Course detail
Optimalization of Controllers
FEKT-MOPRAcad. year: 2018/2019
The course is focused on modern methods of analysis and design of control systems. In the centre of interest are adaptive systems, design of optimal control, predictive controllers and using artificial intelligence in control algorithms.
Language of instruction
Number of ECTS credits
Mode of study
Guarantor
Learning outcomes of the course unit
Prerequisites
Co-requisites
Planned learning activities and teaching methods
Assesment methods and criteria linked to learning outcomes
Examination: Max. 70 points.
Combined test -written part and oral evaluations written processing. Max. 70 points
Course curriculum
Physical background of control.
Discrete analogy of continuous PID algorithms and their variants as a basic reference for comparing the regulators.
Self-tuning Controller (STC)
State controller
Discrete quadratic optimal control LQG methods for design controller
Artificial intelligence in controls algorithms. Fuzzy Logik, fuzzy controllers
Artificial neural networks, learning methods
Adaptive optimal controller with identification by neural networks (quantisation effect).
Control algorithms with using of neural networks
Predictive control
Digital and continuous filtration
Optimal filtration (Kalman filter)
Computer exercise:
Introductory lesson (organisation, instructions, safety). Demonstration. Introduction to Automation Studio for direct implementation of real-time control algorithms in MATLAB/Simulink- PLC B&R-physical models.
Programing S-function in MATLAB.
Realisation of discrete variants of continuous PID controllers, optimizing of setting parameters.
Identification of parameters ARX model in real time.
Submission of projects.
Realisation of self-tuning controller
A proposal of LQ controller
Methods of solving algorithms LQ controllers
Realisation of fuzzy controller
Control of physical models.
Control of heating tunnel.
Control of synchronous motors.
Presentation of protocols, credit.
Work placements
Aims
Specification of controlled education, way of implementation and compensation for absences
Recommended optional programme components
Prerequisites and corequisites
Basic literature
Recommended reading
Classification of course in study plans
Type of course unit
Lecture
Teacher / Lecturer
Syllabus
Design and realisation of PID controllers like ground controller for comparison
Methods of adaptive control, ARX identification
Self tuning controller
Optimal control
State controller
Discrete quadratic optimal control
Continuous quadratic optimal control, the properties of LQ controllers
Fuzzy controllers
Artificial neural networks
Identification by neural networks
Adaptive optimal controller with identification using neural networks
Neural controllers
Predictive and feedback control strategies
Continuous and digital filters
Exercise in computer lab
Teacher / Lecturer
Syllabus
Real-time control with MATLAB/Simulink
Assignment with S-function in MATLAB
Discrette PID controllers and its variants
Identification by ARX model
Design of STC controller
Design of LQ controller
Solution of LQ controller
Verification of neural networks in identification and control
Validation of predictive LQ controller
Design and solution discrete filters
Design and verification of Kalman filter
Evaluation of results, credit.