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| + | ====== Module: Control, Planning, and Decision-Making (Part 2) ====== | ||
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| + | ^ **Study level** | Master | | ||
| + | ^ **ECTS credits** | 1 ECTS | | ||
| + | ^ **Study forms** | Hybrid or fully online | | ||
| + | ^ **Module aims** | The aim of the module is to introduce validation and verification methods for control, planning and decision-making in autonomous systems. The course develops students’ ability to design, execute and interpret simulation-based and formal testing workflows that assess safety, robustness and standards compliance of autonomy controllers. | | ||
| + | ^ **Pre-requirements** | Basic knowledge of control theory, optimisation and planning algorithms, as well as programming skills or MATLAB. Familiarity with model-based design tools, AI decision-making frameworks or simulation and real-time control environments is recommended but not mandatory. | | ||
| + | ^ **Learning outcomes** | **Knowledge**\\ • Explain simulation-based and formal validation approaches for control and planning systems.\\ • Describe the use of model-checking, | ||
| + | ^ **Topics** | 1. Validation of Control and Planning Systems: | ||
| + | ^ **Type of assessment** | The prerequisite of a positive grade is a positive evaluation of module topics and presentation of practical work results with required documentation | | ||
| + | ^ **Learning methods** | **Lecture** — Cover theory and methodologies for simulation-based and formal validation of control and planning systems.\\ **Lab works** — Implement and test controllers in virtual and hybrid environments (ROS2, MATLAB, CARLA, Scenic, CommonRoad, UPPAAL).\\ **Individual assignments** — Develop validation pipelines, perform reachability analysis, and document results.\\ **Self-learning** — Study research papers and international standards on autonomy verification and formal safety assurance. | | ||
| + | ^ **AI involvement** | AI tools may be used to automate scenario generation, identify unsafe trajectories, | ||
| + | ^ **Recommended tools and environments** | MATLAB/ | ||
| + | ^ **Verification and Validation focus** | | | ||
| + | ^ **Relevant standards and regulatory frameworks** | ISO 26262, ISO 21448 (SOTIF), and IEEE 2846, ASAM OpenSCENARIO | | ||