Course details
Applied Evolutionary Algorithms
EVO Acad. year 2017/2018 Summer semester 5 credits
Multiobjective optimization problems, standard approaches and stochastic evolutionary algorithms (EA), simulated annealing (SA). Evolution strategies (ES) and genetic algorithms (GA). Tools for fast prototyping. Representation of problems by graph models. Evolutionary algorithms in engineering applications namely in synthesis and physical design of digital circuits, artificial intelligence, signal processing, scheduling in multiprocessor systems and in business commercial applications.
Guarantor
Language of instruction
Completion
Time span
- 26 hrs lectures
- 8 hrs pc labs
- 18 hrs projects
Assessment points
- 60 pts final exam (written part)
- 18 pts labs
- 22 pts projects
Department
Subject specific learning outcomes and competences
Ability of problem formulation for the solution on the base of evolutionary computation. Knowledge of methodology of fast prototyping of evolutionary optimizer utilizing GA library and present design tools.
Learning objectives
Survey about actual optimization techniques and evolutionary algorithms for solution of complex, NP complete problems. To make students familiar with software tools for fast prototyping of evolutionary algorithms and learn how to solve typical complex tasks from engineering practice.
Prerequisite knowledge and skills
There are no prerequisites
Syllabus of lectures
- Evolutionary algorithms, theoretical foundation, basic distribution (GA, EP,GP, ES).
- Genetic algorithms (GA), schemata theory.
- Genetic algorithms using diploids and messy-chromosomes. Specific crossing.
- Representative combinatorial optimization problems.
- Evolutionary programming, Hill climbing algorithm, Simulated annealing.
- Genetic programming.
- Advanced estimation distribution algorithms (EDA).
- Variants of EDA algorithms, UMDA, BMDA and BOA.
- Multimodal and multi-criterial optimization.
- Dynamic optimization problems.
- New evolutionary paradigm: immune systems, differential evolution, SOMA.
- Differential evolution. Particle swarm model.
- Engineering tasks and evolutionary algorithms.
Progress assessment
Study evaluation is based on marks obtained for specified items. Minimimum number of marks to pass is 50.
Controlled instruction
Midterm and final test, one project.
Course inclusion in study plans