TY - JOUR
T1 - Ensemble empirical mode decomposition
T2 - A noise-assisted data analysis method
AU - Wu, Zhaohua
AU - Huang, Norden E.
PY - 2009/1
Y1 - 2009/1
N2 - A new Ensemble Empirical Mode Decomposition (EEMD) is presented. This new approach consists of sifting an ensemble of white noise-added signal (data) and treats the mean as the final true result. Finite, not infinitesimal, amplitude white noise is necessary to force the ensemble to exhaust all possible solutions in the sifting process, thus making the different scale signals to collate in the proper intrinsic mode functions (IMF) dictated by the dyadic filter banks. As EEMD is a timespace analysis method, the added white noise is averaged out with sufficient number of trials; the only persistent part that survives the averaging process is the component of the signal (original data), which is then treated as the true and more physical meaningful answer. The effect of the added white noise is to provide a uniform reference frame in the timefrequency space; therefore, the added noise collates the portion of the signal of comparable scale in one IMF. With this ensemble mean, one can separate scales naturally without any a priori subjective criterion selection as in the intermittence test for the original EMD algorithm. This new approach utilizes the full advantage of the statistical characteristics of white noise to perturb the signal in its true solution neighborhood, and to cancel itself out after serving its purpose; therefore, it represents a substantial improvement over the original EMD and is a truly noise-assisted data analysis (NADA) method.
AB - A new Ensemble Empirical Mode Decomposition (EEMD) is presented. This new approach consists of sifting an ensemble of white noise-added signal (data) and treats the mean as the final true result. Finite, not infinitesimal, amplitude white noise is necessary to force the ensemble to exhaust all possible solutions in the sifting process, thus making the different scale signals to collate in the proper intrinsic mode functions (IMF) dictated by the dyadic filter banks. As EEMD is a timespace analysis method, the added white noise is averaged out with sufficient number of trials; the only persistent part that survives the averaging process is the component of the signal (original data), which is then treated as the true and more physical meaningful answer. The effect of the added white noise is to provide a uniform reference frame in the timefrequency space; therefore, the added noise collates the portion of the signal of comparable scale in one IMF. With this ensemble mean, one can separate scales naturally without any a priori subjective criterion selection as in the intermittence test for the original EMD algorithm. This new approach utilizes the full advantage of the statistical characteristics of white noise to perturb the signal in its true solution neighborhood, and to cancel itself out after serving its purpose; therefore, it represents a substantial improvement over the original EMD and is a truly noise-assisted data analysis (NADA) method.
KW - Empirical Mode Decomposition (EMD)
KW - end effect reduction
KW - ensemble empirical mode decompositions
KW - Intrinsic Mode Function (IMF)
KW - noise-assisted data analysis (NADA)
KW - shifting stoppage criteria
UR - http://www.scopus.com/inward/record.url?scp=80052078099&partnerID=8YFLogxK
U2 - 10.1142/S1793536909000047
DO - 10.1142/S1793536909000047
M3 - 期刊論文
AN - SCOPUS:80052078099
SN - 1793-5369
VL - 1
SP - 1
EP - 41
JO - Advances in Adaptive Data Analysis
JF - Advances in Adaptive Data Analysis
IS - 1
ER -