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Predictability of nonstationary time series using wavelet and EMD based ARMA models

•Comparison of performance between wavelet and EMD based time series analysis.•Predictability of models at larger time steps ahead forecasts.•Discussion over boundary distortion limitation in both methods.•Discussion over manner in which decomposition technique had to be applied.•Wavelet based metho...

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Bibliographic Details
Published in:Journal of hydrology (Amsterdam) 2013-10, Vol.502, p.103-119
Main Authors: Karthikeyan, L., Nagesh Kumar, D.
Format: Article
Language:English
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Summary:•Comparison of performance between wavelet and EMD based time series analysis.•Predictability of models at larger time steps ahead forecasts.•Discussion over boundary distortion limitation in both methods.•Discussion over manner in which decomposition technique had to be applied.•Wavelet based method performed well with reasonable accuracy. Research has been undertaken to ascertain the predictability of non-stationary time series using wavelet and Empirical Mode Decomposition (EMD) based time series models. Methods have been developed in the past to decompose a time series into components. Forecasting of these components combined with random component could yield predictions. Using this ideology, wavelet and EMD analyses have been incorporated separately which decomposes a time series into independent orthogonal components with both time and frequency localizations. The component series are fit with specific auto-regressive models to obtain forecasts which are later combined to obtain the actual predictions. Four non-stationary streamflow sites (USGS data resources) of monthly total volumes and two non-stationary gridded rainfall sites (IMD) of monthly total rainfall are considered for the study. The predictability is checked for six and twelve months ahead forecasts across both the methodologies. Based on performance measures, it is observed that wavelet based method has better prediction capabilities over EMD based method despite some of the limitations of time series methods and the manner in which decomposition takes place. Finally, the study concludes that the wavelet based time series algorithm can be used to model events such as droughts with reasonable accuracy. Also, some modifications that can be made in the model have been discussed that could extend the scope of applicability to other areas in the field of hydrology.
ISSN:0022-1694
1879-2707
DOI:10.1016/j.jhydrol.2013.08.030