*Title:
Autonomous System Control in Unknown Operating Conditions
*Abstract:
Autonomous systems have become an interconnected part of everyday life with the recent
increases in computational power available for both onboard computers and offline data
processing. Two main research communities, Optimal Control and Reinforcement Learning
stand out in the field of autonomous systems, each with a vastly different perspective on
the control problem. While model-based controllers offer stability guarantees and are used
in nearly all real-world systems, they require a model of the system and operating
environment. The training of learning- based controllers is currently mostly limited to
simulators, which also require a model of the system and operating environment. It is not
possible to model every possible operating scenario an autonomous system can encounter in
the real world at design time and currently, no control methods exist for such scenarios.
In this seminar, we present a hybrid control framework, comprised of a learning-based
supervisory controller and a set of model-based low-level controllers, that can improve a
system’s robustness to unknown operating conditions.
*Speaker:
Yves Sohege, affiliated to the Insight Centre for Data Analytics, University College Cork
(UCC), Ireland, is a 26-year-old PhD student at UCC. He have been working remotely from
the Netherlands for the past two years. He completed his BSc in Computer Science in UCC in
2016 during which he was nominated for Graduate of the Year and received the Quercus
Scholarship for Academic Performance. His research interests are focused around
Reinforcement Learning and fault-tolerant control, specifically focusing on unknown
operating conditions and quadcopter control.
*Date:
Wednesday, April 7, 2021, at 14:00
*Zoom link:
https://supsi.zoom.us/j/99954565468
ID meeting: 999 5456 5468 (no password needed)