Efficient Structural Damage Detection with Minimal Input Data: Leveraging Fewer Sensors and Addressing Model Uncertainties
Fecha
2024-10-26Autor
Estrada Barbosa, Quirino
Alegría, Fredi
Martínez, Eladio
Cortés-García, Claudia
Blanco-Ortega, Andrés
Ponce-Silva, Mario
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In the field of structural damage detection through vibration measurements, most existing
methods demand extensive data collection, including vibration readings at multiple levels, strain
data, temperature measurements, and numerous vibration modes. These requirements result in
high costs and complex instrumentation processes. Additionally, many approaches fail to account
for model uncertainties, leading to significant discrepancies between the actual structure and its
numerical reference model, thus compromising the accuracy of damage identification. This study
introduces an innovative computational method aimed at minimizing data requirements, reducing
instrumentation costs, and functioning with fewer vibration modes. By utilizing information from a
single vibration sensor and at least three vibration modes, the method avoids the need for highermode excitation, which typically demands specialized equipment. The approach also incorporates
model uncertainties related to geometry and mass distribution, improving the accuracy of damage
detection. The computational method was validated on a steel frame structure under various damage
conditions, categorized as single or multiple damage. The results indicate up to 100% accuracy in
locating damage and up to 80% accuracy in estimating its severity. These findings demonstrate the
method’s potential for detecting structural damage with limited data and at a significantly lower cost
compared to conventional techniques.