182.763 Stochastic Foundations of Cyber-Physical Systems
This course is in all assigned curricula part of the STEOP.
This course is in at least 1 assigned curriculum part of the STEOP.

2022W, VU, 4.0h, 6.0EC
TUWEL

Properties

  • Semester hours: 4.0
  • Credits: 6.0
  • Type: VU Lecture and Exercise
  • Format: Hybrid

Learning outcomes

After successful completion of the course, students are able to master the following competences.

Fachliche und methodische Kompetenzen: Stochastic foundations of cyber-physical systems, artificial intelligence, and robotics. 

 Kognitive und praktische Kompetenzen:

  • Ability to learn stochastic models of CPS. 
  • Ability to perform stochastic analysis of CPS 
  • Ability to design optimal controllers for CPS. 

Soziale Kompetenzen und Selbstkompetenzen: Apprehension of and experience in applying theory for solving practical problems.

Subject of course

  • Probabilistic interpretation of uncertainty.
  • Rational agents as smart cyber-physical systems (CPS).
  • Static (sBN) and dynamic (dBN) Bayesian networks (BN).
  • Uncertain environments as sBN and dBN.
  • Exact and approximate inference in BN.
  • Machine learning (supervised) of sBN and dBN.
  • Decision making and optimal control for Markov Decision Processes.
  • Supervised (sML) and reinforcement (rML) learning.
  • Machine learning (sML and rML) with deep neural networks.
  • Speech-recognition and robotics.

Didactic concept: Topics are tought in the lectures and practiced in exercises including programming exercises, simulation and application on real-world mobile robots.

Teaching methods

Weekly lecture with continually accompanying home-work assignments, deepening the understanding of the module content and increasing the individual problem-solving competence in CPS modelling, analysis, and control. Hand-written or Latex solutions, possibly their mutual peer reviewing, accompanying reading of a book.

Vorlesungen finden hybrid an der TU Wien und online per Zoom statt: https://tuwien.zoom.us/j/94311633591?pwd=eU1DdURuUDVjNmR0bTdRVDQ5RTBkUT09
Falls Sie vor Ort teilnehmen möchten, müssen Sie die Sicherheits- und Schutzmaßnahmen an der TU Wien einhalten.

Mode of examination

Written and oral

Additional information


Lectures start s.t.

ECTS-Breakdown 3 ECTS = 150 hours:

Lecture part:

  • 0.5h  lecture introduction
  • 54h (18 lectures, 2h per lecture + 1h pre/postprocessing)
  • 20h exam preparation
  • 0.5h  oral exam
    ----
    75h

Exercise part:

  • 75h exercises

Lecturers

Institute

Course dates

DayTimeDateLocationDescription
Thu10:00 - 12:0006.10.2022 - 26.01.2023CPS Bibliothek Lecture
Tue10:00 - 12:0011.10.2022 - 24.01.2023CPS Bibliothek Lecture
Stochastic Foundations of Cyber-Physical Systems - Single appointments
DayDateTimeLocationDescription
Thu06.10.202210:00 - 12:00CPS Bibliothek Lecture
Tue11.10.202210:00 - 12:00CPS Bibliothek Lecture
Thu13.10.202210:00 - 12:00CPS Bibliothek Lecture
Tue18.10.202210:00 - 12:00CPS Bibliothek Lecture
Thu20.10.202210:00 - 12:00CPS Bibliothek Lecture
Tue25.10.202210:00 - 12:00CPS Bibliothek Lecture
Thu27.10.202210:00 - 12:00CPS Bibliothek Lecture
Thu03.11.202210:00 - 12:00CPS Bibliothek Lecture
Tue08.11.202210:00 - 12:00CPS Bibliothek Lecture
Thu10.11.202210:00 - 12:00CPS Bibliothek Lecture
Thu17.11.202210:00 - 12:00CPS Bibliothek Lecture
Tue22.11.202210:00 - 12:00CPS Bibliothek Lecture
Thu24.11.202210:00 - 12:00CPS Bibliothek Lecture
Tue29.11.202210:00 - 12:00CPS Bibliothek Lecture
Thu01.12.202210:00 - 12:00CPS Bibliothek Lecture
Tue06.12.202210:00 - 12:00CPS Bibliothek Lecture
Tue13.12.202210:00 - 12:00CPS Bibliothek Lecture
Thu15.12.202210:00 - 12:00CPS Bibliothek Lecture
Tue20.12.202210:00 - 12:00CPS Bibliothek Lecture
Thu22.12.202210:00 - 12:00CPS Bibliothek Lecture

Examination modalities

Homework/project assignments and oral examination.

Course registration

Begin End Deregistration end
26.09.2022 23:59 17.10.2022 23:59 17.10.2022 23:59

Registration modalities

Registration to the course via TISS. You will be added to the TUWEL course, where the rest of the course will be organized.

Curricula

Study CodeObligationSemesterPrecon.Info
066 938 Computer Engineering Mandatory

Literature

S. Russel and P. Norvig, Artificial Intelligence - A Modern Approach, 3rd ed., Upper Saddle River, New Jersey: Pearson Education, 2010.

R.S. Sutton and A.G. Barto - Reinforcement Learning An Introduction second edition. The MIT Press Cambridge, Massachusetts London,  England, 2018.

Previous knowledge

Mandatory prerequisites: None. The following prerequisites are helpful but not mandatory.

Fachliche und methodische Kompetenzen: Probability theory, stochastic signals, control theory, discrete mathematics.

Kognitive und praktische Kompetenzen: Mathematical reasoning and implementation skills. 

Soziale Kompetenzen und Selbstkompetenzen: Independent work, interest in combining theory and practice. 

These prerequisites are provided in the following modules: Wahrscheinlichkeitstheorie und Stochastische Prozesse, Signale und Systeme, Modellbildung und Regelungstechnik, Discrete Mathematics

Continuative courses

Language

English