LI Ying-min, DONG Yin-feng, LAI Ming. Instantaneous Spectrum Estimation of Earthquake Ground Motions Based on Unscented Kalman Filter Method[J]. Applied Mathematics and Mechanics, 2007, 28(11): 1370-1378.
Citation: LI Ying-min, DONG Yin-feng, LAI Ming. Instantaneous Spectrum Estimation of Earthquake Ground Motions Based on Unscented Kalman Filter Method[J]. Applied Mathematics and Mechanics, 2007, 28(11): 1370-1378.

Instantaneous Spectrum Estimation of Earthquake Ground Motions Based on Unscented Kalman Filter Method

  • Received Date: 2006-09-20
  • Rev Recd Date: 2007-09-04
  • Publish Date: 2007-11-15
  • Representing earthquake ground motion as time varying ARMA model, the instantaneous spectrum can be determined only by the time varying coefficients of the corresponding ARMA model. Then, unscented Kalman filter was introduced to estimate the time varying coefficients. The comparison between the estimation results of unscented Kalman filter and Kalman filter method shows that unscented Kalman filter can more precisely represent the distribution of the spectral peaks in time-frequency plane than Kalman filter and its time and frequency resolution is finer which ensures its better ability to track the local properties of earthquake ground motions and to identify the systems with nonlinearity or abruptness. Moreover, the estimation results of ARMA models with different orders indicate that the theoretical frequency resolving power of ARMA model which was usually ignored in former relevant studies has great effect on the estimation precision of instantaneous spectrum and it should be taken as one of the key factors in order selection of ARMA model.
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