Title of article :
The Particle Filter and Extended Kalman Filter methods for the structural system identification considering various uncertainties
Author/Authors :
Ebrahimi, Mehrdad Department of Civil Engineering - K.N. Toosi University of Technology, Tehran, Iran , Karami Mohamadi, Reza Department of Civil Engineering - K.N. Toosi University of Technology, Tehran, Iran , Sharafi, Fatemeh M.Sc. in Earthquake Engineering - Department of Civil Engineering - K.N. Toosi University of Technology, Tehran, Iran
Abstract :
Structural system identification using recursive methods has been a research direction of
increasing interest in recent decades. The two prominent methods, including the Extended
Kalman Filter (EKF) and the Particle Filter (PF), also known as the Sequential Monte Carlo
(SMC), are advantageous in this field. In this study, the system identification of a shake table
test of a 4-story steel structure subjected to the base excitation has been implemented using
these methods by considering the modeling and material model uncertainties. Implementing the
2D and 3D modelings, using the “parallelogram” and “scissors” methods for the modeling of
panel zones and that of the wall panels by two methods (using beam-column elements and
equivalent diagonal strut elements), are the assumptions of this study. Using the parallelogram
method has resulted in fewer errors in the 2D modeling while implementing different methods
for simulation of wall panels has had no specific achievements. As illustrated in the results,
more significant uncertainties were expected in systems with highly nonlinear behavior, since
the equivalent linearization was used to estimate the system states in the EKF method. However,
this method is less time-consuming and gives more accurate results in comparison with the PF
method, in which a lrge number of samples are required for the system identification.
Keywords :
System identification , Extended Kalman Filter , Particle Filter , FE model updating , modeling uncertainty
Journal title :
Journal of Numerical Methods in Civil Engineering