Literature DB >> 26465583

Nonlinear model reduction for dynamical systems using sparse sensor locations from learned libraries.

Syuzanna Sargsyan1, Steven L Brunton2, J Nathan Kutz1.   

Abstract

We demonstrate the synthesis of sparse sampling and dimensionality reduction to characterize and model nonlinear dynamical systems over a range of bifurcation parameters. First, we construct modal libraries using the classical proper orthogonal decomposition in order to expose the dominant low-rank coherent structures. Here, libraries of the nonlinear terms are also constructed in order to take advantage of the discrete empirical interpolation method and projection that allows for the approximation of nonlinear terms from a sparse number of grid points. The selected grid points are shown to be effective sensing and measurement locations for characterizing the underlying dynamics, stability, and bifurcations of nonlinear dynamical systems. The use of empirical interpolation points and sparse representation facilitates a family of local reduced-order models for each physical regime, rather than a higher-order global model, which has the benefit of physical interpretability of energy transfer between coherent structures. The method advocated also allows for orders-of-magnitude improvement in computational speed and memory requirements. To illustrate the method, the discrete interpolation points and nonlinear modal libraries are used for sparse representation in order to classify and reconstruct the dynamic bifurcation regimes in the complex Ginzburg-Landau equation. It is also shown that point measurements of the nonlinearity are more effective than linear measurements when sensor noise is present.

Mesh:

Year:  2015        PMID: 26465583     DOI: 10.1103/PhysRevE.92.033304

Source DB:  PubMed          Journal:  Phys Rev E Stat Nonlin Soft Matter Phys        ISSN: 1539-3755


  2 in total

1.  Learning partial differential equations via data discovery and sparse optimization.

Authors:  Hayden Schaeffer
Journal:  Proc Math Phys Eng Sci       Date:  2017-01       Impact factor: 2.704

2.  Sparse identification of nonlinear dynamics for model predictive control in the low-data limit.

Authors:  E Kaiser; J N Kutz; S L Brunton
Journal:  Proc Math Phys Eng Sci       Date:  2018-11-14       Impact factor: 2.704

  2 in total

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