Technische Universität Ilmenau

System Identification - Interactive curriculae of TU Ilmenau

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module properties System Identification in degree program Master Biomedical Engineering by Research 2025
module number200090
examination number220459
departmentDepartment of Computer Science and Automation
ID of group 2211 (Automation Engineering)
module leaderProf. Dr. Yuri Shardt
term winter term only
languageEnglisch
credit points5
on-campus program (h)45
self-study (h)105
obligationelective module
examexamination performance with multiple performances
details of the certificateDas Modul System Identification mit der Prüfungsnummer 220459 schließt mit folgenden Leistungen ab:
  • schriftliche Prüfungsleistung über 120 Minuten mit einer Wichtung von 100% (Prüfungsnummer: 2200752)
  • Studienleistung mit einer Wichtung von 0% (Prüfungsnummer: 2200753)


Details zum Abschluss Teilleistung 2:

Pass for the laboratory component

link to Moodle course
teacherProf. Dr. Shardt, Yuri
signup details for alternative examinations
maximum number of participants
previous knowledge and experience

Knowledge from the courses “Control Engineering I”

learning outcome

By the end of this course, students should be able to understand the principles of creating models for complex processes using different methods and approaches. From the lectures, they will have learnt linear regression, nonlinear regression, design of experiments, and time series analysis, while from the laboratory, they will have learnt to apply the system identification framework to solve relevant modelling and identification problems. From the lectures and laboratories, the students should have learnt how to develop and implement solutions that require the use of statistics, linear regression, and experimental design for real-world problems. They should have learnt to constructively take criticism and implement comments and suggestions from their instructors and fellow students.

content

The course content is:

1. Data Visualisation

2. Statistical Tests

3. Linear Regression

4. Nonlinear Regression

5. Design of Experiments

Laboratory (1 Session: Identification I)

media of instruction and technical requirements for education and examination in case of online participation

Presentations, Course notes, and Whiteboard lectures, online according to the regulations of TU Ilmenau, Moodle

literature / references

· Y. A.W. Shardt, Statistics for Chemical and Process Engineers: A Modern Approach, Springer, 2022, https://doi.org/10.1007/978-3-030-83190-5.

· L. Ljung, System Identification: Theory for the user, Prentice Hall, 1999.

evaluation of teaching