Project Details
Decision-making under uncertainty: including prior knowledge from physics
Applicant
Dr. Michael Muehlebach
Subject Area
Automation, Mechatronics, Control Systems, Intelligent Technical Systems, Robotics
Term
since 2021
Project identifier
Deutsche Forschungsgemeinschaft (DFG) - Project number 456587626
The current paradigm in supervised machine learning and artificial intelligence is to fit high-capacity models to large amounts of data. Prior information, such as causal structures, first-principles, or a-priori known symmetries, is often discarded, and as a result, the predictions may not generalize to unforeseen situations, i.e., situations that are not adequately captured with the training data. We propose to analyze the problem of decision-making in such situations, which includes investigating and developing data-driven methods that explicitly incorporate prior knowledge from physics. The incorporation of prior information might also lead to an efficient quantification of prediction uncertainties and can potentially be exploited by optimization algorithms for fast decision-making. As a result, the research contributes to a safe and reliable deployment of machine learning and artificial intelligence in cyber-physical applications.
DFG Programme
Independent Junior Research Groups