Pregled bibliografske jedinice broj: 1173193
Transfer learning: improving neural network based prediction of earthquake ground shaking for an area with insufficient training data
Transfer learning: improving neural network based prediction of earthquake ground shaking for an area with insufficient training data // Geophysical journal international, 229 (2021), 1; 704-718 doi:10.1093/gji/ggab488 (međunarodna recenzija, članak, znanstveni)
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Naslov
Transfer learning: improving neural network based
prediction of earthquake ground shaking for an
area with insufficient training data
Autori
Jozinović, Dario ; Lomax, Anthony ; Štajduhar, Ivan ; Michelini, Alberto
Izvornik
Geophysical journal international (0956-540X) 229
(2021), 1;
704-718
Vrsta, podvrsta i kategorija rada
Radovi u časopisima, članak, znanstveni
Ključne riječi
Europe ; Waveform inversion ; Neural networks ; fuzzy logic ; Time-series analysis ; Earthquake early warning ; Earthquake ground motions
Sažetak
In a recent study, we showed that convolutional neural networks (CNNs) applied to network seismic traces can be used for rapid prediction of earthquake peak ground motion intensity measures (IMs) at distant stations using only recordings from stations near the epicentre. The predictions are made without any previous knowledge concerning the earthquake location and magnitude. This approach differs significantly from the standard procedure adopted by earthquake early warning systems that rely on location and magnitude information. In the previous study, we used 10 s, raw, multistation (39 stations) waveforms for the 2016 earthquake sequence in central Italy for 915 M ≥ 3.0 events (CI data set). The CI data set has a large number of spatially concentrated earthquakes and a dense network of stations. In this work, we applied the same CNN model to an area of central western Italy. In our initial application of the technique, we used a data set consisting of 266 M ≥ 3.0 earthquakes recorded by 39 stations. We found that the CNN model trained using this smaller-sized data set performed worse compared to the results presented in the previously published study. To counter the lack of data, we explored the adoption of ‘transfer learning’ (TL) methodologies using two approaches: first, by using a pre-trained model built on the CI data set and, next, by using a pre-trained model built on a different (seismological) problem that has a larger data set available for training. We show that the use of TL improves the results in terms of outliers, bias and variability of the residuals between predicted and true IM values. We also demonstrate that adding knowledge of station relative positions as an additional layer in the neural network improves the results. The improvements achieved through the experiments were demonstrated by the reduction of the number of outliers by 5 per cent, the residuals R median by 39 per cent and their standard deviation by 11 per cent.
Izvorni jezik
Engleski
Znanstvena područja
Geofizika, Računarstvo
Citiraj ovu publikaciju:
Časopis indeksira:
- Current Contents Connect (CCC)
- Web of Science Core Collection (WoSCC)
- Science Citation Index Expanded (SCI-EXP)
- SCI-EXP, SSCI i/ili A&HCI
- Scopus