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Discovery of Nonlinear Multiscale Systems: Sampling Strategies and Embeddings (1805.07411v1)

Published 18 May 2018 in math.DS

Abstract: A major challenge in the study of dynamical systems is that of model discovery: turning data into models that are not just predictive, but provide insight into the nature of the underlying dynamical system that generated the data. This problem is made more difficult by the fact that many systems of interest exhibit diverse behaviors across multiple time scales. We introduce a number of data-driven strategies for discovering nonlinear multiscale dynamical systems and their embeddings from data. We consider two canonical cases: (i) systems for which we have full measurements of the governing variables, and (ii) systems for which we have incomplete measurements. For systems with full state measurements, we show that the recent sparse identification of nonlinear dynamical systems (SINDy) method can discover governing equations with relatively little data and introduce a sampling method that allows SINDy to scale efficiently to problems with multiple time scales. Specifically, we can discover distinct governing equations at slow and fast scales. For systems with incomplete observations, we show that the Hankel alternative view of Koopman (HAVOK) method, based on time-delay embedding coordinates, can be used to obtain a linear model and Koopman invariant measurement system that nearly perfectly captures the dynamics of nonlinear quasiperiodic systems. We introduce two strategies for using HAVOK on systems with multiple time scales. Together, our approaches provide a suite of mathematical strategies for reducing the data required to discover and model nonlinear multiscale systems.

Citations (137)

Summary

Overview of "Discovery of Nonlinear Multiscale Systems: Sampling Strategies and Embeddings"

The paper by Kathleen P. Champion, Steven L. Brunton, and J. Nathan Kutz presents advanced methodologies for discovering nonlinear multiscale dynamical systems from data, with a focus on handling diverse behaviors across multiple time scales. The research addresses two significant cases: systems with full measurements of governing variables, and those with incomplete data.

The primary goal is to convert data into models that provide both predictions and insights into the underlying dynamics. The paper introduces techniques to enhance model discovery, particularly when dealing with multiscale phenomena. This involves adaptations of the Sparse Identification of Nonlinear Dynamical Systems (SINDy) algorithm and the Hankel Alternative View of Koopman (HAVOK) method.

Discovering Multiscale Dynamics with Full Measurements

For systems with complete state measurements, the authors extend the SINDy method, a tool for identifying sparse models from data. SINDy is particularly noted for its ability to identify governing equations of nonlinear systems using sparse regression.

  • Sampling Challenges: One notable contribution is a novel sampling strategy that allows SINDy to efficiently handle problems involving multiple time scales. This "burst sampling" technique separates time scales by strategically sampling fast dynamics in short bursts over a longer duration to capture slow dynamics efficiently.
  • Multiscale Systems: The paper assesses multiscale systems like coupled Van der Pol oscillators and blended periodic Lorenz systems, demonstrating the refinement in data efficiency as the time scale separation increases.

The results are compelling in showing that SINDy can decode multiscale dynamics with less data compared to traditional methods, maintaining performance as time scale ratios grow.

Tackling Incomplete Data with Embedding Techniques

When full state measurements are unavailable, the HAVOK approach is employed. HAVOK extends dynamic mode decomposition by utilizing time-delay embedding, which allows for the reconstruction of a system's state from a series of measured outputs.

  • Embedding Strategy: For systems with partial observations, time-delay coordinates are pivotal in approximating the dynamics. HAVOK allows the researchers to construct linear models that perform well in capturing the essential physics of systems with latent variables.
  • Novel Multiscale Handling: Two approaches are explored for multiscale systems with incomplete data:
    • Delay Spacing: Adjusting row and column spacing in delay matrices, enabling the capture of slow dynamics without requiring prohibitively large matrices.
    • Iterative Modeling: An approach where fast dynamics are modeled separately, subtracted out, and then combined with slow dynamics models derived from downsampled data.

These methods together provide a robust framework for extracting reduced-order models from complex data, even when observations are incomplete.

Implications and Future Prospects

This research enhances the repertoire of tools available for model discovery in nonlinear dynamical systems, especially those exhibiting multiscale features. The adaptations to SINDy and HAVOK demonstrate significant potential for practical applications in fields like neuroscience, climate science, and engineering, where multiscale phenomena are prevalent.

Future developments could integrate these techniques with real-time data collection to optimize both model accuracy and computational efficiency. Moreover, exploring automated strategies for selecting model parameters might further bolster the usability of these methods in various applied contexts.

Overall, the paper lays a strong foundation for advancing data-driven discovery in dynamical systems, highlighting the importance of innovative sampling and embedding strategies in bridging the gap between data and interpretable models.

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