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Relation to DMDc? #1
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Dear Christian, thanks for your email and for your interest in our work. Even though I am not an expert in dynamic mode decomposition myself, I will try to point out some relations and differences between our work and the references that you mentioned. A big open question is always how to go to nonlinear systems. While we propose to approximate the linearized system together with the linearization error (Lagrange remainder), another option is to lift the nonlinear system via basis functions (which goes in the direction of applying Koopman operator theory). So there is not a lot of connection between our work and the second reference, but it would certainly be a very interesting idea whether Koopman theory (and DMC) can also be used to receive guaranteed reachability analysis of nonlinear systems from data (however - in my opinion - a non-trivial task). |
How (if at all) is Section 2 in this code's associated preprint "Data-Driven Reachability Analysis Using Matrix Zonotopes"
related to dynamic mode decomposition with control (see references below)? The use of the X+, X- and U- looks somewhat similar.
Proctor, J.L., Brunton, S.L., Kutz, J.N.: Dynamic mode decomposition with control.
SIAM J. Appl. Dyn. Syst. 15(1), 142--161 (2016). https://doi.org/10.1137/15M1013857
Proctor, J.L., Brunton, S.L., Kutz, J.N.: Generalizing Koopman Theory to Allow for Inputs and Control.
SIAM J. Appl. Dyn. Syst. 17(1), 909--930 (2018). https://doi.org/10.1137/16M1062296
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