Duration:
2 Semester | Turnus of offer:
starts every winter semester | Credit points:
12 |
Course of studies, specific field and terms: - Master Robotics and Autonomous Systems 2019 (advanced curriculum), advanced curriculum, 1st and 2nd semester
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Classes and lectures: - Technology of Autonomous Vehicles (seminar, 2 SWS)
- Perception for Autonomous Vehicles (exercise, 2 SWS)
- Perception for Autonomous Vehicles (lecture, 2 SWS)
- Vehicle Dynamics and Control (exercise, 2 SWS)
- Vehicle Dynamics and Control (lecture, 2 SWS)
| Workload: - 60 Hours exam preparation
- 220 Hours private studies
- 80 Hours in-classroom work
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Contents of teaching: | - Content of teaching of the course Vehicle Dynamics and Control:
- Review of control methods and rigid body dynamics
- Basic terminology of vehicle dynamics
- Vehicle dynamic models (lateral, longitudinal, vertical)
- Component models (engine, transmission, brake, steering)
- Tire modeling
- Stability analysis
- Handling performance
- Active safety systems
- Autonomous driving
- Content of teaching of the course Perception for Autonomous Driving:
- The architecture of autonomous-driving systems
- Tracking, detection, classification
- Models of stochastic signals
- Transform-based analysis of stochastic signals
- System theory
- Parameter estimation
- Linear optimal filters and adaptive filters
- Graphical models and dynamic Bayes networks
- Neural networks
- Hidden Markov Models, Kalman Filter, Particle Filter, etc.
- Applications in the domain of autonomous driving
- Content of teaching of the seminar Current Topics in Autonomous Vehicles:
- Current algorithms in machine learning and artificial intelligence related to autonomous driving
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Qualification-goals/Competencies: - Educational objectives of the course Vehicle Dynamics and Control:
- Students master basic terminology and concepts of vehicle dynamics.
- Students obtain a comprehensive understanding of the dynamics of a vehicle.
- Students understand the main objectives of vehicle control.
- Students can derive basic vehicle dynamics models for control design.
- Students are able to apply concepts of basic and advanced control and estimation to practical problems.
- Students get an insight into the field of active safety systems, driver assistance, and autonomous driving.
- Students are able to perform independent design, research and development work in this field.
- Educational objectives of the course Perception for Autonomous Driving:
- Students get an overview on autonomous-driving systems.
- Students become thoroughly acquainted with the perception layer of the architecture of an autonomous-driving system.
- Students get a comprehensive introduction to stochastic signals.
- Students master tools for the analysis of stochastic signals.
- Students are able to make use of various models for stochastic signals.
- Students are able to design tracking algorithms.
- Students are able devise algorithmic solutions to decision problems, while making use of prior knowledge.
- Educational objectives of the seminar Current Topics in Autonomous Vehicles:
- Students are able to research and understand current literature.
- Students are able to reproduce and evaluate current algorithms based on research literature.
- Students are able reproduce, extend and present results from current research literature.
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Grading through: - Written or oral exam as announced by the examiner
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Requires: |
Responsible for this module: - Prof. Dr. Georg Schildbach
Teachers: - Prof. Dr. Georg Schildbach
- PD Dr.-Ing. habil. Alexandru Paul Condurache
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Literature: - Rajamani, R: Vehicle Dynamics and Control (2nd edition) - Springer, 2012, ISBN 978-1-4614-1432-2
- Mitschke, M; Wallentowitz, H.: Dynamik der Kraftfahrzeuge (5th edition) - Springer, 2014 (ISBN: 978-3-658-05067-2)
- Charles W. Therrien: Decision estimation and classification - J. Wiley and Sons, 1991.
- Simon Haykin: Adaptive Filter Theory - Prentice Hall, 1996
- Christopher M. Bishop: Pattern recognition and machine learning - Springer, 2006
- A. Mertins: Signaltheorie: Grundlagen der Signalbeschreibung, Filterbänke, Wavelets, Zeit-Frequenz-Analyse, Parameter- und Signalschätzung - Springer-Vieweg, 3. Auflage, 2013
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Language: |
Notes:Admission requirements for taking the module: - None Admission requirements for participation in module examination(s): - Successful completion of exercises as specified at the beginning of the semester. Module Examination(s): - RO5500-L1: Vehicle Dynamics and Control, written exam, 60min, 50% of module grade - RO5500-L2: Perception for Autonomous Vehicles, written exam, 60min, 50% of the module grade - RO5500-L3 Technology of Autonomous Vehicles; Seminar; ungraded; 0% of module grade, must be passed |
Letzte Änderung: 7.10.2021 |
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