On Simplification of Models with Uncertainty
Author
Summary, in English
In this thesis, error bounds for comparison and simplification of models with uncertainty are presented. The considered simplification method is a generalization of the Balanced truncation method for linear time-invariant models. The uncertain components may be both dynamic and nonlinear and are described using integral quadratic constraints.
The thesis also considers robustness analysis of large nonlinear differential-algebraic models with parametric uncertainty. A general computational methodology based on linearization and reduction techniques is presented. The method converts the analysis problem into computation of structured singular values, while keeping the matrix dimensions low. The methodology is successfully applied to a model of the Nordel power system.
An overview of model simplification is also given.
Department/s
Publishing year
1999
Language
English
Publication/Series
PhD Thesis TFRT-1054
Full text
Document type
Dissertation
Publisher
Department of Automatic Control, Lund Institute of Technology (LTH)
Topic
- Control Engineering
Keywords
- Linear matrix inequalities (LMIs)
- Integral quadratic constraints (IQCs)
- Linearization
- Nonlinear Models
- Uncertainty
- Power systems
- Robustness analysis
- Error bounds
- Model simplification
- Model reduction
- Automation
- robotics
- control engineering
- Automatiska system
- robotteknik
- reglerteknik
Status
Published
Supervisor
ISBN/ISSN/Other
- ISSN: 0280-5316
- ISSN: 0280-5316
Defence date
24 September 1999
Defence time
13:15
Defence place
Room E:1406, building E, Lund Institute of Technology
Opponent
- David Limebeer (Professor)