Artigo Acesso aberto Revisado por pares

Time Series Analysis Using Composite Multiscale Entropy

2013; Multidisciplinary Digital Publishing Institute; Volume: 15; Issue: 3 Linguagem: Inglês

10.3390/e15031069

ISSN

1099-4300

Autores

Shuen-De Wu, Chiu-Wen Wu, Shiou-Gwo Lin, Chun‐Chieh Wang, Kung‐Yen Lee,

Tópico(s)

Chaos control and synchronization

Resumo

Multiscale entropy (MSE) was recently developed to evaluate the complexity of time series over different time scales. Although the MSE algorithm has been successfully applied in a number of different fields, it encounters a problem in that the statistical reliability of the sample entropy (SampEn) of a coarse-grained series is reduced as a time scale factor is increased. Therefore, in this paper, the concept of a composite multiscale entropy (CMSE) is introduced to overcome this difficulty. Simulation results on both white noise and 1/f noise show that the CMSE provides higher entropy reliablity than the MSE approach for large time scale factors. On real data analysis, both the MSE and CMSE are applied to extract features from fault bearing vibration signals. Experimental results demonstrate that the proposed CMSE-based feature extractor provides higher separability than the MSE-based feature extractor.

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