Structural Inference of Networked Dynamical Systems with Universal
Differential Equations
- URL: http://arxiv.org/abs/2207.04962v1
- Date: Mon, 11 Jul 2022 15:40:53 GMT
- Title: Structural Inference of Networked Dynamical Systems with Universal
Differential Equations
- Authors: James Koch, Zhao Chen, Aaron Tuor, Jan Drgona, Draguna Vrabie
- Abstract summary: Networked dynamical systems are common throughout science in engineering.
We seek to infer (i) the intrinsic physics of a base unit of a population, (ii) the underlying graphical structure shared between units, and (iii) the coupling physics of a given networked dynamical system.
- Score: 2.4231435999251927
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Networked dynamical systems are common throughout science in engineering;
e.g., biological networks, reaction networks, power systems, and the like. For
many such systems, nonlinearity drives populations of identical (or
near-identical) units to exhibit a wide range of nontrivial behaviors, such as
the emergence of coherent structures (e.g., waves and patterns) or otherwise
notable dynamics (e.g., synchrony and chaos). In this work, we seek to infer
(i) the intrinsic physics of a base unit of a population, (ii) the underlying
graphical structure shared between units, and (iii) the coupling physics of a
given networked dynamical system given observations of nodal states. These
tasks are formulated around the notion of the Universal Differential Equation,
whereby unknown dynamical systems can be approximated with neural networks,
mathematical terms known a priori (albeit with unknown parameterizations), or
combinations of the two. We demonstrate the value of these inference tasks by
investigating not only future state predictions but also the inference of
system behavior on varied network topologies. The effectiveness and utility of
these methods is shown with their application to canonical networked nonlinear
coupled oscillators.
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