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Title:

Towards Data-driven LQR with Koopmanizing Flows

Document type:
Konferenzbeitrag
Contribution type:
Textbeitrag / Aufsatz
Author(s):
Petar Bevanda, Max Beier, Shahab Heshmati-Alamdari, Stefan Sosnowski, Sandra Hirche
Pages contribution:
13-18
Abstract:
We propose a novel framework for learning linear time-invariant (LTI) models for a class of continuous-time non-autonomous nonlinear dynamics based on a representation of Koopman operators. In general, the operator is infinite-dimensional but, crucially, linear. To utilize it for effcient LTI control design, we learn a finite representation of the Koopman operator that is linear in controls while concurrently learning meaningful lifting coordinates. For the latter, we rely on Koopmanizing Flows...     »
Keywords:
Machine learning, Koopman operators, Learning for control, Representation Learning, Neural networks, Learning Systems
Horizon 2020:
SeaClear
Editor:
Elsevier
Book / Congress title:
IFAC-PapersOnLine
Congress (additional information):
6th IFAC Conference on Intelligent Control and Automation Sciences ICONS 2022: Cluj-Napoca, Romania, 13–15 July 2022
Volume:
55
Edition:
15
Year:
2022
Month:
Jul
Pages:
6
Covered by:
Scopus; Web of Science
Bookseries volume:
15
Language:
en
Fulltext / DOI:
doi:https://doi.org/10.1016/j.ifacol.2022.07.601
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