Publikation
Rapid prediction of ground shaking intensity with Graph Neural Networks
Stefan Bloemheuvel; Jurgen van den Hoogen; Dario Jozinovic; Alberto Michelini; Martin Atzmueller
In: Proceedings of the Third European Conference on Earthquake Engineering and Seismology -- 3ECEES. European Conference on Earthquake Engineering and Seismology (3ECEES-2022), PUBLISHING Conspress & editors, 2022.
Zusammenfassung
Rapid accurate prediction of strong ground shaking can be crucial for earthquake early warning. Recently, machine learning (ML), with its advances in Deep Learning (DL),
has shown great potential in analysing seismic waveforms. More specifically, when using the data acquired by a seismic network, the incorporation of additional information consisting of
the network station positioning into the DL model has been found beneficial to improve the accuracy of the ground motion predictions (Jozinović et al., 2022). Such spatial information
can be exploited thoroughly by adopting graph structures, along with the seismic waveforms.
Recent advances in adapting DL to graphs have shown promising potential in various graphrelated tasks. However, these methods have not been completely adapted for seismological
tasks. In this work, we advance an architecture capable of processing a set of seismic time series acquired by a network of stations using the benefits of Graph Neural Networks (GNNs)
(see Fig. 1). The objective of the study is the rapid determination of the ground motion (PGA, PGV, and SA 0.3s, 1s and 3s) at farther stations that have not been yet reached by the strong
ground shaking by availing of the first signals recorded at the stations close to the epicentre.
The work builds upon the GNN approach proposed in Bloemheuvel et al. (2022) and incorporates transfer learning, see Jozinović et al. (2022). We apply the methodology to two
datasets having very different source-receiver geometries sited in central Italy (CI, Jozinović et al., 2020, Jozinović et al., 2022) and in north-western central Italy (CW), respectively (Fig.
2). The two datasets have already been the object of similar studies using convolutional neural networks which serve as baselines for comparison. We find that the GNNs are highly suited
for the analysis of seismic data from a set of stations and show improvement when compared to the previous work (Bloemheuvel et al., 2022 and Jozinović et al., 2022). We exemplify the
early warning capabilities of the proposed approach.