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Empirical adaptive wavelet decomposition (EAWD): an adaptive decomposition for the variability analysis of observation time series in atmospheric science

Olivier Delage, Thierry Portafaix, Hassan Benchérif, A. Bourdier, Emma Lagracie

2022Nonlinear processes in geophysics17 citationsDOIOpen Access PDF

Abstract

Abstract. Most observational data sequences in geophysics can be interpreted as resulting from the interaction of several physical processes at several timescales and space scales. In consequence, measurement time series often have characteristics of non-linearity and non-stationarity and thereby exhibit strong fluctuations at different timescales. The application of decomposition methods is an important step in the analysis of time series variability, allowing patterns and behaviour to be extracted as components providing insight into the mechanisms producing the time series. This study introduces empirical adaptive wavelet decomposition (EAWD), a new adaptive method for decomposing non-linear and non-stationary time series into multiple empirical modes with non-overlapping spectral contents. The method takes its origin from the coupling of two widely used decomposition techniques: empirical mode decomposition (EMD) and empirical wavelet transformation (EWT). It thus combines the advantages of both methods and can be interpreted as an optimization of EMD. Here, through experimental time series applications, EAWD is shown to accurately retrieve different physically meaningful components concealed in the original signal.

Topics & Concepts

Series (stratigraphy)Hilbert–Huang transformWaveletDecompositionTransformation (genetics)Computer scienceTime seriesAlgorithmMathematicsArtificial intelligenceGeologyMachine learningFilter (signal processing)PaleontologyComputer visionChemistryBiochemistryBiologyGeneEcologySpectroscopy and Chemometric AnalysesEarthquake Detection and AnalysisFault Detection and Control Systems
Empirical adaptive wavelet decomposition (EAWD): an adaptive decomposition for the variability analysis of observation time series in atmospheric science | Litcius