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Significance of Modeling Error in Structural Parameter Estimation
Structural health monitoring systems rely on algorithms to detect potential changes in structural parameters that may be indicative of damage. Parameter‐estimation algorithms seek to identify changes in structural parameters by adjusting parameters of an a priori finite‐element model of a structure to reconcile its response with a set of measured test data. Modeling error, represented as uncertainty in the parameters of a finite‐element model of the structure, curtail capability of parameter estimation to capture the physical behavior of the structure. The performance of four error functions, two stiffness‐based and two flexibility‐based, is compared in the presence of modeling error in terms of the propagation rate of the modeling error and the quality of the final parameter estimates. Three different types of parameters are used in the parameter estimation procedure: (1) unknown parameters that are to be estimated, (2) known parameters assumed to be accurate, and (3) uncertain parameters that manifest the modeling error and are assumed known and not to be estimated. The significance of modeling error is investigated with respect to excitation and measurement type and locations, the type of error function, location of the uncertain parameter, and the selection of unknown parameters to be estimated. It is illustrated in two examples that the stiffness‐based error functions perform significantly better than the corresponding flexibility‐based error functions in the presence of modeling error. Additionally, the topology of the structure, excitation and measurement type and locations, and location of the uncertain parameters with respect to the unknown parameters can have a significant impact on the quality of the parameter estimates. Insight into the significance of modeling error and its potential impact on the resulting parameter estimates is presented through analytical and numerical examples using static and modal data.
Significance of Modeling Error in Structural Parameter Estimation
Structural health monitoring systems rely on algorithms to detect potential changes in structural parameters that may be indicative of damage. Parameter‐estimation algorithms seek to identify changes in structural parameters by adjusting parameters of an a priori finite‐element model of a structure to reconcile its response with a set of measured test data. Modeling error, represented as uncertainty in the parameters of a finite‐element model of the structure, curtail capability of parameter estimation to capture the physical behavior of the structure. The performance of four error functions, two stiffness‐based and two flexibility‐based, is compared in the presence of modeling error in terms of the propagation rate of the modeling error and the quality of the final parameter estimates. Three different types of parameters are used in the parameter estimation procedure: (1) unknown parameters that are to be estimated, (2) known parameters assumed to be accurate, and (3) uncertain parameters that manifest the modeling error and are assumed known and not to be estimated. The significance of modeling error is investigated with respect to excitation and measurement type and locations, the type of error function, location of the uncertain parameter, and the selection of unknown parameters to be estimated. It is illustrated in two examples that the stiffness‐based error functions perform significantly better than the corresponding flexibility‐based error functions in the presence of modeling error. Additionally, the topology of the structure, excitation and measurement type and locations, and location of the uncertain parameters with respect to the unknown parameters can have a significant impact on the quality of the parameter estimates. Insight into the significance of modeling error and its potential impact on the resulting parameter estimates is presented through analytical and numerical examples using static and modal data.
Significance of Modeling Error in Structural Parameter Estimation
Sanayei, Masoud (Autor:in) / Arya, Behnam (Autor:in) / Santini, Erin M. (Autor:in) / Wadia‐Fascetti, Sara (Autor:in)
Computer‐Aided Civil and Infrastructure Engineering ; 16 ; 12-27
01.01.2001
16 pages
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
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