Course details

Intelligent Systems

SIN Acad. year 2009/2010 Winter semester 5 credits

Current academic year

Intelligent system, intelligent systems modeling, simulation in the design of systems, uncertain and incomplete information processing, introduction to softcomputing, agent and multiagent architectures, learning and adaptive systems, reinforcement learning, planing and scheduling, applications.

Guarantor

Language of instruction

Czech

Completion

Examination

Time span

  • 26 hrs lectures
  • 10 hrs exercises
  • 2 hrs pc labs
  • 13 hrs projects

Department

Subject specific learning outcomes and competences

Students acquire knowledge of principles and design of intelligent systems.

Learning objectives

To acquaint students with theory and principles of intelligent systems.

Prerequisite knowledge and skills

Artificial intelligence basics: Problem solving, state space search, problem decomposition.
Modeling and Simulation basics: System, model, simulation, simulation time, discrete event simulation, continuous systems simulation.

Study literature

    1. Russel, S., Norvig, P.: Artificial Intelligence, a Modern Approach, Pearson Education Inc., 2003, ISBN 0-13-080302-2
    2. Zeigler, B.P.: Theory of Modeling and Simulation, Academic Press; 2 edition (March 15, 2000), ISBN 978-0127784557
    3. Valeš, M.: Inteligentní dům. Brno, Vydavatelství ERA, 2006.
    4. Přibyl, P., Svítek, M.: Inteligentní dopravní systémy, Nakladatelství BEN, Praha 2001, ISBN 80-7300-029-6
    5. Automatizace. http://www.automatizace.cz/

Syllabus of lectures

  1. Introduction. Intelligent systems overview
  2. Agent architectures
  3. Simulation modeling in the development of intelligent systems
  4. Fuzzy logic and fuzzy control
  5. Learning systems. Neural networks
  6. Genetic algorithms. Genetic programming
  7. Markov decision process, reinforcement learning
  8. Planing and Scheduling 
  9. Games theory
  10. Robotic systems
  11. Multiagent systems
  12. Selected applications
  13. Summary

Syllabus of numerical exercises

  1. Jazyky pro umělou inteligenci
  2. Základy Smalltalku
  3. Modelování na bázi DEVS
  4. Modelování inteligentních systémů
  5. Simulovaná robotika

Progress assessment

Study evaluation is based on marks obtained for specified items. Minimimum number of marks to pass is 50.

Controlled instruction

  • Mid-term written test
  • PC lab
  • Individuální project

Course inclusion in study plans

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