We propose an alternative approach for the embedding space reconstruction method for short time series. An m-dimensional embedding space is reconstructed with a set of time delays including the relevant time scales characterizing the dynamical properties of the system. By using a maximal predictability criterion a d-dimensional subspace is selected with its associated set of time delays, in which a local nonlinear blind forecasting prediction performs the best reconstruction of a particular event of a time series. An locally unfolded d-dimensional embedding space is then obtained. The efficiency of the methodology, which is mathematically consistent with the fundamental definitions of the local nonlinear long time-scale predictability, was tested with a chaotic time series of the Lorenz system. When applied to the Southern Oscillation Index (SOI) (observational data associated with the El Niño-Southern Oscillation phenomena (ENSO)) an optimal set of embedding parameters exists, that allows constructing the main characteristics of the El Niño 1982 - 1983 and 1997 - 1998 events, directly from measurements up to 3 to 4 years in advance. © 2010 Author(s).
CITATION STYLE
Astudillo, H. F., Borotto, F. A., & Abarca-Del-Rio, R. (2010). Embedding reconstruction methodology for short time series - Application to large El Niño events. Nonlinear Processes in Geophysics, 17(6), 753–764. https://doi.org/10.5194/npg-17-753-2010
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