Post‑earthquake rapid seismic demand estimation at unmonitored locations via Bayesian networks
Metadatos
Mostrar el registro completo del ítemEditorial
Springer Nature
Materia
Bayesian networks Ground motion prediction equation Kriging surrogate model
Fecha
2024-07-24Referencia bibliográfica
Mesbahi, P., García-Macías, E., Breccolotti, M. et al. Post-earthquake rapid seismic demand estimation at unmonitored locations via Bayesian networks. Bull Earthquake Eng (2024). https://doi.org/10.1007/s10518-024-01979-w
Resumen
Post-earthquake safety assessment of buildings and infrastructure poses significant
challenges, often relying on time-consuming visual inspections. To expedite this process,
safety criteria based on a demand-capacity model are utilized. However, rapid assessment
frameworks require accurate estimations of intensity measures (IMs) to estimate seismic
demand and assess structural health. Unfortunately, post-earthquake IM values are
typically only available at monitored locations equipped with sensors or monitoring
systems, limiting broader assessments. Simple spatial interpolation methods, while
possible, struggle to consider crucial physical factors such as earthquake magnitude,
epicentral distance, and soil type, leading to substantial estimation errors, especially in
areas with insufficient or non-uniform seismic station coverage. To address these issues, a
novel framework, BN-GMPE, combining a Bayesian network (BN) and a ground motion
prediction equation (GMPE), is proposed. BN-GMPE enables inference and prediction
under uncertainty, incorporating physical parameters in seismic wave propagation. A
further novelty introduced in this work regards separating the near and far seismic fields
in the updating process to attain a clearer understanding of uncertainty and more accurate
IM estimation. In the proposed approach, a GMPE is employed for the estimation, and the
bias and standard deviation of the prediction error are updated after any new information is
entered into the network. The proposed method is benchmarked against a classic Kriging
interpolator technique, considering some recent earthquake shocks in Italy. The proposed
BN framework can naturally extend for estimating the probability of failure of various
structures in a targeted region, which represents the ultimate aim of this research.