13E053SSE - Stochastic Systems and Estimation
Course specification | ||||
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Course title | Stochastic Systems and Estimation | |||
Acronym | 13E053SSE | |||
Study programme | Electrical Engineering and Computing | |||
Module | Signals and Systems | |||
Type of study | bachelor academic studies | |||
Lecturer (for classes) | ||||
Lecturer/Associate (for practice) | ||||
Lecturer/Associate (for OTC) | ||||
ESPB | 6.0 | Status | mandatory | |
Condition | none | |||
The goal | Introduce students to tools for modeling and analysis of stochastic processes, and to procedures for parametric estimation. | |||
The outcome | Students will be enabled to apply different methods for the analysis of random processes. They will also gain the necessary theoretical and practical skills which will enable them to properly apply various methods for estimating the parameters of probabilistic models. | |||
Contents | ||||
URL to the subject page | https://automatika.etf.bg.edu.rs/index.php/sr/stohasti%c4%8dki-sistemi-i-estimacija-os3sse | |||
URL to lectures | https://teams.microsoft.com/l/team/19%3AcGvXjvEEIFZcJKl321PSNg6blYVeT76zAlvkPdyhlbA1%40thread.tacv2/conversations?groupId=f1be8732-5fa4-48a6-85e8-5d5f412ebe11&tenantId=1774ef2e-9c62-478a-8d3a-fd2a495547ba | |||
Contents of lectures | Basic probability, random processes: stationarity and ergodicity, white processes, spectral representation, linear filtration, spectral factorization. Estimation theory: minimum variance unbiased estimator, Cramer-Rao lower bound, maximum likelihood, Bayesian approach, Wiener and Kalman filters. | |||
Contents of exercises | Practical implementations of algorithms covered in lectures are demonstrated in class. Through homework assignments, students are required to implement and apply several algorithm for estimation and analysis of random processes using Python and Matlab/Octave. | |||
Literature | ||||
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Number of hours per week during the semester/trimester/year | ||||
Lectures | Exercises | OTC | Study and Research | Other classes |
3 | 2 | |||
Methods of teaching | 45 hours of lectures + 30 hours of auditory exercises | |||
Knowledge score (maximum points 100) | ||||
Pre obligations | Points | Final exam | Points | |
Activites during lectures | 0 | Test paper | 0 | |
Practical lessons | 10 | Oral examination | 60 | |
Projects | ||||
Colloquia | 30 | |||
Seminars | 0 |