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ASME Press Select Proceedings
International Symposium on Information Engineering and Electronic Commerce, 3rd (IEEC 2011)Available to Purchase
Editor
C. B. Povloviq
C. B. Povloviq
National Technical University of Ukraine
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C. W. Lu
C. W. Lu
Huangshi Institute of Technology
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ISBN:
9780791859759
No. of Pages:
562
Publisher:
ASME Press
Publication date:
2011

This paper aims to decompose EEG time series by using state space modeling method. EEG is recorded when acupuncture zusanli(ST-36). Observations are regarded as made up of distinct components such as trend, period and stochastic disturbance terms. State space modeling method can extract the principal distinct components from time series observations. Firstly, modeling autoregressive moving average, the Akaike Information Criterion is used to choose the order of the model, and the method of least square is used to determine the parameters of the model. Secondly, the ARMA model is cast in a state space framework. To obtain distinct components, we transform state space expression into Jordan canonical form. Lastly, Kalman filter is used for components estimation. The results show that this method can effectively extract the EEG characteristics which can be applied to eliminating artifacts and extracting brain rhythms.

Abstract
Keywords
Introduction1
ARMA Modeling
State Space Representation
Application Example
Discussion and Conclusions
Acknowledgments
References
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