4.6 Article

A generalized ground-motion model for consistent mainshock-aftershock intensity measures using successive recurrent neural networks

Journal

BULLETIN OF EARTHQUAKE ENGINEERING
Volume 20, Issue 12, Pages 6467-6486

Publisher

SPRINGER
DOI: 10.1007/s10518-022-01432-w

Keywords

Generalized ground motion model; Recurrent neural network; Deep learning; Mainshock; Aftershock; Ground motion selection; Ground motion sequences

Funding

  1. European Union's Horizon 2020 research and innovation program [821046]
  2. H2020 Societal Challenges Programme [821046] Funding Source: H2020 Societal Challenges Programme

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This study proposes a method based on neural networks to select consistent mainshock-aftershock ground motions by considering the correlations between earthquake sequences. The selected ground motions are then used for nonlinear time history analysis of a bridge structure.
Several recent studies have investigated the risk posed to structures by earthquake sequences, proposing state-dependent fragility/vulnerability models for assets in damaged conditions. However, a critical component for such efforts, i.e., ground-motion record selection, has received relatively minor consideration. Specifically, utilization of consistent mainshock (MS)-aftershock (AS) ground motions is desirable in practical applications. Such consistency in selecting MS-AS sequences requires proper consideration of the correlations between and within the intensity measures of MS and AS ground motions. Most of the studies in this domain utilize spectral accelerations as the considered groundmotion intensity measures and rely on empirical linear correlation models between the intensity measures of MS and AS ground motions for developing, for instance, record selection approaches. This study proposes a generalized ground-motion model (GGMM) to estimate consistent 30 x 1 vectors of intensity measures for mainshocks (denoted as IMMS) and aftershocks (denoted as IMAS) using a framework of successive long-short-term-memory (LSTM) recurrent neural network (RNN). The vectors of IMMS and IMAS consist of geometric means of significant duration (D-5-95,D-geom), Arias intensity (I-a,I-geom), cumulative absolute velocity (CAV(geom)), peak ground velocity (PGV(geom)), peak ground acceleration (PGA(geom)) and RotD50 spectral acceleration (S-a(T)) at 25 periods for both MS and AS ground motions. The proposed RNN-based GGMM is trained on a carefully selected set of similar to 700 crustal and subduction recorded MS-AS sequences. The inputs to the framework include a 5 x 1 vector of source and site parameters for MS and AS recordings. The residuals of the trained LSTM-based RNN are further used to develop empirical covariance structures for IMMS and IMAS The proposed framework is finally illustrated to select MS- AS ground motions based on IM(MS )and IMAS using a multi-criteria objective function. The selected MS-AS ground motion sequences are then used to perform non-linear time history analyses of a case-study two-spanned symmetric bridge structure. The obtained engineering demand parameters are evaluated and critically discussed.

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