Seismic response prediction for torsionally irregular buildings using structural health monitoring and machine learning
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https://doi.org/10.21754/tecnia.v35i1.2510Palabras clave:
Seleccionado:degree of torsional irregularity, structural health monitoring, maximum drift, numerical simulation, dynamic testsResumen
Given the seismic risk that buildings in Peru face, monitoring the structural health of critical infrastructure is essential. Structural health monitoring (SHM) is commonly carried out at the center of mass (CM) of buildings using accelerometers. However, in torsional irregular structures, the maximum response does not occur at the CM due to the torsional effect produced by the existing in-plan eccentricity between the centers of stiffness (CS) and mass. This research proposes a methodology to estimate the maximum response in buildings with torsional effects using SHM with accelerometers positioned at the CM. In the proposed methodology, the degree of torsional irregularity was defined to enable the calculation of the maximum seismic response. Consequently, a new machine learning model for predicting the degree of torsional irregularity was developed using 9,358 seismic simulations. The prediction model achieved a normalized error of 4.054% in estimating the maximum seismic response. Likewise, incremental dynamic tests were carried out on a shaking table with 8 specimens having different structural configurations. The experimental results were used to assimilate the developed model with the numerical results, thus obtaining a hybrid prediction model for the degree of torsional irregularity. Finally, a mathematical expression was proposed to estimate the degree of torsional irregularity using experimental results based on the structural and seismic characteristics validated with the hybrid prediction model. The proposed methodology is important because this tool can provide a more accurate assessment of the state of torsional irregular structures after the occurrence of an earthquake.
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