BEGIN:VCALENDAR VERSION:2.0 PRODID:-//132.216.98.100//NONSGML kigkonsult.se iCalcreator 2.20.4// BEGIN:VEVENT UID:20260522T065838EDT-3764pFk0Db@132.216.98.100 DTSTAMP:20260522T105838Z DESCRIPTION:Abstract\n\nThe autonomous driving industry's rapid growth high lights the necessity for advanced technologies to guarantee safety\, comfo rt\, and efficiency. This thesis focuses on three fundamental aspects of a utonomous driving systems: trajectory prediction\, trajectory planning\, a nd control adaptation. The first contribution of this study is the introdu ction of a new technique for trajectory prediction that utilizes spatial-t emporal graphs to capture historical traffic interactions. The use of a de pthwise graph encoder network and sequential Gated Recurrent Unit decoder improves vehicle trajectory prediction compared to other deep learning met hods. Next\, an innovative online graph planner is introduced for generati ng feasible and comfortable trajectories. The planner creates a spatial-te mporal graph that integrates the autonomous vehicle\, nearby vehicles\, an d virtual road nodes. The graph is then processed using a sequential netwo rk with a behavioral layer for kinematic constraint compliance. Testing th e planner on complex driving tasks demonstrates its effectiveness\, surpas sing existing state-of-the-art approaches. Finally\, a novel approach for online learning in vehicle modeling and lateral control is introduced\, us ing heterogeneous graphs and Graph Neural Networks. This technique enables the vehicle model and lateral controller to adapt to dynamic conditions\, enhancing performance under perturbations. The self-learning model-based lateral controller is evaluated on the CARLA simulator\, showing promising results. These contributions improve trajectory prediction\, planning\, a nd control adaptability\, advancing autonomous driving technology and enha ncing safety and efficiency of autonomous vehicles.\n DTSTART:20241125T193000Z DTEND:20241125T213000Z LOCATION:Room 603\, McConnell Engineering Building\, CA\, QC\, Montreal\, H 3A 0E9\, 3480 rue University SUMMARY:PhD defence of Jilan Samiuddin – Decision making in self-driving ca rs using Graph Neural Networks URL:/ece/channels/event/phd-defence-jilan-samiuddin-de cision-making-self-driving-cars-using-graph-neural-networks-361283 END:VEVENT END:VCALENDAR