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A data-fitting procedure for chaotic time series

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In this paper the authors introduce data characterizations for fitting chaotic data to linear combinations of one-dimensional maps (say, of the unit interval) for use in subgrid-scale turbulence models. They test the efficacy of these characterizations on data generated by a chaotically-forced Burgers` equation and demonstrate very satisfactory results in terms of modeled time series, power spectra and delay maps.

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Last Updated September 29, 2016, 15:39 (LMT)
Created September 29, 2016, 15:39 (LMT)
Citation McDonough, J.M.; Mukerji, S. [Univ. of Kentucky, Lexington, KY (United States). Dept. of Mechanical Engineering]; Chung, S. [Univ. of Illinois, Urbana, IL (United States)] ---- Roy Long, A data-fitting procedure for chaotic time series, 2016-09-29, https://edx.netl.doe.gov/dataset/a-data-fitting-procedure-for-chaotic-time-series
Netl Product yes
Poc Email Roy.long@netl.doe.gov
Point Of Contact Roy Long
Program Or Project KMD
Publication Date 1998-10-1