Coupled and Uncoupled Dynamic Mode Decomposition in Multi-Compartmental
Systems with Applications to Epidemiological and Additive Manufacturing
Problems
- URL: http://arxiv.org/abs/2110.06375v1
- Date: Tue, 12 Oct 2021 21:42:14 GMT
- Title: Coupled and Uncoupled Dynamic Mode Decomposition in Multi-Compartmental
Systems with Applications to Epidemiological and Additive Manufacturing
Problems
- Authors: Alex Viguerie, Gabriel F. Barros, Mal\'u Grave, Alessandro Reali,
Alvaro L.G.A. Coutinho
- Abstract summary: We show that Dynamic Decomposition (DMD) may be a powerful tool when applied to nonlinear problems.
In particular, we show interesting numerical applications to a continuous delayed-SIRD model for Covid-19.
- Score: 58.720142291102135
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Dynamic Mode Decomposition (DMD) is an unsupervised machine learning method
that has attracted considerable attention in recent years owing to its
equation-free structure, ability to easily identify coherent spatio-temporal
structures in data, and effectiveness in providing reasonably accurate
predictions for certain problems. Despite these successes, the application of
DMD to certain problems featuring highly nonlinear transient dynamics remains
challenging. In such cases, DMD may not only fail to provide acceptable
predictions but may indeed fail to recreate the data in which it was trained,
restricting its application to diagnostic purposes. For many problems in the
biological and physical sciences, the structure of the system obeys a
compartmental framework, in which the transfer of mass within the system moves
within states. In these cases, the behavior of the system may not be accurately
recreated by applying DMD to a single quantity within the system, as proper
knowledge of the system dynamics, even for a single compartment, requires that
the behavior of other compartments is taken into account in the DMD process. In
this work, we demonstrate, theoretically and numerically, that, when performing
DMD on a fully coupled PDE system with compartmental structure, one may recover
useful predictive behavior, even when DMD performs poorly when acting
compartment-wise. We also establish that important physical quantities, as mass
conservation, are maintained in the coupled-DMD extrapolation. The mathematical
and numerical analysis suggests that DMD may be a powerful tool when applied to
this common class of problems. In particular, we show interesting numerical
applications to a continuous delayed-SIRD model for Covid-19, and to a problem
from additive manufacturing considering a nonlinear temperature field and the
resulting change of material phase from powder, liquid, and solid states.
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