Substructural Time-Varying Parameter Identification Using Wavelet Multiresolution Approximation
Publication: Journal of Engineering Mechanics
Volume 138, Issue 1
Abstract
Identifying properties of civil engineering structures is an important task for their condition assessment, damage diagnosis, maintenance and repair, and life-cycle management. These structures usually contain a large number of degrees of freedom and exhibit some time-varying or nonlinear behavior, especially under extreme excitation or when damaged. In this study, an offline substructure method based on wavelet multiresolution approximation (WMRA) is proposed for the identification of arbitrary time-varying parameters in a shear-beam building. Assuming that the possible damage location of the building can be identified a priori, a substructural model containing both interface and internal restoring forces can be formulated. The WMRA can then be used to approximate the time-varying damping and stiffness parameters and convert a time-varying parametric identification problem into a time-invariant coefficient estimation problem. To obtain accurate estimation and minimize the computational effort, Akaike’s information criterion is used for the selection of a resolution level and the pruning of insignificant terms. Numerical and experimental results show that the proposed technique can locate and quantify the time-varying parameters in the substructure. The method inherits the wavelet’s excellent capability in the approximation of arbitrary functions and provides a flexible approach for identifying various types of time-varying parameters in shear-beam buildings.
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Acknowledgments
This study is supported by the Hong Kong Research Grants Council Competitive Earmarked Research Grant UNSPECIFIED611409.
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© 2012 American Society of Civil Engineers.
History
Received: Jan 26, 2010
Accepted: Jul 27, 2011
Published online: Jul 29, 2011
Published in print: Jan 1, 2012
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