4.5 Article

Substructural damage identification using autoregressive moving average with exogenous inputs model and sparse regularization

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SAGE PUBLICATIONS INC
DOI: 10.1177/13694332221145448

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Structural health monitoring; damage identification; substructuring approach; autoregressive moving average with exogenous inputs model; sparse regularization

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This paper proposes a substructural time series model for locating and quantifying the damage in complex systems. A substructural ARMAX model is established to extract the frequencies and mode shapes of substructures as indicators for damage detection. The inverse problem of substructural damage identification is efficiently solved via sparse regularization, and structural damage can be located and quantified through the nonzero terms in the solution vector.
Substructuring approaches possess many superiorities over traditional global approaches in damage identification because large-size global structures are replaced by small and manageable substructures. This paper proposes a substructural time series model for locating and quantifying the damage in complex systems. A substructural autoregressive moving average with exogenous inputs (ARMAX) model is established to extract the frequencies and mode shapes of substructures as indicators for damage detection. The detection of structural damage is essentially an inverse problem, and the damage in structure bears sparse properties. The inverse problem of substructural damage identification is efficiently solved via sparse regularization, and structural damage can be located and quantified through the nonzero terms in the solution vector. The accuracy of the proposed method is demonstrated by the numerical simulation of a frame structure and shaking table test of a shear building structure. As the substructural properties are more sensitive to local structural damage than the global properties, the substructural ARMAX model is quite accurate and efficient to be used in the damage identification of a complex system.

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