015Year of cancellation2020/2021
Intended for the facultiesFMTIntended for study typesFollow-up Master
Instruction secured by
LoginNameTuitorTeacher giving lectures
JAN45 prof. Ing. Zora Koštialová Jančíková, CSc.
Extent of instruction for forms of study
Form of studyWay of compl.Extent
Full-time Credit and Examination 2+2
Part-time Credit and Examination 14+0

Subject aims expressed by acquired skills and competences

Student will be able to formulate the basic methods of simulation models realization on the digital computer. Student will get an overview of the basic principles of mathematic-physical modelling, similarity and modelling and of classic and artificial intelligence methods necessary for model realization. Student will be able to create mathematical models of selected real processes with aim of classic simulation programs and with artificial neural networks exploitation

Teaching methods

Lectures
Tutorials
Project work

Summary

The aim of the course is to acquaint with the methods of implementation of simulation models of dynamic systems. The explanation is based on the mathematical description of the dynamic system. Students are explained the principles of mathematical and physical modelling, principles of theory of similarity and modelling and to the methods necessary for implementation of the model on a digital computer. Students are introduced to artificial intelligence (fuzzy models, expert models, models of neural networks, genetic algorithms), attention is paid mainly to the models of neural networks and their application to the selected technological processes. The exercises consist of creation of mathematical models for selected real dynamic systems and their verification using SIMULINK simulation program. Models of real processes with the use of artificial neural networks are created using software Statistica - Neural Networks, MATLAB -Neural Network Toolbox and NEUREX.

Compulsory literature:

JANČÍKOVÁ, Z. Modelling and simulation. Ostrava: VŠB-TU Ostrava, 2015. RUSSELL, S. J. and P. NORVIG. Artificial intelligence: a modern approach. 3rd ed., Pearson new international ed. Harlow: Pearson, c2014. ISBN 978-1-292-02420-2.

Recommended literature:

CLOSE, Ch. M., D. K. FREDERICK a Jonathan C. NEWELL. Modeling and analysis of dynamic systems. 3rd ed. New York: Wiley, c2002. ISBN 0-471-39442-4.

Way of continuous check of knowledge in the course of semester

E-learning

Integrovaný systém modulární počítačové podpory výuky ekonomicko-technického zaměření (http://lms.vsb.cz) - Vzdělávací modul 1 – Počítačové systémy řízení metalurgických procesů. - animace modelu nádrže s volným odtokem kapaliny, - animace modelu hromadění materiálu na skládce, - animace modelu ohřevu materiálu v peci, - animace modelu pérování automobilu, - animace modelu rekuperátoru. JANČÍKOVÁ, Z. Modelování a simulace. Studijní opory. Ostrava: VŠB-TU Ostrava, 2015.

Other requirements

active participation in seminars

Prerequisities

Subject codeAbbreviationTitleRequirement
638-2008 TS System Theory Recommended
638-2012 IS System Identification Recommended

Co-requisities

Subject has no co-requisities.

Subject syllabus:

Introduction to systems modelling, forms of description of dynamic system. Basic types of modelling (physical, mathematical, cybernetic.) Classification of models according to different viewpoints. Mathematical modelling, analytical and experimental methods of identification of mathematical system description. Simulation of systems, creation of system model, block diagrams. Simulation program SIPRO, SIMULINK,, creation of simulation models. Introduction to similarity and modelling theory, theorems of similarity. Derivation of general criterion equation by analysis of ratio equations. Derivation of general criterion equation using dimensional analysis. Unconventional modelling - artificial intelligence (fuzzy models, artificial neural networks, genetic algorithms). Introduction to neural networks, neuron models, neural network. Learning and generalization of neural networks, learning algorithms. Creation of neural networks models, program NEUREX.

Conditions for subject completion

Conditions for completion are defined only for particular subject version and form of study

Occurrence in study plans

Academic yearProgrammeBranch/spec.Spec.ZaměřeníFormStudy language Tut. centreYearWSType of duty
2017/2018 (N3922) Economics and Management of Industrial Systems (3902T042) Automation and Computing in Industrial Technologies P English Ostrava 1 Compulsory study plan
2016/2017 (N3922) Economics and Management of Industrial Systems (3902T042) Automation and Computing in Industrial Technologies P English Ostrava 1 Compulsory study plan

Occurrence in special blocks

Block nameAcademic yearForm of studyStudy language YearWSType of blockBlock owner

Assessment of instruction

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