Course detail
Applied Evolutionary Algorithms
FIT-EVOAcad. year: 2022/2023
Overview of principles of stochastic search techniques: Monte Carlo (MC) methods, evolutionary algorithms (EAs). Detailed explanation of selected MC algorithms: Metropolis algorithm, simulated annealing, their application for optimization and simulation. Overview of basic principles of EAs: evolutionary programming (EP), evolution strategies (ES), genetic algorithms (GA), genetic programming (GP). Advanced EAs and their applications: numerical optimization, differential evolution (DE), social algoritmhs: ant colony optimization (ACO) and particle swarm optimization (PSO). Multiobjective optimization algorithms. Applications in solving engineering problems and artificial intelligence.
Language of instruction
Number of ECTS credits
Mode of study
Guarantor
Department
Learning outcomes of the course unit
Prerequisites
Co-requisites
Planned learning activities and teaching methods
Assesment methods and criteria linked to learning outcomes
Course curriculum
Work placements
Aims
Specification of controlled education, way of implementation and compensation for absences
Computer practices, project submission, final exam.
Recommended optional programme components
Prerequisites and corequisites
Basic literature
Brabazon, A., O'Neill, M., McGarraghy, S.: Natural Computing Algorithms. Springer-Verlag Berlin Heidelberg, 2015, ISBN 978-3-662-43630-1
Eiben, A.E., Smith, J.E.: Introduction to Evolutionary Computing, 2nd ed. Springer-Verlag Berlin Heidelberg, 2015, ISBN 978-3-662-44873-1
Jansen, T.: Analyzing Evolutionary Algorithms. Springer-Verlag, Berlin Heidelberg, 2013, ISBN 978-3-642-17338-7
Recommended reading
Eiben, A.E., Smith, J.E.: Introduction to Evolutionary Computing, 2nd ed. Springer-Verlag Berlin Heidelberg, 2015, ISBN 978-3-662-44873-1
Kvasnička, V., Pospíchal, J., Tiňo, P.: Evolučné algoritmy. STU Bratislava, Bratislava, 2000, ISBN 80-227-1377-5
Luke, S.: Essentials of Metaheuristics. Lulu, 2015, ISBN 978-1-300-54962-8
Talbi, E.-G.: Metaheuristics: From Design to Implementation. Wiley, Hoboken, New Jersey, 2009, ISBN 978-0-470-27858-1
Elearning
Classification of course in study plans
- Programme IT-MSC-2 Master's
branch MBS , 0 year of study, summer semester, elective
branch MGM , 0 year of study, summer semester, elective
branch MIN , 0 year of study, summer semester, elective
branch MIS , 0 year of study, summer semester, elective
branch MMM , 0 year of study, summer semester, elective
branch MSK , 0 year of study, summer semester, elective - Programme MITAI Master's
specialization NADE , 0 year of study, summer semester, elective
specialization NBIO , 0 year of study, summer semester, elective
specialization NCPS , 0 year of study, summer semester, elective
specialization NEMB , 0 year of study, summer semester, elective
specialization NGRI , 0 year of study, summer semester, elective
specialization NHPC , 0 year of study, summer semester, elective
specialization NIDE , 0 year of study, summer semester, elective
specialization NISD , 0 year of study, summer semester, elective
specialization NISY up to 2020/21 , 0 year of study, summer semester, elective
specialization NMAL , 0 year of study, summer semester, elective
specialization NMAT , 0 year of study, summer semester, elective
specialization NNET , 0 year of study, summer semester, elective
specialization NSEC , 0 year of study, summer semester, elective
specialization NSEN , 0 year of study, summer semester, elective
specialization NSPE , 0 year of study, summer semester, elective
specialization NVER , 0 year of study, summer semester, elective
specialization NVIZ , 0 year of study, summer semester, elective
specialization NISY , 0 year of study, summer semester, elective - Programme IT-MSC-2 Master's
branch MBI , 0 year of study, summer semester, compulsory-optional
branch MPV , 0 year of study, summer semester, compulsory-optional - Programme MITAI Master's
specialization NEMB up to 2021/22 , 0 year of study, summer semester, elective
Type of course unit
Lecture
Teacher / Lecturer
Syllabus
- Principles of stochastic search algorithms.
- Monte Carlo methods.
- Evolutionary programming and evolution strategies.
- Genetic algorithms.
- Genetic programming.
- Differential evolution.
- Ant colony optimization.
- Particle swarm optimization.
- Statistical evaluation of experiments.
- Models of computational development.
- Fundamentals of multiobjective optimization.
- Advanced algorithms for multiobjective optimization.
- Applications of evolutionary algorithms.
Exercise in computer lab
Teacher / Lecturer
Syllabus
- Basic concepts of evolutionary computing, typical problems, solution of a technical task using a variant of Metropolis algorithm.
- Evolutionary algorithms in engineering areas, optimization of electronic circuits using genetic algorithm.
- Evolutionary design using genetic programming.
- Edge detection based on ant algorithms.
- Differential evolution-based optimization of neural networks.
- Solution of a selected task from statistical physics.
Project
Teacher / Lecturer
Syllabus
Elearning