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Høst 2024
TEK-3017 Applied Optimal Estimation in Engineering Systems - 10 stp
The course is administrated by
Institutt for teknologi og sikkerhet
Type of course
The course is a technical specialization course and can be taken as a singular course.
Course overlap
TEK-8017 Applied Optimal Estimation in Engineering Systems 7 ects
Course contents
The course will contain the main parts:
- Introduction to linear systems with observers
- Optimal estimation for linear systems
- Linear systems with white system and measurement noise
- Approximation of continuous-time linear stochastic systems
- The Bayesian approach to parameter estimation
- Kalman filter (KF) and Extended Kalman filter (EKF)
- KF and EKF in navigation systems
Admission requirements
Application code 9371
To be eligible for the singular course, the applicant must meet the admission requirements for the associated master's programme.
Objective of the course
Knowledge
The student ...
- has advanced knowledge in understanding of linear systems in 1) various engineering applications, 2) fundamental concepts and methods on detection and estimation theory for signal processing, and 3) fundamental concepts and methods on linear systems in the presence of stochastic disturbances,
- has in-depth knowledge in the core methods of this scientific field; Kalman filter (KF) and extended Kalman filter (EFK) methodologies, and its extensions to linear dynamics for stochastic parameter estimation and prediction problems,
- can apply the knowledge in KF and EFK methodologies on developing data driven navigation systems.
Skills
The student ...
- can make critical assessment of the uncertainties in measurements and data in navigation systems,
- can utilize parameter estimation to analyse multivariable system dynamics under stochastic random processes with noisy measurements
- can analyse the future behavior in the state variables of dynamic systems on the basis of past incomplete noisy measurements from one or more sensors (i.e. the sensor fusion approach),
- can utilize models and estimation algorithms, for both discrete-time and continuous-time dynamic systems, subject to one or more stochastic inputs and including noisy measurements from one or more sensors, including the associated algorithms in navigation systems,
- can carry out a R&D project related to navigation systems under guidance.
Competence
The student can ...
- can apply knowledge of KF and EFK methodologies in other fields to carry out advanced work tasks and projects,
- can formulate and solve problems, such as detection of event occurrences, extracting relevant information about the event, parameter estimation, system state estimation, and sensor fusion,
- can communicate relevant problems, analysis and conclusions in the field of navigation systems to experts and non-experts,
- can participate in brainstorming and innovation processes related to the subject.
Language of instruction
English
Teaching methods
30 hours lectures, case studies and group-work.