Neural Autoencoder-Based Structure-Preserving Model Order Reduction and Control Design for High-Dimensional Physical Systems

Journal Article (2024)
Author(s)

Marco Lepri (University of Pisa, NEC Laboratories Europe)

Davide Bacciu (University of Pisa)

C. Lieu (TU Delft - Learning & Autonomous Control, Deutsches Zentrum für Luft- und Raumfahrt (DLR))

Research Group
Learning & Autonomous Control
Copyright
© 2024 M. Lepri, Davide Bacciu, C. Della Santina
DOI related publication
https://doi.org/10.1109/LCSYS.2023.3344286
More Info
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Publication Year
2024
Language
English
Copyright
© 2024 M. Lepri, Davide Bacciu, C. Della Santina
Research Group
Learning & Autonomous Control
Volume number
8
Pages (from-to)
133-138
Reuse Rights

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Abstract

This letter concerns control-oriented and structure-preserving learning of low-dimensional approximations of high-dimensional physical systems, with a focus on mechanical systems. We investigate the integration of neural autoencoders in model order reduction, while at the same time preserving Hamiltonian or Lagrangian structures. We focus on extensively evaluating the considered methodology by performing simulation and control experiments on large mass-spring-damper networks, with hundreds of states. The empirical findings reveal that compressed latent dynamics with less than 5 degrees of freedom can accurately reconstruct the original systems' transient and steady-state behavior with a relative total error of around 4%, while simultaneously accurately reconstructing the total energy. Leveraging this system compression technique, we introduce a model-based controller that exploits the mathematical structure of the compressed model to regulate the configuration of heavily underactuated mechanical systems.