Method for reconstructing nonlinear modes with adaptive structure from multidimensional data
We present a detailed description of a new approach for the extraction of principal nonlinear dynamical modes (NDMs) from high-dimensional data. The method of NDMs allows the joint reconstruction of hidden scalar time series underlying the observational variability together with a transformation map...
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Veröffentlicht in: | Chaos (Woodbury, N.Y.) N.Y.), 2016-12, Vol.26 (12), p.123101-123101 |
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Sprache: | eng |
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Zusammenfassung: | We present a detailed description of a new approach for the extraction of principal
nonlinear
dynamical modes (NDMs) from high-dimensional data. The method of NDMs allows the joint
reconstruction of hidden scalar time series underlying the observational variability together with a
transformation mapping these time
series to the physical space. Special Bayesian prior restrictions on the
solution properties provide an efficient recognition of spatial patterns evolving in time
and characterized by clearly separated time scales. In particular, we focus on adaptive
properties of the NDMs and demonstrate for model examples of different complexities that,
depending on the data properties, the obtained NDMs may have either substantially
nonlinear or
linear structures. It is shown that even linear NDMs give us more information about the
internal system dynamics than the traditional empirical orthogonal function
decomposition. The performance of the method is demonstrated on two examples. First, this
approach is successfully tested on a low-dimensional problem to decode a chaotic signal
from nonlinearly entangled time
series with noise. Then, it is applied to the analysis of 250-year
preindustrial control run of the INMCM4.0 global climate model. There, a set of principal modes of
different nonlinearities is found capturing the internal model variability on the
time scales from annual to multidecadal. |
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ISSN: | 1054-1500 1089-7682 |
DOI: | 10.1063/1.4968852 |