2018 Chapters (Layout Features)
Data-adaptive harmonic decomposition and stochastic modeling of Arctic sea ice
We present and apply a novel method of describing and modeling complex multivariate datasets in the geosciences and elsewhere. Data-adaptive harmonic (DAH) decomposition identifies narrow-banded, spatio-temporal modes (DAHMs) whose frequencies are not necessarily integer multiples of each other. The evolution in time of the DAH coefficients (DAHCs) of these modes can be modeled using a set of coupled Stuart-Landau stochastic differential equations that capture the modes’ frequencies and amplitude modulation in time and space. This methodology is applied first to a challenging synthetic dataset and then to Arctic sea ice concentration (SIC) data from the US National Snow and Ice Data Center (NSIDC). The 36-year (1979–2014) dataset is parsimoniously and accurately described by our DAHMs. Preliminary results indicate that simulations using our multilayer Stuart-Landau model (MSLM) of SICs are stable for much longer time intervals, beyond the end of the twenty-first century, and exhibit interdecadal variability consistent with past historical records. Preliminary results indicate that this MSLM is quite skillful in predicting September sea ice extent.
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Also Published In
- Title
- Advances in Nonlinear Geosciences
- Publisher
- Springer Cham
- DOI
- https://doi.org/10.1007/978-3-319-58895-7_10
More About This Work
- Academic Units
- Lamont-Doherty Earth Observatory
- Ocean and Climate Physics
- Published Here
- January 7, 2025